Difference between revisions of "India 2017 Consolidation"

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[[File:WestBengalGDPPCSCE3.png|900px|WestBengalGDPPCSCE3.png]]
[[File:WestBengalGDPPCSCE3.png|900px|WestBengalGDPPCSCE3.png]]
== Value Added ==
Value added is not the same in the provincial model as it is in the 186 model. The historical data has been carefully vetted and is normalized to the 186 model using ''ApplyMultAll. ''The normalization should prevent historical differences between the provincial and 186 models, but the process does not appear to be working properly. 
=== Value Added in Agriculture ===
Although the historical data does not match, the forecasts appear to be about the same in all versions. 
[[File:IndiaVaddAgSCE3.png|900px]]
=== Value Added in Energy ===
There is not any historical data for this series in either model. The models start at different points and have different behavior throughout the forecasts. The 186 model forecasts a sharp decline from 2014 through 2030, whereas, the provincial model forecasts less change in value added in energy. 
[[File:IndiaVaddEnSCE3.png|900px]]
=== Value Added in ICT ===
There is a lack of historical data in ICT. The 186 version of IFs forecasts a steady increase in value added through the end of the time horizon, whereas the provincial model forecasts are relatively flat and decline from 2020 through 2070. 
[[File:IndiaVaddICTSCE3.png|900px]]
=== Value Added in Manufacturing ===
The historical data in the two models are close, but not identical. IFs pushes value added in manufacturing up dramatically after model initialization in both the 186 and provincial models. The forecasts are similar with the provincial model declining steadily through the forecasts. 
[[File:IndiaVaddManSCE3.png|900px]]
=== Value Added in Materials ===
Value added in materials is forecast to increase as a greater proportion of GDP in the 186 model than in the provincial model over time. 
[[File:IndiaMFPMatSCE3 5.png|900px]]
=== Value Added in Services ===
=== The historical data does not match, but it is close. There is a drop at model initialization in the 186 model that does not occur in the provincial model. The two models are close in both history and forecast.  ===
=== [[File:IndiaVaddSerSCE3.png|900px]] ===


== MultiFactor Productivity ==
== MultiFactor Productivity ==


The dramatic difference in India's provincial GDP as compared to the 186 model appears to be driven by MFP, and more specifically, physical capital's contribution to annual growth. 
The dramatic difference in India's provincial GDP as compared to the 186 model appears to be driven by MFP, and more specifically, physical capital's contribution to annual growth. 

Revision as of 18:44, 3 July 2017

Overview

India's sub-regional model has a total of 69 preprocessor series. Although there are 652 preprocessor series in the IFs model, there are many that are not applicable to sub-regional models or do not significantly impact forecasts. Therefore, only 355 preprocessor series are sought for sub-regionalization. Thus India's sub-regional model has nearly 19.4% coverage at this point. There are a 31 preprocessor series that have been identified that could be pulled into the model. If this data was to be pulled the the total coverage of the model would increase to nearly 28.2%.

IFs Module Series Pulled Total Series Pulled Coverage
Population 8 8 100%
Economy 24 55 43.6%
Agriculture 8 36 22.2%
Education 17 91 18.7%
Energy 4 66 6.1%
Socio-Political 3 12 25%
Infrastructure 0 21 0%
Environment 0 9 0%
Health 5 57 8.8%
Total 69 355 19.4%
Potential Coverage 100 355 28.2%

The population module is completely covered, however there are some problems with migration which are detailed in the population section. The economy module has the second highest module coverage in the India sub-national module with almost 44% coverage. Infrastructure, Environment, Energy, and Health are areas of relative weakness in the model. Of the potential preprocessor series, most are in the infrastructure and agricultural modules. Therefore, infrastructure's coverage could be improved significantly. 

Population Module

IFs population module may have some problems in sub-regional migration, that require further research in the future. Migration is an exogenous variable based upon UNPD forecasts of net migration rates in the model. In the case of sub-regional models it is difficult to find sub-regional forecasts of migration. IIASA was generous enough to grant the Pardee Center access to their preliminary migration forecasts for the states and union territories of India, which has resolved the issue of access to reliable forecasts. Additionally, there is two errors that occur when the model is broken out with sub-regional migration forecast data. The first is this: 

MigrantStocks.png

Followed by this error: 

PopForeign.png

In IFsHistSeries.mdb the ForecastNetMigrationUNPD table and the ForecastNetMigrationRateUNPD table are filled with zeroes where the data should be nulls for all sub-regions. This may be part of the cause of the error. The error may be caused by the logic for migration, where foreign population is a function of migration. There may be some limitations to the amount of intranational migration based upon the aggregated foreign population for a given country. This is only conjecture and requires further analysis in the future. 

Due to the errors that occur when the model is broken out with subnational migration data, migration forecasts are not included in the model's breakout. This leaves population forecasts unimpacted by migration and all provincial migration rates are zero in the base case. A scenario is used to calibrate IFs' population forecasts in India to introduce migration to the model without causing model error. 


Model Vetting Using IIASA's India Model

India's subnational population was rigorously vetted and one of the tools available was subnational population forecasts that were developed by IIASA. These forecasts were compared with each state and territory in India, as were the components of these forecasts. The components include births, deaths, and migration. Below is a state-by-state comparison of the IFs base case (without migration) with IIASA's forecasts for population, births, deaths, and migration. 

This comparison is followed by graphs that document population model calibration. First migration rates and then population for each state after scenarios using the migrater parameter in IFs. There are two scenarios for the subnational population in India. The first scenario has migration rates for all provinces that are directly from IIASA. The second scenario is an adjustment of the first scenario where each province's migration rates from IIASA are excluded, included, doubled, or halved. These decisions for this scenario are based upon how the population forecasts looked after the first migration scenario. The third scenario is a slightly adjusted version of the second scenario that was run with the final China migration scenario.

Two states are missing from this analysis, Andhra Pradesh and Telangana. These states were not included because IIASA's forecasts only have Andhra Pradesh, which includes Telangana. Whereas, the IFs model has Andhra Pradesh and Telangana separated. 

India

Population

Below is a graph of the population sum of the states and terrritories for IIASA, IFs without migration, and the three IFs migration scenarios. These are all compared to the 186 version of IFs. As shown below, IFs without migration and IFs migration scenario 1 are significantly higher than the other population models. IIASA's subnational model's population summed is almost identical to IFs' 186 model. Migration scenario 2 is in between the two models. The third and final migration scenario is the closest to IIASA and the 186 version of IFs. The third migration scenario has about 19 million more people than the 186 version of IFs in 2100, where as the second scenario has about 78 million more people and the first migration scenario has about 172 million more people. 

IndiaPopRolledSCE3.png

Crude Birth Rates

IndiaCBRIIASASCE3.png

Crude Death Rates

IndiaCDRSce3.png

Migration Rates

IndiaMigRateIIASASCE3.png

Total Fertility Rates

IndiaTFRSCE3.png

Andaman and Nicobar Islands

Population

In 2010 the IFs model's population is about 2% greater than IIASA's, but in 2015 Andaman and Nicobar Islands's population drops below IIASA's by about 9%. The IFs model's population forecasts are less than IIASA's by an increasing rate and by 2095 IFs's population forecast is by about 94%. 

AndamanandNicobarIsPopIIASA.png

Crude Birth Rates

Andaman and Nicobar Island's Crude Birth Rates in IFs are close to IIASA's forecasts. In 2075 and 2080 IFs is less than IIASA by about 10%, but all other years the two models are less than 10% in difference. 

AndamanandNicobarCBRIIASA.png

Crude Death Rates

The IFs model's CDRs are significantly greater than IIASA's forecasts. In 2015 the IFs model's CDRs are about 9% greater than IIASA's and by 2095 the difference grows to around 23%. 

AndamanandNicobarCDRIIASA.png

Migration

The net migration rate from IIASA in Andaman and Nicobar Islands starts out high in 2010 at about 8.5 per thousand and steadily declines to just below 3 per thousand by 2095. 

AndamanandNicobarMigIIASA.png

Total Fertility Rates

IIASA's TFR forecasts are greater than IFs' forecasts for all years. The two models are relatively close. 

AndamanandNicobarTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

AndamanandNicobarMigIIASASCE.png

Population After Migration Scenario 1

AndamanandNicobarPopIIASAMGSCE.png

Migration Scenario 2 Results

Although there is some visible difference between the IIASA and IFs model with the first scenario, the difference is very small is absolute terms. The population in Andaman and Nicobar Islands is small and the difference is minimal. 

Migration After Scenario 2

The second migration scenario is almost identical to the first scenario. In the first few years of forecast, Andaman and Nicobar Islands are identical to IIASA in the second scenario, whereas, in the first scenario the migration rates are at zero. 

AndamanandNicobarMigIIASASCE2.png

Population After Migration Scenario 2

Although migrater was not changed between the two scenarios, the migration rate and the population did change. The slight change in the first years of migration increased population sufficiently to bring Andaman and Nicobar Islands up to almost IIASA's population forecast. 

AndamanandNicobarPopIIASAMGSCE2.png

Migration Scenario 3 Results

The migration rates are the same for Andaman and Nicobar Islands as they were in the second scenario. 

Migration Rates After Migration Scenario 3

AndamanandNicobarMigIIASASCE3.png

Population After Migration Scenario 3

AndamanandNicobarPopIIASAMGSCE3 5.png

Arunanchal Pradesh

Population

Arunanchal Pradesh's population forecast in IFs is close to IIASA's. IFs is less than IIASA by an increasing amount from about 2040 to 2080. In 2080, the difference between the two model's forecasts peaks at about a 4.3% difference. From 2080 through the end of the time horizon the difference between the two models decreases slightly to around 4%. 

ArunachalPradeshPopIIASA.png

Crude Birth Rates

Arunanchal Pradesh's CBRs in the IFs model jump up in 2014 at model initialization. The IFs model's forecasts are significantly higher than IIASA's, ranging between 18% and 36% difference. 

ArunachalPradeshCBRIIASA.png

Crude Death Rate

Arunanchal Pradesh's CDRs in IFs are greater than in IIASA's by 36% initially. Overtime, the two models become closer and closer until 2090 when IIASA's forecasts for CDR pass IFs. 

ArunachalPradeshCDRIIASA.png

Migration

ArunachalPradeshMigIIASA.png

Total Fertility Rates

TFR in IFs' forecasts for Arunanchal Pradesh is significantly greater than IIASA's forecasts. 

ArunachalPradeshTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

The first time the scenario was run this province's migration data was dropped from the scenario after the scenario file was run. The cause of this error is not known, but it was remedied by copying and pasting the scenario data into another scenario file. Upon rerunning the scenario with the fixed scenario file, the migration rate is identical. 

ArunachalPradeshMigIIASASCE2.png

Population After Migration Scenario 1

Arunanchal Pradesh's population is significantly greater after the introduction of migration into the model. 

ArunanchalPradeshPopIIASASCE.png

Migration Scenario 2 Results

Births are greater in the IFs model which causes population to increase by too much when migration is introduced. Therefore, migration is removed for Arunanchal Pradesh in the second scenario. 

Migration Rate After Migration Scenario 2

ArunanchalPradeshMigIIASASCE2.png

Population After Migration Scenario 2

After the second scenario with the removal of migration rates, Arunanchal Pradesh's population is identical to the base case and close to IIASA's population forecast.

ArunanchalPradeshPopIIASASCE2.png

Migration Scenario 3 Results

Arunanchal Pradesh's migration rates were unchanged in the third and final scenario. 

Migration Rates After Migration Scenario 3

ArunanchalPradeshMigIIASASCE3.png

Population After Migration Scenario 3

ArunanchalPradeshPopIIASASCE3 5.png

Assam

Population

The IFs model's population forecasts are slightly greater than IIASA's by less than 5% in all years. The average difference between the two models is around a 3%. AssamPopIIASA.png

Crude Birth Rates

CBRs are relatively close in the two models. The largest difference is in 2095 where IFs's population forecast is nearly 8% lower than IIASA's. AssamCBRIIASA.png

Crude Death Rates

In 2010 there is an 18% difference between IIASA and IFs's historical data. By 2015 the two models are very close and IIASA is greater than IFs until around 2070. After 2070 IFs' CDRs are greater than IIASA's by an increasing rate. From 2015 through 2100 there is not a difference between the two models that is greater than 5.5%. 

AssamCDRIIASA.png

Migration

AssamMigIIASA.png

Total Fertility Rates

IIASA's forecasts of TFR for Assam are slightly greater than IFs' forecasts, but both models are relatively close to one another. 

AssamTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

AssamMigIIASASCE.png

Population After Migration Scenario 1

AssamPopIIASAMigSCE.png

Migration Scenario 2 Results

Assam's population forecasts in the first scenario with IIASA's migration rates are quite close to IIASA's population forecasts and therefore do not require any adjustment in the second scenario. Migration rates are included and remain the same in the second scenario as they were in the first scenario. 

Migration Rates After Migration Scenario 2

Although the migration rates are unchanged in the second scenario, the migration rates are greater in the second scenario than in the first. 

AssamMigIIASASCE2.png

Population After Migration Scenario 2

Assam's migration rates do not change significantly in absolute terms and the population forecasts in the second scenario is quite close to IIASA's and the first scenario's population forecasts. 

AssamPopIIASAMigSCE2.png

Migration Scenario 3 Results

Assam's migration rates are unchanged in the third scenario from the previous iteration. 

Migration Rates After Migration Scenario 3

AssamMigIIASASCE3.png

Population After Migration Scenario 3

AssamPopIIASAMigSCE3 5.png

Bihar

Population

Bihar is one of the largest provinces in India and IFs is forecasting greater population growth than what is seen in IIASA's forecasts by about 70 million by the end of the time horizon. In 2095, IFs forecasts Bihar's population to be about 31% greater than IIASA's forecast.

BiharPopIIASA.png

Crude Birth Rate

IFs forecast of Bihar's CBRs are greater than IIASA's. IFs forecasts rise and fall two times in the forecasts. IIASA's forecasts are smoother than IFs and steadily decline over time. In 2030 the difference between the two models is at its' greatest reaching about a 24% difference. In 2095 the difference between the two model's declines to its' lowest point at about 3% difference. 

BiharCBRIIASA.png

Crude Death Rate

In 2010 the two model's have their greatest difference, with IFs's CDR being 20% greater than IIASA's. From IFs model initialization in 2014 through 2060 the two models are quite close, with less than 10% difference in all years. After 2060, IIASA's forecasts are greater than IFs by about 10% to 13%. 

BiharCDRIIASA.png

Migration

BiharMigIIASA.png

Total Fertility Rates

IFs' forecasts of TFR for Bihar are significantly greater than IIASA's until 2045. After 2045, TFR remains flat at 1.9 births per woman through the end of the time horizon in both models. 

BiharTFRIIASA.png

Migration Scenario 1 Results 

Bihar has significant outward migration in IIASA's forecasts and this appears to be the main driver that is pushing Bihar's population forecast much higher than IIASA's. To remedy this, IIASA's migration data for Bihar was put into a scenario file using the parameter migrater.  

Below is a graph showing Bihar's migration rates from the IIASA model (in orange), the IFs provincial model without migration (in blue), and the migration scenario with migration rates from IIASA (in grey). Despite the migration data being identical in the scenario file to the IIASA data, the results from the migration scenario's run are not identical to IIASA. This graph shows migration rates in Bihar when the scenario file only had migration rates for Bihar, the rest of the provinces were not affected. 

BiharMigSCEMig.png

Below is the population forecasts from IIASA (in blue), IFs without migration (in red), and IFs with the migration scenario (in green). 

BiharMigSCEPop.png

Migration Scenario Results 2

This migration scenario is the one represented in all other provinces, where all provinces have migration data from IIASA in the migrater parameter. 

Migration Rate After Migration Scenario 2

With all provinces' migration rates adjusted, Bihar responds as expected where migration rates match IIASA's. 

BiharMigIIASASCE.png

Population After Migration Scenario 2

BiharPopIIASAMgSCE.png

Migration Scenario 3 Results

Bihar is the only province that has been changed three times, and the third scenario in Bihar is from the same scenario that is referred to as Scenario 2 throughout the rest of this document. The third scenario in Bihar is labeled as SCE2​ in the graphs for consistency across scenario versions and provinces. Because the population did not significantly change between the first Bihar migration scenario and the second, net migration rates were doubled in the third migration scenario. 

Migration Rates After Scenario 3

The doubling of migration rates in 2014 shifts the migration rate line in the scenario down. After 2085, migration rates are forecast to decline to the same level that is in IIASA and the previous scenario. 

BiharMigIIASASCE2.png

Population After Migration Scenario 3

After the third migration scenario, Bihar's population forecasts have sufficiently declined to levels that are close to IIASA's population forecasts. There is a decline in population by about 80 million in 2100 from the base case to the third scenario. 

BiharPopIIASAMgSCE2.png

Migration Scenario 4 Results 

Bihar's migration scenario 4 is the equivalent of migration scenario 3 for all other provinces in India. Bihar's migration rates were unchanged in the final scenario from the previous version. 

Migration Rates After Migration Scenario 4

BiharMigIIASASCE3.png

Population After Migration Scenario 4

BiharPopIIASAMgSCE3 5.png

Chandigarh

Population

IFs forecast of Chandigarh's population is significantly less than IIASA's forecast by an increasing amount throughout the forecasts. By 2095 IFs is less than IIASA by 129%. 

ChandigarhPopIIASA.png

Crude Birth Rate

IFs and IIASA's forecasts of CBR are similar, with IFs forecasts being greater than IIASA's by between 2% and just under 11% in 2095.  

ChandigarhCBRIIASA.png

Crude Death Rate

IFs forecast of CDRs are significantly greater than IIASA's forecast by between 19% and 36%. The two model's starting points in 2010 are close and have about a 5% difference.

ChandigarhCDRIIASA.png

Migration

ChandigarhMigIIASA.png

Total Fertility Rates

Chandigarh's historical data is surprisingly low, but has been verified. IIASA's forecasts are even lower than the IFs' model by about 0.2 births per woman. 

ChandigarhTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

ChandigarhMigIIASASCE.png

Population After Migration Scenario 1

ChandigarhPopIIASAMgSCE.png

Migration Scenario 2 Results

The migration scenario in Chandigarh has the same data in the first scenario and the second scenario. 

Migration Rate After Migration Scenario 2

The migration rates are larger in the second scenario, in spite of identical data in both scenarios. 

ChandigarhMigIIASASCE2.png

Population After Migration Scenario 2

Chandigarh's population in the second scenario is about the same as IIASA's until about 2050. After 2050, the second scenario's population forecast is greater than IIASA's. 

ChandigarhPopIIASAMgSCE2.png

Migration Scenario 3 Results

Chandigarh's migration rates were unchanged in the third and final scenario. 

Migration Rates After Migration Scenario 3

ChandigarhMigIIASASCE3.png

Population After Migration Scenario 3

ChandigarhPopIIASAMgSCE3 5.png

Chhatisgarh

Population

The IFs model's forecast of population in Chhatisgarh is greater than IIASA's population forecasts by an increasing margin. By 2095 IFs' population is about 11% greater than IIASA's.

ChhatisgarhPopIIASA.png

Crude Birth Rates

From 2010 through 2030 the two models' forecasts of CBRs have the greatest difference, ranging from 4% in 2015 to 11% in 2025.  From 2030 through the end of the time horizon, the two models are similar with less than 3% difference in any given year. 

ChhatisgarhCBRIIASA.png

Crude Death Rates

IFs' and IIASA's CDRs in 2010 are at their greatest difference, with IFs being about 13% greater than IIASA. In 2025 IFs' CDRs drop below IIASA's forecast of CDR until 2080. Between 2025 and 2080, IFs is between 0% and 8% less than IIASA's forecast. After 2080, IFs' CDRs increase beyond IIASA's and by 2095 IFs is about 4% greater than IIASA's. 

ChhatisgarhCDRIIASA.png

Migration

ChhatisgarhMigIIASA.png

Total Fertility Rates

The IFs model's historical TFR are greater than IIASA's, but IFs' rates decline more quickly than IIASA's. Both models reach 1.9 births per woman by 2045 and remain at that rate until the end of the time horizon. 

ChhatisgarhTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

ChhatisgarhMigIIASASCE.png

Population After Migration Scenario 1

ChhatisgarhPopIIASAMgSCE.png

Migration Scenario 2 Results

The population forecasts from the first scenario were close to IIASA with the inclusion of migration and therefore the migration rates remain unchanged for Chhatisgarh in the second scenario.

Migration Rates After Migration Scenario 2

The migration rates in the second scenario are identical to the migration rates from IIASA and the first scenario. However after the second scenario was run migration rates are greater for all years. 

ChhatisgarhMigIIASASCE2 5.png

Population After Migration Scenario 2

The greater migration rates makes population slightly greater in the second scenario, but the difference is small. 

