Infrastructure preprocessor

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SeriesRoadRuralAccessIndex is obviously a series we need to look into. The World Bank no longer has this exact index however.

Sources

WDI, ITU, WHO, WSS/JMP

Infrastructure series pulled into preprocessor 

Copy Of DataDict
Table Source Last IFs Update UsedInPreprocessorFileName
SeriesLandIrPotential AQU BATCH PULL
2016/06/06 INFRA
SeriesLandIrPotentialReached
AQUASTAT, at http://www.fao.org/nr/water/aquastat/dbase/index.stm
2011/11/16 INFRA
SeriesEnElecAccess%Urban Data extracted from WDI
2016/05/10 INFRA
SeriesEnElecAccess%Rural Data extracted from WDI 2016/05/10
INFRA
SeriesEnElecAccess%National Data extracted from WDI
2016/05/05 INFRA
SeriesEnElecTotalCapacityEIA EIA; US Energy Information Administration;
2016/04/22 INFRA
SeriesLandIrAreaEquipFAO
FAO 2013/12/19 INFRA
SeriesLandTotal FAO BATCH PULL 2015/04/10 INFRA
SeriesLandAgri FAO BATCH PULL
2015/04/10 INFRA
SeriesICTInternetHousehold% ITU
2015/04/14 INFRA
SeriesHouseholds
ITU 2011 2011/08/19 INFRA
SeriesICTBroadbandMobileSubsPer100 ITU 2014 BATCH PULL 2015/02/03 INFRA
SeriesICTComputerHousehold% ITU 2014 BATCH PULL 2015/01/28 INFRA
SeriesICTBroadbandSubscribersPer100ITU ITU 2015 2016/05/18 INFRA
SeriesICTTelephoneCellSubscribersPer100 ITU 2015 2016/05/18 INFRA
SeriesICTTelephoneLinesPer100 ITU 2015 2016/05/18 INFRA
SeriesICTCYBICTDevelopmentIndexITU ITU: Measuring the Information Society 2008, 2010-2014 2015/05/10 INFRA
SeriesRoadRuralAccessIndex
The World Bank Rural Access Index 2010/07/15 INFRA
SeriesPopulation UNPD 2015 (DSR added Taiwan from WEO)
2015/09/18 INFRA
SeriesWasteWaterColConnect% UNSD/ UNEP/ OECD/ EUROSTAT
2011/08/08 INFRA
SeriesWasteWaterTreatConnect% UNSD/ UNEP/ OECD/ EUROSTAT
2011/08/08 INFRA
SeriesEnvSolidFuels UNSTATS and WHO survey data and missing point estimation by DPHE, WHO and UC Berkley researchers 2013/07/03 INFRA
SeriesEnElecConsPerCap WDI BATCH PULL 2015/07/14 INFRA
SeriesEnElecTransLoss% WDI BATCH PULL 2015/07/14 INFRA
SeriesGDP2011PCPPP WDI - calculaed from WDI and other sources; extrapolated based on previous GDP_PCPPP2005 values in IFs; extrapolated based on CIA Factbook; taken directly from CIA Factbook; taken directly from previous GDP_PCPPP2005 values in IFs 2015/09/18 INFRA
SeriesRoadPavedKm WDI 2013; WDI 2011; Calderon (communication to DR) and Canning, David (1998) with updates by Canning from WDI 2006 2013/12/17 INFRA
SeriesRoadsPaved% WDI 2014 May BATCH PULL 2014/06/11 INFRA
SeriesEnConTotalWDI WDI 2014 May BATCH PULL 2014/06/11 INFRA
SeriesRoadsTotalNetwork WDI 2014 May BATCH PULL 2014/06/11 INFRA
SeriesEnProdElec WDI 2014 May BATCH PULL 2014/06/11 INFRA
SeriesEnElecShrEnDem WDI 2014 May BATCH PULL 2014/06/11 INFRA
SeriesIncBelow1D25c%WDI2011 WDI 2015 March WDI Website 2015/03/17 INFRA
SeriesICTExpend%GDP WDI CD 2010 and existing IFs data 2011/05/28 INFRA
SeriesWHO2012WaterPipedFiltered WHO: provided directly by Annette Pruss-Ustun of the WHO 2014/06/24 INFRA
SeriesWHO2012WaterUnImpNoFilter WHO: provided directly by Annette Pruss-Ustun of the WHO 2014/06/25 INFRA
SeriesWHO2012WaterUnImpFiltered WHO: provided directly by Annette Pruss-Ustun of the WHO 2014/06/25 INFRA
SeriesWHO2012WaterPipedNoFilter WHO: provided directly by Annette Pruss-Ustun of the WHO 2014/06/24 INFRA
SeriesWHO2012WaterOthImpFiltered WHO: provided directly by Annette Pruss-Ustun of the WHO 2014/06/25 INFRA
SeriesWHO2012WaterOthImpNoFilter WHO: provided directly by Annette Pruss-Ustun of the WHO 2014/06/25 INFRA
SeriesGovernanceEffect Worldwide_Governance_Indicators, http://info.worldbank.org/governance/wgi/index.asp 2016/04/07 INFRA
SeriesGovernanceRegQual Worldwide Governance Indicators, http://info.worldbank.org/governance/wgi/index.asp 2016/04/07 INFRA
SeriesWSSJMPSanitationTotal%Shared WSS JMP WHO/UNICEF JMP 2015/08/25 INFRA
SeriesWSSJMPWaterTotal%OtherUnimproved WSS JMP WHO/UNICEF JMP 2015/08/25 INFRA
SeriesWSSJMPWaterTotal%OtherImproved WSS JMP WHO/UNICEF JMP 2015/08/25 INFRA
SeriesWSSJMPSanitationTotal%Improved WSS JMP WHO/UNICEF JMP 2015/08/25 INFRA
SeriesWSSJMPSanitationTotal%OpenDefecation WSS JMP WHO/UNICEF JMP 2015/08/25 INFRA
SeriesWSSJMPWaterTotal%Surface WSS JMP WHO/UNICEF JMP 2015/08/25 INFRA
SeriesWSSJMPSanitationTotal%OtherUnimproved WSS JMP WHO/UNICEF JMP 2015/08/25 INFRA
SeriesWSSJMPWaterTotal%Piped WSS JMP WHO/UNICEF JMP 2015/08/25 INFRA

Irrigation

Land equipped for irrigation

  • Area equipped for irrigation (TLANDIRAREAEQUIP) is initialized using SeriesLandIrAreaEquipFAO
    • Source: FAO
    • Definition: Land Area Equipped for Irrigation
    • Last IFs update: 2013/12/19
    • Note: need to switch to AQUASTAT when it gets updated


  • Potentially irrigable land reached (CLandIrPotReached) initialized using SeriesLandIrPotentialReached


  • If CLandIrPotReached is not null, and it is less than the area of land equipped for irrigation (TLANDIRAREAEQUIP)
    • Then set the saturation level (CLandIrAreaSat) as 10% above TLANDIRAREAEQUIP.
  • Otherwise, CLandIrPotReached is the saturation level
  • Note: This is to ensure that the reached potential is not less than land equipped for irrigation, as that would lead to a transient in the first year


  • Potentially irrigable land (CLandIrPot) is initialized using SeriesLandIrPotential
    • Source: AQUASTAT
    • Definition: Irrigation potential (1000 ha)
  • If null then
    • If land equipped for irrigation is null, then
      • Assume potentially irrigable land is 10% of agricultural land area (CLandAgri).
      • Land equipped for irrigation is 33% of potentially irrigable land
      • Saturation level is 29.7% of potentiall irrigable land
        • CLandIRAreaSat(ICount%) = (0.1 + 0.9 * (TLANDIRAREAEQUIP / CLandIrPot)) * CLandIrPot
        • 39.7% because (TLANDIRAREAEQUIP/CLandIrPot) = .33
        • Note: This seems wrong because saturation level (39.7% of potential) is only slightly higher than land equipped (33%)
    • If there is data on land equipped for irrigation then
      • If land equipped for irrigation is greater than 9% of agricultural land and less than 91% of agricultural land then
        • Saturation level (CLandIRAreaSat) is 10% higher than current level of land equipped for irrigation (LANDIRAREAEQUIP)
      • If land equipped for irrigation is less than 9% of agricultural land then
        • Potentially irrigable land is 10% of agricultural land
        • Saturation level is initialized using same equation above: CLandIRAreaSat(ICount%) = (0.1 + 0.9 * (TLANDIRAREAEQUIP / CLandIrPot)) * CLandIrPot
        • Note:This also sets the saturation level low (lower than potentially irrigable, which is 10% of agricultural land)
      • If land equipped for irrigation is greater than 91% of agricultural land then
        • Potentially irrigable land is set as agricultural land
        • Saturation level is again set as: CLandIRAreaSat(ICount%) = (0.1 + 0.9 * (TLANDIRAREAEQUIP / CLandIrPot)) * CLandIrPot
        • Note:There is currently no country where this is the case i.e. this branch of the code is never activated
  • If there is data for potentially irrigable land
    • But there isn't data on land equipped for irrigation
      • Land equipped for irrigation is 33% of potentially irrigable land
    • And there is data on land equipped for irrigation then
      • CLandIRAreaSat(ICount%) = Amin(cLandAgri, AMAX(TLANDIRAREAEQUIP * 1.01, (0.4 + 0.6 * (TLANDIRAREAEQUIP / CLandIrPot)) * CLandIrPot))
      • 'If Potential is less than AreaEuip set the saturation at 1% higher than actual
      • Note:This is not true. If potential is less than equipped, then ((0.4 + 0.6 * (TLANDIRAREAEQUIP / CLandIrPot)) * CLandIrPot) could actually be larger than (LANDIRAREAEQUIP * 1.01)


  • Set the land equipped for irrigation growth rate as
    • CLandIrAreaEquipGR(ICount%) = getAnnualGrowthRate(LandIrAreaEquipTbl, BaseYear, 0.08, -0.08, 3, 5, 15, 10)
    • Note: this calculates a growth rate using historical values. The parameters are (max growth rate, min growth rate, minimum number of years needed to compute growth rate, maximum number of years to compute growth rate, maximum number of years to go backward from BaseYear, maximum number of years to go forward from BaseYear)
  • If unable to calculate (no data) then
    • set as -9999 (which should get adjusted to 0.001)

***INCOMPLETE DOCUMENTATION***



ICT

  • ICT spending (CSpend) is initialized using SeriesICTExpend%GDP
    • Source: WDI CD 2010 and existing IFs data
    • Definition: ICT technology expenditure, % of GDP
    • Last IFs update: 2011/05/28
  • If null, then estimate using: "GDP/Capita (PPP 2000) Versus ICT Expenditures % GDP (" & CStr(BaseYear) & ") Linear"
    • This uses the equation: "GDP/Capita (PPP 2000) Versus ICT Expenditures % GDP (2005) Linear" from TablFunc