ChhatisgarhPopIIASAMgSCE2.png

Migration Scenario 3 Results

Chhatisgarh's migration rates were doubled, which means they were lowered from -0.12 to -0.24 in 2014.  

Migration Rates After Migration Scenario 3

ChhatisgarhMigIIASASCE3.png

Population After Migration Scenario 3

ChhatisgarhPopIIASAMgSCE3 5.png

Dadra and Nagar Haveli

Population

Dadra and Nagar Haveli's population forecast in IFs is significantly lower than IIASA's. By 2095 IFs forecast is about 111% lower than IIASA's forecast. 

DadraandNagarHaveliPopIIASA.png

Crude Birth Rates

IFs forecasts of CBRs are significantly greater than IIASA's. By 2095 IFs forecasts of CBRs is 33% greater than IIASA's. There is a noticable shift up in IFs' forecast in 2014 when the model initializes. 

 DadraandNagarHaveliCBRIIASA.png

Crude Death Rates

CDRs in the IFs model are significantly greater than IIASA's in all years. There is a significant jump in CDR in the IFs model at model initialization in 2014. The difference between the two models is greatest in magnitude in 2015 with IFs being 62% greater than IIASA's CDR. The models have the least difference in total in 2010 with about 0.75 deaths per thousand difference. 

DadraandNagarHaveliCDRIIASA.png

Migration

DadraandNagarHaveliMigIIASA.png

Total Fertility Rates

The historical data in the IFs model is significantly greater than the IIASA model's initialization in 2010. IFs forecasts TFR to drop down to 1.9 in 2035 and remain there through the end of the time horizon. IIASA forecasts TFR to drop to 1.75 in 2045 and the rate remains flat through 2095. 

DadraandNagarHaveliTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

DadraandNagarHaveliMigIIASASCE.png

Population After Migration Scenario 1

DadraandNagarHaveliPopIIASAMgSCE.png

Migration Scenario 2 Results

The first scenario places population forecasts to be almost identical to IIASA's population forecasts. Therefore, there is no change in migration rates in the second scenario for Dadra and Nagar Haveli. 

Migration Rates After Migration Scenario 2

Although the migration rates within the second scenario are identical to IIASA's and the first scenario, after the scenario is run the migration rates are greater in the second scenario. 

DadraandNagarHaveliMigIIASASCE2.png

Population After Migration Scenario 2

The increased migration rates in the second scenario causes the population forecasts to overshoot IIASA's. The total population is really small in all models. 

DadraandNagarHaveliPopIIASASCE2.png

Migration Scenario 3 Results

Dadra and Nagar Haveli's migration rates were unchanged. 

Migration Rates After Migration Scenario 3

DadraandNagarHaveliMigIIASASCE3.png

Population After Migration Scenario 3

DadraandNagarHaveliPopIIASAMgSCE3 5.png

Daman and Diu

Population

IFs population forecasts for Daman and Diu are significantly less than the IIASA population forecasts. The magnitude of difference between the population forecasts in the IFs model and IIASA's model is at its greatest in 2095 with the IFs population being 268% less than the IIASA population.

DamanandDiuPopIIASA.png

Crude Birth Rates

IFs' CBRs are greater than IIASA's for all years but for the first 15 years of forecasts, from 2010 through 2025, are very close. IIASA's forecasts have CBR declining more rapidly after 2025 than IFs' forecasts. By 2095 IFs' CBRs are about 39% greater than IIASA's.

DamanandDiuCBRIIASA.png

Crude Death Rates

IFs forecasts CDRs to be much higher than IIASA does. There is a noticable upward shift in IFs' CDR in 2014 at the model initialization, then CDRs decline until around 2020. After 2020 IFs forecasts CDRs to rise more rapidly than IIASA until it peaks in 2070, then CDRs decline in the IFs model until the end of the time horizon in 2100. IIASA's forecast is smooth and steadily increases until it plateaus around 2090. The magnitude of difference ranges from around 11% to 62%.

DamanandDiuCDRIIASA.png

Migration

DamanandDiuMigIIASA.png

Total Fertility Rates

IIASA's model forecasts TFR to drop to 1.75 in 2030 and remain there through the end of the time horizon. Alternatively, the IFs model drops to 1.9 in 2005 and it remains there through 2100. 

DamanandDiuTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

Daman and Diu's migration rate is almost identical to IIASA's, as expected. There is a small drop in migration rates from 2040 to 2050 below IIASA's rates. 

DamanandDiuMigIIASASCE.png

Population After Migration Scenario 1

DamanandDiuPopIIASAMgSCE.png

Migration Scenario 2 Results

The first migration scenario results were satisfactory and no changes are made to migration rates in the second scenario. 

Migration Rates After Migration Scenario 2

Although there was no change to the migration rate data between the first and second scenario, the second scenario has larger migration rates after the scenario was run. 

DamanandDiuMigIIASASCE2.png

Population After Migration Scenario 2

The population forecasts are greater than in the first scenario and overshoots IIASA's forecasts by about 4 hundred thousand people at the end of the time horizon.  

DamanandDiuPopIIASAMgSCE2 5.png

Migration Scenario 3 Results

Daman and Diu's migration rates have not changed from the previous scenario. 

Migration Rates After Migration Scenario 3

DamanandDiuMigIIASASCE3.png

Population After Migration Scenario 3

DamanandDiuPopIIASAMgSCE3 5.png

Delhi

Population

IIASA's population forecast for Delhi is significantly greater than IFs' population forecast. By 2095, IIASA forecasts a population of about 45 million. Alternatively, in IFs the population is forecast to be around 22 million. This difference between the two models is around 106% in 2095. 

DelhiPopIIASA.png

Crude Birth Rates

CBRs in the two models are relatively close with less than an 11% difference in any given year. IFs' forecast of CBR are greater than IIASA's in all years. 

DelhiCBRIIASA.png

Crude Death Rates

CDRs in the IFs model are greater than IIASA's forecasts in all years. The difference increases every year up until 2075 where the difference between the two models peaks at 27%.

DelhiCDRIIASA.png

Migration

DelhiMigIIASA.png

Total Fertility Rates

IIASA's forecasts of TFR drop down as low as 1.5 from 2025 through 2045 and then increase to 1.7. IFs forecasts TFR to steadily increase from 1.8 to 1.9. 

DelhiTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

DelhiMigIIASASCE.png

Population After Migration Scenario 1

DelhiPopIIASAMgSCE.png

Migration Scenario 2 Results

Due to the success of introducing IIASA's migration rates in improving Delhi's population forecasts there is no change in the migration data in the second scenario versus the first scenario. 

Migration Rates After Migration Scenario 2

Migration rates in the second scenario are greater than in the first, despite the same migration data being in both scenarios. 

DelhiMigIIASASCE2.png

Population After Migration Scenario 2

Due to the increase in migration rates after the second scenario was run, the population forecasts are greater in the second scenario by about 10 million in 2100. 

DelhiPopIIASAMgSCE2.png

Migration Scenario 3 Results

Delhi's migration rates were not changed from the previous iterations. 

Migration Rates After Migration Scenario 3 

DelhiMigIIASASCE3.png

Population After Migration Scenario 3

DelhiPopIIASAMgSCE3 5.png

Goa

Population

Goa's population in IFs is significantly less than the population in IIASA's model. By 2095 IFs population is 59% less than IIASA's. 

GoaPopIIASA.png

Crude Birth Rates

Goa's CBRs are greater in the IFs model than the IIASA model for all years by about 1.5 births per thousand. The magnitude of difference between the two models ranges from 11% to 17%. 

GoaCBRIIASA.png

Crude Death Rates

There is a significant downward shift in IF's forecast of CDR in 2014 at model initialization. This shift results in a 43% magnitude of difference between IFs and IIASA's models, despite the two models having very close starting points in 2010. IFs' forecasts of CDRs increase more rapidly than IIASA's, and by 2070 IFs' CDRs become greater than IIASA's through the end of the time horizon. 

GoaCDRIIASA.png

Migration

GoaMigIIASA.png

Total Fertility Rates

IIASA's forecasts of TFR drop below 1.4 from 2015 through 2045. After 2045 IIASA forecasts TFR to steadily increase to 1.6. IFs forecasts TFR to start at 1.6 births per woman and then steadily increase to 1.9. 

GoaTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

GoaMigIIASASCE.png

Population After Migration Scenario 1

GoaPopIIASAMgSCE.png

Migration Scenario 2 Results

The first scenario overshoots IIASA's population because births are greater and deaths are lower (in the earlier years) in IFs. Therefore, the migration rate in Goa is halved in the second scenario. 

Migration Rate in Migration Scenario 2

The migration rate in Goa was halved starting in 2014 in the second migration scenario. However, the first few years are close to zero after the scenario was run. These zeroes are not in the data in the scenario, rather it is some push back from within the model. 

GoaMigIIASASCE2.png

Population After Migration Scenario 2

The halving of migration rates in Goa in the second scenario brings population forecasts down to IIASA's population forecasts. 

GoaPopIIASAMgSCE2.png

Migration Scenario 3 Results

Goa's migration rates were unchanged from the previous scenario. 

Migration Rates After Migration Scenario 3

GoaMigIIASASCE3.png

Population After Migration Scenario 3

GoaPopIIASAMgSCE3 5.png

Gujarat

Population

The population forecasts of Gujarat are similar in the two models, with IFs' forecasts being greater than IIASA's in all years. The magnitude of difference between the two models is less than 5% in all years. 

GujaratPopIIASA.png

Crude Birth Rates

IFs' CBRs are greater than IIASA's for all years, but the two models are within 4 births per thousand or less of each other. The magnitude of difference ranges from 7% to 11%. 

GujaratCBRIIASA.png

Crude Death Rates

IIASA's CDR forecasts are greater than IFs from 2015 through the end of the time horizon in 2095. IFs appears to have a jump down in CDRs at model initialization in 2014. The largest magnitude of difference between the two models was in 2020 with IFs being 21% less than IIASA's. 

GujaratCDRIIASA.png

Migration

GujaratMigIIASA.png

Total Fertility Rates

IFs' forecasts TFR to be greater than IIASA for all years. IIASA forecasts TFR to level off at 1.8 children per woman, whereas IFs forecasts TFR to level off at 1.9 children per woman. 

GujaratTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

GujaratMigIIASASCE.png

Population After Migration Scenario 1

GujaratPopIIASAMgSCE.png

Migration Scenario 2 Results

It appears that Gujarat is forecast to have fewer deaths in IFs and more births than in IIASA's forecasts. Because of this difference the introduction of migration forces population forecasts to overshoot IIASA's. Therefore, migration is removed for Gujarat in the second scenario run. 

Migration Rates After Scenario 2

GujaratMigIIASASCE2.png

Population After Migration Scenario 2

Population drops down to close to IIASA's forecasts when migration data is not used for Gujarat in the second scenario. 

GujaratPopIIASAMgSCE2.png

Migration Scenario 3 Results

Gujarat's migration rates were unchanged from the previous scenario version. 

Migration Rates After Migration Scenario 3

GujaratMigIIASASCE3.png

Population After Migration Scenario 3

GujaratPopIIASAMgSCE3 5.png

Haryana

Population

Population forecasts in Haryana are different between the two models, with IFs being significantly less than IIASA's. By 2095 IFs' population forecast is about 33% less than IIASA's, which translates into a difference of about 11 million people. 

HaryanaPopIIASA.png

Crude Birth Rates

IFs' forecasts of CBRs are greater than IIASA's for all years, but are relatively close with the magnitude of difference ranging from 3% to 6%. 

HaryanaCBRIIASA.png

Crude Death Rates

As has been observed previously, there is an upward shift in CDRs in the IFs model in 2014 at model initialization. IF's forecasts are greater than IIASA's for all years. The magnitude of difference ranges from 3% to 12%.

HaryanaCDRIIASA.png

Migration

HaryanaMigIIASA.png

Total Fertility Rates

Haryana's TFR forecasts are similar in the two models. IFs is greater than IIASA in all years. IFs forecasts TFR to level off at 1.9, whereas in IIASA's model forecasts TFR to level off at 1.83. 

HaryanaTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

HaryanaMigIIASASCE.png

Population After Migration Scenario 1

HaryanaPopIIASAMgSCE.png

Migration Scenario 2 Results

The first scenario's forecasts look good, therefore the migration data does not change in the second scenario for Haryana. 

Migration Rate After Migration Scenario 2

There is some push back in the model on the migration rates, but they are close to the desired values. 

HaryanaMigIIASASCE2 5.png

Population After Migration Rate Scenario 2

Population is even closer in the second scenario to IIASA's forecasts, than it was in the first. 

HaryanaPopIIASAMgSCE2 5.png

Migration Scenario 3 Results

Haryana's migration rates are unchanged from the previous scenario. 

Migration Rates After Migration Scenario 3

HaryanaMigIIASASCE3.png

Population After Migration Scenario 3

HaryanaPopIIASAMgSCE3 5.png

Himachal Pradesh

Population

The population forecasts in the two models are quite close with IIASA's forecasts are slightly larger from 2060 through the end of the time horizon. 

HimachalPradeshPopIIASA.png

Crude Birth Rates

IFs forecasts CBRs to be higher than IIASA for all years by a decreasing margin. In 2030 the magnitude of difference between the two models peaks at 13% and by 2095 the magnitude of difference declines to 7.5%. 

HimachalPradeshCBRIIASA.png

Crude Death Rates

IIASA's forecasts of CDRs are greater than IFs until 2085. The magnitude of difference between the two models ranges from -10% to 5%.

HimachalPradeshCDRIIASA.png

Migration

HimachalPradeshMigIIASA.png

Total Fertility Rates

IFs' forecasts of TFR are greater than IIASA in every year except 2014. IFs' forecasts a steady rise in TFR that approaches 1.9, but does not reach it at the end of the time horizon. IIASA forecasts a steady increase in TFR reaching 1.84 in 2095. 

HimachalPradeshTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

HimachalPradeshMigIIASASCE.png

Population After Migration Scenario 1

HimachalPradeshPopIIASAMgSCE.png

Migration Scenario 2 Results

Because IFs has more births and less deaths than IIASA when migration is brought into the model in scenario 1, the first scenario has forecasts of population that are too large. Therefore, migration is removed from Himachal Pradesh in the second scenario run. 

Migration Rate After Scenario 2

HimachalPradeshMigIIASASCE2.png

Population After Migration Scenario 2

HimachalPradeshPopIIASAMgSCE2.png

Migration Scenario 3 Results

Himachal Pradesh's migration rates are unchanged from the previous scenario. 

Migration Rates After Migration Scenario 3

HimachalPradeshMigIIASASCE3.png

Population After Migration Scenario 3

HimachalPradeshPopIIASAMgSCE3 5.png

Jammu and Kashmir

Population

Jammu and Kashmir's population is forecast to be about 2 million more in IFs than in the IIASA model. The magnitude of difference reaches around 15% in 2095.

JammuKashmirPopIIASA.png

Crude Birth Rates

IFs' forecast of CBRs for Jammu and Kashmir is greater than IIASA's forecasts for all years. There is an absolute difference of about 2 births per thousand. The magnitude of difference between the two models is greatest in 2055 with IFs being about 29% greater than IIASA. 

JammuKashmirCBRIIASA.png

Crude Death Rates

There is a noticable upward shift in CDR in the IFs model in 2014 at model initialization. The IFs forecasts of CDRs are greater than IIASA's for all years, but by a decreasing margin over time. 

JammuKashmirCDRIIASA.png

Migration

JammuKashmirMigIIASA.png

Total Fertility Rates

IFs' forecasts TFR to rise to 1.9 in 2020 and births per woman remain there through the end of the time horizon. IIASA forecasts TFR to steadily decline to 1.56 in 2030 and then steadily rise through the end in 2095, where TFR reaches 1.77.

JammuKashmirTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

JammuKashmirMigIIASASCE.png

Population After Migration Scenario 1

JammuKashmirPopIIASAMgSCE.png

Migration Scenario 2 Results

Deaths are greater in IIASA's model and births are greater in the IFs model, which causes population to not come down sufficiently when migration was introduced in the first scenario. Therefore, migration rates are doubled in the second scenario. 

Migration Rates After Migration Scenario 2

The migration rates are read into the model properly from the scenario file, there is not any model push back on migration rates in the second scenario run. 

JammuKashmirMigIIASASCE2.png

Population After Migration Scenario 2

After the doubling of migration rates in the second scenario, population forecasts in IFs is closer to IIASA's. However, Jammu and Kashmir's population forecasts is about 1.5 million greater in IFs than in IIASA at the end of the time horizon. 

JammuKashmirPopIIASAMgSCE2.png

Migration Scenario 3 Results

Jammu and Kashmir's migration rates were tripled from the calculated migration rate from IIASA in the third and final iteration. 

Migration Rates After Migration Scenario 3

JammuKashmirMigIIASASCE3.png

Population After Migration Scenario 3

JammuKashmirPopIIASAMgSCE3 5.png

Jharkhand

Population

Jharkhand's population forecasts are about 8.5 million more in IFs than in IIASA. The magnitude of difference is just under 15% by 2095.

JharkhandPopIIASA.png

Crude Birth Rates

IFs' forecasts of CBRs are greater than IIASA's for all years. The IFs model does not decline at the same rate throughout the time horizon. IIASA's decline in CBR is smoother and steadier. 

JharkhandCBRIIASA.png

Crude Death Rates

There is an upward shift in CDRs in IFs at model initialization in 2014. Until around 2045 IFs' forecast of CDRs is significantly greater than IIASA's, by a magnitude of 5% to 23%. After 2045 the CDRs in the two models are very close. 

JharkhandCDRIIASA.png

Migration

JharkhandMigIIASA.png

Total Fertility Rates

IFs has significantly greater TFR from 2010 through 2035. After 2035, IFs forecasts TFR to be 1.9 births per female and IIASA forecasts TFR to be 1.85 or 1.84 through the end of the time horizon. 

JharkhandTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

JharkhandMigIIASASCE.png

Population After Migration Scenario 1

JharkhandPopIIASAMgSCE.png

Migration Scenario 2 Results

Jharkhand's population was improved  in the first scenario, but not by enough because births are greater in IFs than in IIASA. Therefore, the migration rate in Jharkhand is doubled in the second scenario. 

Migration Rates After Migration Scenario 2

JharkhandMigIIASASCE2.png

Population After Migration Scenario 2

The second scenario forecasts Jharkhand's population to be close to IIASA's forecasts. 

JharkhandPopIIASAMgSCE2.png

Migration Scenario 3 Results

Jharkhand's migration rates are unchanged from the last scenario. 

Migration Rates After Migration Scenario 3

JharkhandMigIIASASCE3.png

Population After Migration Scenario 3

JharkhandPopIIASAMgSCE3 5.png

Karnataka

Population

IFs' forecast of population is greater than IIASA's for all years. By 2095, IFs is greater than IIASA by about 10% which equates to about 8 million people. 

KarnatakaPopIIASA.png

Crude Birth Rates

IFs' forecasts of CBRs are greater than IIASA's for all years by a decreasing margin. The greatest magnitude of difference was in 2025 by about 16%.

KarnatakaCBRIIASA.png

Crude Death Rates

Crude death rates are higher in IIASA's forecasts from 2015 through 2090. There is about 1 less death per thousand in the IFs forecasts with magnitudes of difference ranging from -12% to 7%. 

KarnatakaCDRIIASA.png

Migration

KarnatakaMigIIASA.png

Total Fertility Rates

IFs forecasts TFR at 1.9 from 2015 through the end of the time horizon. IIASA forecasts a slight decline in TFR from 2010 through 2025, followed by a steady increase to 1.86. 

KarnatakaTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

KarnatakaMigIIASASCE.png

Population After Migration Scenario 1

KarnatakaPopIIASAMgSCE.png

Migration Scenario 2 Results

Migration in the first scenario increases population in Karnataka, when IFs is already forecasting population to be larger than IIASA. Therefore, the migration parameter is turned off in the second scenario. 

Migration Rates After Scenario 2

KarnatakaMigIIASASCE2.png

Population After Migration Scenario 2

Karnataka's population is about 8 million greater than IIASA's at the end of the time horizon. 

KarnatakaPopIIASAMgSCE2.png

Migration Scenario 3 Results

Karnataka's migration rates were lowered to -0.4, despite the fact that IIASA forecasts there to be positive net migration into Karnataka. The negative migration rates are to offset the greater rate of deaths forecasts in Karnataka by the IIASA model. 

Migration Rates After Migration Scenario 3

KarnatakaMigIIASASCE3.png

Population After Migration Scenario 3

KarnatakaPopIIASAMgSCE3 5.png

Kerala

Population

Kerala's population is forecast to be significantly higher in the IFs forecasts verus the IIASA forecasts. By 2095 IFs forecasts about 10 million more people than IIASA, with is about a 25% difference. 

KeralaPopIIASA.png

Crude Birth Rates

IFs forecasts CBRs for Kerala to be greater than what was forecast by IIASA for all years. In 2095 IFs is about 14% greater than IIASA's forecast. 

KeralaCBRIIASA.png

Crude Death Rates

IFs has a noticable downward shift in CDRs in 2014 at model initialization. IFs forecasts CDRs to be less than IIASA's forecasts by about 2 deaths per thousand for most years. The magnitude of difference decreases over time, with a range of 33% to 9%.

KeralaCDRIIASA.png

Migration

KeralaMigIIASA.png

Total Fertility Rates

IFs' forecasts TFR to steadily increase and approach 1.9, but does not reach the value at the end of the time horizon. IIASA forecasts a decline in TFR from 2010 through 2030. After 2030, IIASA forecasts a steady increase in TFR reaching 1.71 in 2075 where TFR remains through the end of the time horizon. 

KeralaTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

KeralaMigIIASASCE.png

Population After Migration Scenario 1

KeralaPopIIASAMgSCE.png

Migration Scenario 2 Results

Migration rates in Kerala are doubled in the second scenario to improve population forecasts. 

Migration Rates After Migration Scenario 2

There is some model push back in the latter years of forecasts in migration rates where migration rates decline to around IIASA's level. 

KeralaMigIIASASCE2.png

Population After Migration Scenario 2

After doubling migration rates in the second scenario, IFs population forecasts in Kerala are closer to IIASA's but they are still about 3 million greater at the end of the time horizon. 

KeralaPopIIASAMgSCE2.png

Migration Scenario 3 Results

Kerala's migration rates are increased in the third and final scenario. They are tripled from the first scenario. 

Migration Rates After Migration Scenario 3

KeralaMigIIASASCE3.png

Population After Migration Scenario 3

KeralaPopIIASAMgSCE3 5.png

Lakshadweep

Population

IFs' forecast for population in Lakshadweep is significantly lower than IIASA's forecast. The magnitude of difference between the two models in 2095 is 64%. 

LakshadweepPopIIASA.png

Crude Birth Rates

There is a upward shift in CBRs in the IFs model in 2014 at model initialization. IFs' forecasts are greater than IIASA's for all years by about 4 births per thousand with an overall magnitude varying from 31% to 45%.

LakshadweepCBRIIASA.png

Crude Death Rates

There is an upward shift in CDRs in 2014 in the IFs model. From 2010 through 2055 IFs' forecasts of CDRs are greater than IIASA's. After 2055 IFs forecasts are less than IIASA's. The range of magnitude of difference varies from -18% to 36%.

LakshadweepCDRIIASA.png

Migration

LakshadweepMigIIASA.png

Total Fertility Rates

IFs forecasts TFR to drop to 1.9 in 2020, where it remains through the end of the time horizon. IIASA forecasts a decline in TFR from 2010 through 2030, where it reaches 1.31. After 2030, IIASA forecasts of TFR steadily rise to 1.52 in 2095. 

LakshadweepTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

Lakshadweep's migration rates have a slight departure from IIASA's between 2040 through 2050, but overall they match. 

LakshadweepMigIIASASCE.png

Population After Migration Scenario 1

LakshadweepPopIIASAMgSCE.png

Migration Scenario 2 Results

The first scenario overshoots IIASA's population and the migration rates are halved in the second scenario. 

Migration Rates After Migration Scenario 2

LakshadweepMigIIASASCE2.png

Population After Migration Scenario 2

The second scenario is much closer to IIASA's forecasts of population. 

LakshadweepPopIIASAMgSCE2.png

Migration Scenario 3 Results

Lakshadweep's migration rates are the same in the third scenario as they were in the second scenario. 

Migration Rates After Migration Scenario 3

LakshadweepMigIIASASCE3.png

Population After Migration Scenario 3

LakshadweepPopIIASAMgSCE3 5.png

Madhya Pradesh

Population

Madhya Pradesh's population is close in the two models, with IFs' forecasts being slightly less than IIASA's. The difference between the two models increases over time. By 2095, IFs' population forecast is about 4% less than IIASA's.

MadhyaPradeshPopIIASA.png

Crude Birth Rates

IFs' forecast of CBRs decline at different rates throughout the forecasts, whereas IIASA's CBRs decline more steadily. IFs forecasts are greater than IIASA's for most years, but get rather close to IIASA's in 2035 and 2065. 

MadhyaPradeshCBRIIASA.png

Crude Death Rates

Madhya Pradesh's CDRs have a significant spike in 2014 when the model initializes. IFs' forecasts of CDRs are greater than IIASA's for all years by about 1.5 deaths per thousand. 

MadhyaPradeshCDRIIASA.png

Migration

MadhyaPradeshMigIIASA.png

Total Fertilty Rates

IFs' forecasts of TFR decline more rapidly than IIASA, but both models reach 1.9 by 2050. After 2050, both models remain there through the end of the time horizon. 

MadhyaPradeshTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

MadhyaPradeshMigIIASASCE.png

Population After Migration Scenario 1

MadhyaPradeshPopIIASAMgSCE.png

Migration Scenario 2 Results

The same migration rates are used in the second scenario as were used in the first scenario. 

Migration Rates After Migration Scenario 2

Even though the same migration rates were used in the scenario, there is a difference between the two scenarios. The second scenario's migration rates are larger than the first scenario because of some model pushback. 

MadhyaPradeshMigIIASASCE2.png

Population After Migration Scenario 2

This difference in migration rates is not apparent in the population forecasts because the migration rates are so small. 

MadhyaPradeshPopIIASAMgSCE2.png

Migration Scenario 3

Madhya Pradesh's migration rates are unchanged in the third scenario from the second scenario. 

Migration Rates After Migration Scenario 3

MadhyaPradeshMigIIASASCE3.png

Population After Migration Scenario 3

MadhyaPradeshPopIIASAMgSCE3 5.png

Maharashtra

Population

IFs' forecast of Maharashtra's population is significantly less than IIASA's by an increasing margin. In 2095, there is a nearly 40 million difference between the two models. The magnitude of difference reaches 31% in 2095. 

MaharasthraPopIIASA.png

Crude Birth Rates

IFs' forecasts are greater than IIASA's for all years by a magnitude of 6% to 14%. 

MaharashtraCBRIIASA.png

Crude Death Rates

IFs' forecast for CDRs looks bizarre, there is a massive jump in CDR in 2030. IFs' forecasts for CDRs are greater than IIASA's for all years. 

MaharashtraCDRIIASA.png

Migration

MaharashtraMigIIASA.png

Total Fertility Rates

IIASA forecasts TFR to drop below IFs' forecast in 2020, which is where the forecasts remain through the end of the time horizon. 

MaharashtraTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

MaharashtraMigIIASASCE.png

Population After Migration Scenario 1

MaharasthraPopIIASAMgSCE.png

Migration Scenario 2 Results

The second scenario has the same migration data as the first scenario. 

Migration Rates After Migration Scenario 2

Although the same data is used in the second scenario as was in the first, the model pushes migration rates up above what is in the scenario. 

MaharashtraMigIIASASCE2.png

Population After Migration Scenario 2

The increase in migration rates in the second scenario causes an increase in population in Maharashtra by about 10 million at the end of the time horizon. 

MaharasthraPopIIASAMgSCE2.png

Migration Scenario 3 Results

Madhya Pradesh's migration rates are unchanged from the second scenario. 

Migration Rates After Migration Scenario 3

MadhyaPradeshMigIIASASCE3.png

Population After Migration Scenario 3

MaharasthraPopIIASAMgSCE3 5.png

Manipur

Population

IFs' population forecast for Manipur are greater than IIASA's by an increasing margin through the end of the time horizon. The magnitude of difference reaches 28% in 2095. 

ManipurPopIIASA.png

Crude Birth Rates

IFs' forecasts of CBRs are greater than IIASA's for all years by about 5 births per thousand. 

ManipurCBRIIASA.png

Crude Death Rates

In IFs' forecast of CDRs there is an upward shift in 2014 at model initialization which leads to a 40% magnitude of difference between the two models. IFs' CDRs increase throughout the forecasts, but at a lower rate than IIASA's. By 2070, IIASA's CDRs surpass IFs'. 

ManipurCDRIIASA.png

Migration

ManipurMigIIASA.png

Total Fertility Rates

IIASA's forecasts of TFR are significantly lower than IFs' forecasts. Both models forecast a steady increase in TFR. 

ManipurTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

Manipur's migration rates are identical to IIASA's until 2065. After 2065, the rates fall to zero in the scenario. 

ManipurMigIIASASCE.png

Population After Migration Scenario 1

ManipurPopIIASAMgSCE.png

Migration Scenario 2 Results

The same migration data is used in Manipur in the second scenario as was used in the first scenario. 

Migration Rates After Migration Scenario 2

There is the same increase away from IIASA's data in migration rates to zero in the second scenario as is in the first scenario during the latter years. However, the second scenario has higher migration rates than the first. 

ManipurMigIIASASCE2.png

Population After Migration Scenario 2

The population forecasts in the second scenario are about the same as the first. 

ManipurPopIIASAMgSCE2.png

Migration Scenario 3 Results

Manipur's migration scenario is the same as in the first and second scenarios. 

Migration Rates After Migration Scenario 3

ManipurMigIIASASCE3.png

Population After Migration Scenario 3

Population in IFs is still about half a million more people than in IIASA's forecasts at the end of the time horizon. 

ManipurPopIIASAMgSCE3 5.png

Meghalaya

Population

Meghalaya's population forecasts differ significantly between the two models. IFs' forecast is greater than IIASA's by nearly 2.5 million. 

MeghalayaPopIIASA.png

Crude Birth Rates

IFs' forecasts of CBRs are greater than IIASA's for all years by a decreasing margin. 

MeghalayaCBRIIASA.png

Crude Death Rates

There is a significant drop in CDRs in the IFs model in 2014 at model initialization. From 2015 through 2095 IFs' forecast is less than IIASA's by an increasing margin. 

MeghalayaCDRIIASA.png

Migration

MeghalayaMigIIASA.png

Total Fertility Rates

Total fertility rates in the IFs model are initially greater than IIASA's by about 1 birth per woman. This tremendous gap declines over time, but never completely closes. IFs levels off at 1.9 around 2035. Alternatively, IIASA's forecasts of TFR decline from 2010 through 2035 and then increases steadily to 1.8 in 2095. 

MeghalayaTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

MeghalayaMigIIASASCE.png

Population After Migration Scenario 1

MeghalayaPopIIASAMgSCE.png

Migration Scenario 2 Results

The migration parameter is turned off in the second scenario in Meghalaya. 

Migration Rates After Migration Scenario 2

MeghalayaMigIIASASCE2.png

Population After Migration Rate Scenario 2

The population forecasts in IFs for Meghalaya are about 2.5 million greater than IIASA's forecasts at the end of the time horizon. 

MeghalayaPopIIASAMgSCE2.png

Migration Scenario 3 Results

Meghalya's migration rates were significantly reduced in the third and final scenario. The IIASA forecasts of migration in Meghalaya are positive but because their forecasts for deaths are significantly greater than what is in IFs, IIASA's population forecasts are much lower than what is in IFs without migration. Therefore, migration rates are lowered to -1.25 in 2014 in the third scenario to bring population in-line with IIASA's forecasts.

Migration Rates After Migration Scenario 3

MeghalayaMigIIASASCE3.png

Population After Migration Scenario 3

Population after the third scenario run, is about 2 million less at than it was in the previous scenarios at the end of the time horizon. 

MeghalayaPopIIASAMgSCE3 5.png

Mizoram

Population

IFs' population forecast for Mizoram is larger than IIASA by an increasing margin throughout the time horizon. By 2095, there are about 500 thousand more people in the IFs model than in IIASA's. 

MizoramPopIIASA.png

Crude Birth Rates

Mizoram's CBRs in the IFs model are significantly greater than the CBRs in the IIASA model by about 6 or 7 births per thousand. 

MizoramCBRIIASA.png

Crude Death Rates

There is a jump up in CDR in the IFs model in 2014 at model initialization. IFs' forecasts start out being greater than IIASA's, but the IFs CDRs are increasing at a lower rate than IIASA's CDRs are. Thus by 2065, IIASA's CDRs surpass IFs and are greater than IFs by an increasing margin through the end of the time horizon. 

MizoramCDRIIASA.png

Migration

MizoramMigIIASA.png

Total Fertility Rates

IFs' forecasts of TFR are greater than IIASA's for all years. IFs forecasts TFR to drop to 1.9 around 2020, where it remains through the end of the time horizon. IIASA's forecasts of TFR is more than 0.5 lower than IFs for all years. IIASA's forecasts a steady decline in TFR from 1.44 to 1.26 in 2040. After 2040, IIASA forecasts TFR to increase steadily to 1.39 in 2095. 

MizoramTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

MizoramMigIIASASCE.png

Population After Migration Scenario 1

MizoramPopIIASAMgSCE.png

Migration Scenario 2 Results

The migration rates in the second scenario are twice what where in the first scenario. 

Migration Rates After Migration Scenario 2

MizoramMigIIASASCE2.png

Population After Migration Scenario 2

The second scenario's forecast of population are closer to IIASA's forecast. 

MizoramPopIIASAMgSCE2.png

Migration Scenario 3

Mizoram's migration rates are the same in the third scenario as they were in the second. 

Migration Rates After Migration Scenario 3

MizoramMigIIASASCE3.png

Population After Migration Scenario 3

MizoramPopIIASAMgSCE3 5.png

Nagaland

Population

IFs' forecast of population in Nagaland is significantly greater than IIASA's forecast. By 2095 IFs' population forecast is about 38% greater than IIASA's. 

NagalandPopIIASA.png

Crude Birth Rates

IFs forecasts of CBRs in Nagaland are greater than IIASA's by about 5 births per thousand. 

NagalandCBRIIASA.png

Crude Death Rates

There is a shift up in 2014 in CDRs in the IFs model. IIASA's CDRs are forecast to increase at a faster rate than IFs' model and by 2045 IIASA's forecasts of CDRs are greater than IFs'. By 2095 the difference between the two models is greatest with IFs being about 36% less than IIASA. 

NagalandCDRIIASA.png

Migration

NagalandMigIIASA.png

Total Fertility Rates

IFs' historical data for Nagaland starts off at 1.7 and then rises up to 2 around 2010. IIASA's model is significantly lower in 2010 at 1.42. IFs forecasts TFR to drop down to 1.9 around 2020, which is where is remains through the end of the time horizon. IIASA forecasts TFR to decline to 1.32 by 2035 and then it steadily increases up to 1.53 by the end of the time horizon. 

NagalandTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

NagalandMigIIASASCE.png

Population After Migration Scenario 1

NagalandPopIIASAMgSCE.png

Migration Scenario 2 Results

The migration rate for Nagaland is doubled in the second scenario. 

Migration Rates After Migration Scenario 2

NagalandMigIIASASCE2.png

Population After Migration Scenario 2

Population is slightly lower in the second scenario, but there is not a significant improvement in the population forecast for Nagaland. 

NagalandPopIIASAMgSCE2.png

Migration Scenario 3 Results

Migration rates were lowered to three times what IIASA forecasts for Nagaland, which is -0.175. 

Migration Rates After Migration Scenario 3

NagalandMigIIASASCE3.png

Population After Migration Scenario 3

Nagaland's population is still significantly greater than IIASA's forecasts, but Nagaland's total population is relatively small compared to the rest of India. 

NagalandPopIIASAMgSCE3 5.png

Orissa

Population

IFs' population forecasts are greater than IIASA's by an increasing margin. By 2095, there is about 3 million more people in the IFs' population model than IIASA's. 

OrissaPopIIASA.png

Crude Birth Rates

IFs' forecast of CBRs is slightly more than IIASA's but the two models are quite close. 

OrissaCBRIIASA.png

Crude Death Rates

CDRs are almost identical except for in the first year, 2010, and the last year, 2095. 

OrissaCDRIIASA.png

Migration

OrissaMigIIASA.png

Total Fertility Rates

In 2010, when IIASA's data begins, IFs' TFR is greater than IIASA's by 0.3. IFs forecasts TFR to decline to 1.9 by 2025. IIASA's forecasts TFR to drop slightly below 1.9 from 2025 through 2060. After 2060, IIASA's forecasts TFR to increase to 1.94 by 2095.

OrissaTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

OrissaMigIIASASCE.png

Population After Migration Scenario 1

OrissaPopIIASAMgSCE.png

Migration Scenario 2 Results

The migration parameter for Orissa was doubled in the second scenario. 

Migration Rates After Migration Scenario 2

OrissaMigIIASASCE2.png

Population After Migration Scenario 2

The population forecasts in the second scenario are improved and are close to IIASA's. 

OrissaPopIIASAMgSCE2.png

Migration Scenario 3 Results

Orissa's migration rates are the same in the third scenario as they were in the previous iterations. 

Migration Rates After Migration Scenario 3

OrissaMigIIASASCE3.png

Population After Migration Scenario 3

OrissaPopIIASAMgSCE3 5.png

Pondicherry

Population

IFs' forecast of population in Pondicherry is less than IIASA's forecast by an increasing margin over time. By 2095, about 0.7 million less people are forecast to be in Pondicherry in the IFs model than in the IIASA model. 

PondicherryPopIIASA.png

Crude Birth Rates

Pondicherry's CBRs are lower in IFs' forecasts than in IIASA's for most years. Both models are relative close. 

PondicherryCBRIIASA.png

Crude Death Rates

CDRs in the IFs' model are greater than IIASA's model from 2010 through 2060 by about 0.5 deaths per thousand. From 2060 on, IFs' forecast of CDRs are greater than IIASA's by an increasing margin. By 2095, IFs' CDRs are greater than IIASA's by almost 2 deaths per thousand. 

PondicherryCDRIIASA.png

Migration

PondicherryMigIIASA.png

Total Fertility Rates

In 2010 IFs' TFR is about 0.2 less than IIASA's. From 2014 through the end of the time horizon, IFs forecasts TFR to increase steadily to 1.86 by 2100. IIASA forecasts TFR to decline from 2010 through 2025, where it reaches 1.64 and remains there through 2035. After 2035, IIASA forecasts TFR to steadily increase to 1.69 by 2065, where TFR remains through the end of the time horizon. 

PondicherryTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

PondicherryMigIIASASCE.png

Population After Migration Scenario 1

PondicherryPopIIASAMgSCE.png

Migration Scenario 2 Results

The same migration rates are used in the second scenario as were used in the first scenario. 

Migration Rates After Migration Scenario 2

Despite the same data having been used in the second scenario as was in the first, the model pushed back and increased migration rates somewhat in the second scenario. 

PondicherryMigIIASASCE2.png

Population After Migration Scenario 2

The change in migration rates pushed population forecasts up. The second scenario overshoots IIASA's population forecasts by about a half a million at the end of the time horizon. 

PondicherryPopIIASAMgSCE2.png

Migration Scenario 3 Results

Pondicherry's migration rates are the same in the third scenario as they were in the previous scenarios. 

Migration Rates After Migration Scenario 3

PondicherryMigIIASASCE3.png

Population After Migration Scenario 3

PondicherryPopIIASAMgSCE3 5.png

Punjab

Population

IFs forecasts Punjab's population to be lower than IIASA's by an increasing margin. Punjab's population is forecast to be about 5 million less in the IFs model than in IIASA's model by 2095. 

PunjabPopIIASA.png

Crude Birth Rates

IFs forecasts CBRs to be greater than IIASA's model by about 11% to 15%. 

PunjabCBRIIASA.png

Crude Death Rates

IFs forecasts CDRs to be greater than IIASA's by about 1 death per thousand. 

PunjabCDRIIASA.png

Migration

PunjabMigIIASA.png

Total Fertility Rates

IFs forecasts TFR to decline to 1.8 by 2015. After 2015, IFs forecasts TFR slowly approaches 1.9, but never reaches it by the end of the time horizon. IIASA starts in 2010 at 1.67 where it then declines to 1.64 by 2025. After 2025, IIASA forecasts a steady increase in TFR to 1.79 by 2095. 

PunjabTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

PunjabMigIIASASCE.png

Population After Migration Scenario 1

PunjabPopIIASAMgSCE.png

Migration Scenario 2 Results

The first scenario's forecasts of population in Punjab overshoots IIASA's population. Therefore, the second scenario has migration rates that are half of what was in the first scenario. 

Migration Rates After Migration Scenario 2

PunjabMigIIASASCE2.png

Population After Migration Scenario 2

The second scenario improves population forecasts and Punjab's population is in line with what we see at IIASA. 

PunjabPopIIASAMgSCE2.png

Migration Scenario 3

Punjab's migration rates are unchanged in the third scenario. 

Migration Rates After Migration Scenario 3

PunjabMigIIASASCE3.png

Population After Migration Scenario 3

PunjabPopIIASAMgSCE3 5.png

Rajasthan

Population

IF's forecast of Rajasthan's population is greater than IIASA's for all years by an increasing margin. By 2095 the difference is about 10 million people. 

RajasthanPopIIASA.png

Crude Birth Rates

IFs' forecasts of CBRs in Rajathan are greater than IIASA's by a decreasing margin. By 2060, both model's forecasts are basically the same. 

RajasthanCBRIIASA.png

Crude Death Rates

For the most part IFs' forecasts of CDRs are lower than IIASA's by 2% to 12%.

RajasthanCDRIIASA.png

Migration

RajasthanMigIIASA.png

Total Fertilty Rates

IFs starts off about 0.5 above IIASA and is above IIASA through 2030. After 2035, IFs forecasts TFR to be 1.9 through the end of time horizon. IIASA forecasts TFR to be steadily declines from 1.97 to 1.89 by 2095. 

RajasthanTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

RajasthanMigIIASASCE.png

Population After Migration Scenario 1

RajasthanPopIIASAMgSCE.png

Migration Scenario 2 Results

The first scenario did not cause a sufficient decline in population forecasts. Therefore, the second scenario has doubled the migration rate from the first scenario. 

Migration Rates After Migration Scenario 2

RajasthanMigIIASASCE2.png

Population After Migration Scenario 2

The second scenario forecasts population to be closer to IIASA's population forecasts, but there is still a difference by about 4 million people. 

RajasthanPopIIASAMgSCE2.png

Migration Scenario 3 Results

In the third and final scenario, Rajasthan's migration rates were tripled from the first scenario. 

Migration Rates After Migration Scenario 3

RajasthanMigIIASASCE3.png

Population After Migration Scenario 3

RajasthanPopIIASAMgSCE3 5.png

Sikkim

Population

The two models forecasts of population in Sikkim are quite close but differ by an increasing margin. 

SikkimPopIIASA.png

Crude Birth Rates

CBRs are greater in the IFs model. SikkimCBRIIASA.png

Crude Death Rates

CDRs in the two models are close together from 2010 through 2050. After 2050, IIASA's CDRs are greater than IFs by an increasing margin. SikkimCDRIIASA.png

Migration

SikkimMigIIASA.png

Total Fertilty Rates

In 2010 IFs' TFR is 2 births per female, whereas IIASA's TFR is about 0.5 less. IFs forecasts TFR to decline to 1.9 by 2020, where it remains through the end of the time horizon. IIASA's forecasts TFR to decline through 2035. After 2035, IIASA's TFR steadily increases to 1.66 by 2095. 

SikkimTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1SikkimMigIIASASCE.png
Population After Migration Scenario 1SikkimPopIIASAMgSCE.png

Migration Scenario 2 Results

The inclusion of migration in the first scenario made population forecasts further away from IIASA's forecasts. Therefore, the migration parameter is turned off in the second scenario. 

Migration Rates After Migration Scenario 2SikkimMigIIASASCE2.png
Population After Migration Scenario 2SikkimPopIIASAMgSCE2.png

Migration Scenario 3 Results

Sikkim's migration rates remain at zero in the third scenario. 

Migration Rates After Scenario 3SikkimMigIIASASCE3.png
Population After Scenario 3SikkimPopIIASAMgSCE3 5.png

Tamil Nadu

Population

IFs' forecast for population in Tamil Nadu is greater than IIASA's by 2% to 6%. 

TamilNaduPopIIASA.png

Crude Birth Rate

CBRs are relatively close in both models.

TamilNaduCBRIIASA.png

Crude Death Rate

CDRs are close in the two models until 2070. After 2070, the IFs model forecast is greater than IIASA's by an increasing margin. By 2095, IFs CDRs are about 8% greater than IIASA's. 

TamilNaduCDRIIASA.png

Migration

TamilNaduMigIIASA.png

Total Fertility Rates

In 2010, IIASA's TFR is about 0.11 greater than IFs'. IIASA forecasts TFR to be 1.81 for most years. IFs forecasts TFR to steadily increase approaching 1.9, but never reaches it. 

TamilNaduTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

TamilNaduMigIIASASCE.png

Population After Migration Scenario 1

TamilNaduPopIIASAMgSCE.png

Migration Scenario 2 Results

The first migration scenario improved population forecasts by getting IFs forecasts closer to IIASA's. However, the population in IFs was still greater than IIASA's by several million. Therefore, the second scenario has a doubled migration rate in Tamil Nadu. 

Migration Rates After Migration Scenario 2

There is some push back in the model, which causes migration rates to increase from 2070 through 2085 and then decline again through the end of the time horizon. 

TamilNaduMigIIASASCE2.png

Population After Migration Scenario 2

Tamil Nadu's population is improved in the second scenario and is close to IIASA's forecasts. 

TamilNaduPopIIASAMgSCE2.png

Migration Scenario 3 Results

Tamil Nadu's migration rates are unchanged in the third scenario. 

Migration Rates After Migration Scenario 3

TamilNaduMigIIASASCE3.png

Population After Migration Scenario 3

TamilNaduPopIIASAMgSCE3 5.png

Tripura

Population

Population in Tripura is forecast to be greater in the IFs model than in the IIASA model by an increasing margin. By 2095, IFs' population forecast is greater than IIASA's by about 1.2 million people. 

TripuraPopIIASA.png

Crude Birth Rates

The IFs' model forecasts CBRs to be greater than IIASA's model by about 5 births per thousand throughout the end of the time horizon. 

TripuraCBRIIASA.png

Crude Death Rates

There is a jump up in CDRs in the IFs' model in 2014 at the model initialization. From 2015 through 2050, IFs' forecast of CDR is greater than IIASA's at a decreasing rate over time. After 2050, IIASA's CDRs surpass the IFs' forecasts and the difference between the two models increases. By 2095, IIASA's CDRs are about 6 more deaths per thousand. 

TripuraCDRIIASA.png

Migration

TripuraMigIIASA.png

Total Fertility Rates

IFs' TFR is about 0.3 greater than IIASA's in 2010. From 2010 through 2100, IFs forecasts a steady increase in TFR from 1.7 to 1.87. IIASA forecasts TFR to decline from around 1.38 to about 1.23 from 2010 to 2050. After 2050, IIASA forecasts TFR to rise to 1.41 by 2095. 

TripuraTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

TripuraMigIIASASCE.png

Population After Migration Scenario 1

TripuraPopIIASAMgSCE.png

Migration Scenario 2 Results

The inclusion of migration rates in the first scenario made population forecasts worse. Therefore, migration was removed for Tripura in the second scenario. 

Migration Rates After Migration Scenario 2

TripuraMigIIASASCE2.png

Population After Migration Scenario 2

Migration is closer to IIASA, but population is forecast to be greater in the IFs model by about 1.25 million at the end of the time horizon. 

TripuraPopIIASAMgSCE2.png

Migration Scenario 3

Despite IIASA's migration forecasts have a positive net inward migration in Tripura, Tripura's migration rates were lowered to -0.5 in 2014 in the third scenario. This was done to counteract the the lower death rates and higher birth rates in IFs as compared to IIASA. 

Migration Rates After Migration Scenario 3

TripuraMigIIASASCE3.png

Population After Migration Scenario 3

TripuraPopIIASAMgSCE3 5.png

Uttaranchal

Population

IFs' forecast of Uttaranchal's population is greater than IIASA's by an increasing margin. By 2095, IFs' population forecast is about 7% greater than IIASA's

UttaranchalPopIIASA.png

Crude Birth Rate

There is a jump up in 2014 in IFs' CBR forecast when the model initializes. This jump produces a 25% difference between the two models. This difference declines until 2030, then there is an increase until 2045. From 2045 on the difference between the two models decreases until the end of the time horizon. IFs' forecasts of CBRs are greater than IIASA's for all years. 

UttaranchalCBRIIASA.png

Crude Death Rate

The two models start at different points, with the IFs model being about 20% greater than IIASA. By 2055, the two models' forecasts of CDRs converge and stay together until 2085. 

UttaranchalCDRIIASA.png

Migration

UttaranchalMigIIASA.png

Total Fertility Rates

IFs' TFR is about 0.6 greater than IIASA's in 2010. IFs forecasts TFR to decline from 2.8 to 1.9 from 2014 through 2033. IIASA forecasts TFR to decline from 2.1 to 1.82 from 2010 to 2040. After 2040, IIASA's TFR increase to 1.84 by 2090 and then declines to 1.83 in 2095. 

UttaranchalTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

UttaranchalMigIIASASCE.png

Population After Migration Scenario 1

UttaranchalPopIIASAMgSCE.png

Migration Scenario 2 Results

The introduction of net inward migration in the first scenario pushed IFs population further away from IIASA's forecasts. Therefore, migration was removed from the model in the second scenario. 

Migration Rate After Migration Scenario 2

UttaranchalMigIIASASCE2.png

Population After Migration Scenario 2

Uttaranchal's population is closer to IIASA's in the second scenario without migration, but the population is still about 1.5 million greater than in IIASA's model. 

UttaranchalPopIIASAMgSCE2.png

Migration Scenario 3 Results

Uttaranchal's migration rates are the same in third scenario as they were in the second. 

Migration Rates After Migration Scenario 3

UttaranchalMigIIASASCE2.png

Population After Migration Scenario 3

UttaranchalPopIIASAMgSCE3 5.png

Uttar Pradesh

Population

IFs forecast of population in Uttar Pradesh is greater than IIASA's by an increasing margin. By 2095, Uttar Pradesh is forecast to have about 80 million more people in the IFs forecasts. 

UttarPradeshPopIIASA.png

Crude Birth Rates

IFs' forecast of CBRs in Uttar Pradesh is greater than IIASA's for all years by a shifting margin. The difference between the two model's peaks in 2025 with about a 19% difference. By the end of the time horizon in 2095, the two models are almost the same. IIASA's CBRs are forecast to decline steadily. 

UttarPradeshCBRIIASA.png

Crude Death Rates

There is a jump up in CDRs in 2014 in the IFs model when the model initializes. From 2010 through 2040 IFs' forecasts of CDRs are greater than IIASA's by a decreasing margin. From 2040 through the end of the time horizon, the two models are about the same. 

UttarPradeshCDRIIASA.png

Migration

UttarPradeshMigIIASA.png

Total Fertility Rates

IFs' TFR is greater than IIASA by about 0.3 in 2010. Both models steadily decline and reach about 1.9 by 2050 through the end of the time horizon. 

UttarPradeshTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

UttarPradeshMigIIASASCE.png

Population After Migration Scenario 1

UttarPradeshPopIIASAMgSCE.png

Migration Scenario 2 Results

The first migration scenario was not aggressive enough to bring population in IFs down sufficiently. Therefore, the migration rates for Uttar Pradesh were doubled in the second scenario. 

Migration Rates After Migration Scenario 2

There was some model push back on migration rates towards the end of the time horizon. 

UttarPradeshMigIIASASCE2.png

Population After Migration Scenario 2

Population forecasts in the second scenario are almost identical to IIASA's. 

UttarPradeshPopIIASAMgSCE2.png

Migration Scenario 3 Results

Uttar Pradesh's migration rates are unchanged in the third scenario from the second. 

Migration Rates After Migration Scenario 3

UttarPradeshMigIIASASCE3.png

Population After Migration Scenario 3

UttarPradeshPopIIASAMgSCE3 5.png

West Bengal

Population

IFs' population forecast of West Bengal is greater than IIASA's by an increasing margin. By 2095, IFs forecasts about 15 million more people in West Bengal than in the IIASA model. 

WestBengalPopIIASA.png

Crude Birth Rates

IFs forecasts CBRs to be greater than IIASA's forecast by about 2 births per thousand. 

WestBengalCBRIIASA.png

Crude Death Rates

There is a spike in CDRs in the IFs model in 2014, when the model initializes. From 2020 on the IIASA model's CDRs are greater than the IFs model. 

WestBengalCDRIIASA.png

Migration

WestBengalMigIIASA.png

Total Fertility Rates

IFs and IIASA's TFR are about the same for the first few years until 2020. After 2020, IIASA declines below IFs by about 0.2 and then rises. IFs' forecasts of TFR steadily increase from 2010 through the end of time horizon where TFR approaches by does not reach 1.9. IIASA's forecast of TFR reaches 1.72 by 2095.  

WestBengalTFRIIASA.png

Migration Scenario 1 Results

Migration Rate After Migration Scenario 1

WestBengalMigIIASASCE.png

Population After Migration Scenario 1

WestBengalPopIIASAMgSCE.png

Migration Scenario 2 Results

The introduction of migration rates in the model with the first scenario made the population forecasts larger and further from the desired value. Therefore, the migration parameter was removed in the second scenario. 

Migration Rates After Migration Scenario 2

WestBengalMigIIASASCE2 5.png

Population After Migration Scenario 2

Population is too high, with about 10 million more people than IIASA at the end of the time horizon. 

WestBengalPopIIASAMgSCE2 5.png

Migration Scenario 3 Results

Although IIASA forecasts net inward migration, migration rates in West Bengal were lowered to -0.5 in 2014 in the third scenario. This is to offset the lower deaths and higher births in the IFs model versus the IIASA model to bring population inline with IIASA's forecasts.

Migration Rates After Scenario 3

WestBengalMigIIASASCE3.png

Population After Migration Scenario 3

WestBengalPopIIASAMgSCE3 5.png

Economy Module

India's GDP

India's GDP in the provincial model is significantly lower than in the 186 model. This has been a problem since the beginning of this project, but the problem has gotten significantly worse after data updates and the inclusion of new series in spring of 2017.

IndiaGDPSCE2 5.png

Andaman and Nicobar Islands's GDP

AndamanandNicobarIsGDPSCE2.png

Andhra Pradesh's GDP

AndhraPradeshGDPSCE2.png

Arunanchal Pradesh's GDP

ArunanchalPradeshGDPSCE2.png

Assam's GDP

AssamGDPSCE2.png

Bihar's GDP

BiharGDPSCE2.png

Chandigarh's GDP

ChandigarhGDPSCE2 5.png

Chhatisgarh's GDP

ChhatisgarhGDPSCE2.png

Dadra and Nagar Haveli's GDP

DadraandNagarHaveliGDPSCE2.png

Daman and Diu's GDP

DamanandDiuGDPSCE2.png

Delhi's GDP

DelhiGDPSCE2.png

Goa's GDP

GoaGDPSCE2.png

Gujarat's GDP

GujaratGDPSCE2.png

Haryana's GDP

HaryanaGDPSCE2.png

Himachal Pradesh's GDP

HimachalPradeshGDPSCE2.png

Jammu and Kashmir's GDP

JammuKashmirGDPSCE2.png

Jharkhand's GDP

JharkhandGDPSCE2.png

Karnataka's GDP

KarnatakaGDPSCE2.png

Kerala's GDP

KeralaGDPSCE2.png

Lakshadweep's GDP

LakshadweepGDPSCE2.png

Madhya Pradesh's GDP

MadhyaPradeshGDPSCE2.png

Maharashtra's GDP

MaharashtraGDPSCE2.png

Manipur's GDP

ManipurGDPSCE2.png

Meghalaya's GDP 

MeghalayaGDPSCE2.png

Mizoram's GDP

MizoramGDPSCE2.png

Nagaland's GDP

NagalandGDPZCE2.png

Orissa's GDP

OrissaGDPSCE2.png

Pondicherry's GDP

PondicherryGDPSCE2.png

Punjab's GDP

PunjabGDPSCE2.png

Rajasthan's GDP

RajasthanGDPSCE2.png

Sikkim's GDP

SikkimGDPSCE2.png

Tamil Nadu's GDP

TamilNaduGDPSCE2.png

Telangana's GDP

TelanganaGDPSCE2.png

Tripura's GDP

TripuraGDPSCE2.png

Uttaranchal's GDP

UttaranchalGDPSCE2.png

Uttar Pradesh's GDP

UttarPradeshGDPSCE2.png

West Bengal's GDP

WestBengalGDPSCE2.png

India's GDP per Capita

IndiaGDPPCSCE3.png

Andaman and Nicobar Island's GDP per Capita

AndamanandNicobarIsGDPPCSCE3.png

Andhra Pradesh's GDP per Capita

AndhraPradeshGDPPCSCE3.png

Arunanchal Pradesh's GDP per Capita

AruananchalPradeshGDPPCSCE3.png

Assam's GDP per Capita

AssamGDPPCSCE3.png

Bihar's GDP per Capita

BiharGDPPCSCE3.png

Chandigarh's GDP per Capita

This halving of GDP per capit appears dramatic, but Chandigarh's population is quite low and was increased by a significant proportion in the scenario. 

ChandigarhGDPPCSCE3.png

Chhatisgarh's GDP per Capita

ChhatisgarhGDPPCSCE3.png

Dadra and Nagar Haveli's GDP per Capita

DadraandNagarHaveliGDPPCSCE3.png 

Daman and Diu's GDP per Capita

DamanandDiuGDPPCSCE3.png

Delhi's GDP per Capita

DelhiGDPPCSCE3.png

Goa's GDP per Capita

GoaGDPPCSCE3.png

Gujarat's GDP per Capita

GujaratGDPPCSCE3.png

Haryana's GDP per Capita

HaryanaGDPPCSCE3.png

Himachal Pradesh's GDP per Capita

HimachalPradeshGDPPCSCE3.png

Jammu and Kashmir's GDP per Capita

JammuKashmirGDPPCSCE3.png

Jharkhand's GDP per Capita

JharkhandGDPPCSCE3.png

Karnataka's GDP per Capita

KarnatakaGDPPCSCE3.png

Kerala's GDP per Capita

KeralaGDPPCSCE3.png

Lakshadweep's GDP per Capita

LakshadweepGDPPCSCE3.png

Madhya Pradesh's GDP per Capita

MadhyaPradeshGDPPCSCE3.png

Maharashtra's GDP per Capita

MaharashtraGDPPCSCE3.png

Manipur's GDP per Capita

ManipurGDPPCSCE3.png

Meghalaya's GDP per Capita

MeghalayaGDPPCSCE3.png

Mizoram's GDP per Capita

MizoramGDPPCSCE3.png

Nagaland's GDP per Capita

NagalandGDPPCSCE3.png

Orissa's GDP per Capita

OrissaGDPPCSCE3.png

Pondicherry's GDP per Capita

PondicherryGDPPCSCE3.png

Punjab's GDP per Capita

PunjabGDPPCSCE3.png

Rajasthan's GDP per Capita

RajasthanGDPPCSCE3.png

Sikkim's GDP per Capita

SikkimGDPPCSCE3.png

Tamil Nadu's GDP per Capita

TamilNaduGDPPCSCE3.png

Telangana's GDP per Capita

TelanganaGDPPCSCE3.png

Tripura's GDP per Capita

TripuraGDPPCSCE3.png

Uttaranchal's GDP per Capita

UttaranchalGDPPCSCE3.png

Uttar Pradesh's GDP per Capita

UttarPradeshGDPPCSCE3.png

West Bengal's GDP per Capita

WestBengalGDPPCSCE3.png

Value Added

Value added is not the same in the provincial model as it is in the 186 model. The historical data has been carefully vetted and is normalized to the 186 model using ApplyMultAll. The normalization should prevent historical differences between the provincial and 186 models, but the process does not appear to be working properly. 

Value Added in Agriculture

Although the historical data does not match, the forecasts appear to be about the same in all versions. 

IndiaVaddAgSCE3.png

Value Added in Energy

There is not any historical data for this series in either model. The models start at different points and have different behavior throughout the forecasts. The 186 model forecasts a sharp decline from 2014 through 2030, whereas, the provincial model forecasts less change in value added in energy. 

IndiaVaddEnSCE3.png

Value Added in ICT

There is a lack of historical data in ICT. The 186 version of IFs forecasts a steady increase in value added through the end of the time horizon, whereas the provincial model forecasts are relatively flat and decline from 2020 through 2070. 

IndiaVaddICTSCE3.png

Value Added in Manufacturing

The historical data in the two models are close, but not identical. IFs pushes value added in manufacturing up dramatically after model initialization in both the 186 and provincial models. The forecasts are similar with the provincial model declining steadily through the forecasts. 

IndiaVaddManSCE3.png

Value Added in Materials

Value added in materials is forecast to increase as a greater proportion of GDP in the 186 model than in the provincial model over time. 

IndiaMFPMatSCE3 5.png

Value Added in Services

The historical data does not match, but it is close. There is a drop at model initialization in the 186 model that does not occur in the provincial model. The two models are close in both history and forecast. 

IndiaVaddSerSCE3.png

MultiFactor Productivity

The dramatic difference in India's provincial GDP as compared to the 186 model appears to be driven by MFP, and more specifically, physical capital's contribution to annual growth.