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INSTITUTIONALISATION OF

INSTITUTIONALISATION OF NATURAL RESOURCES DATA MANAGEMENT SYSTEM (NRDMS) IN THE DISTRICT DECISION MAKING SYSTEM OF BANKURA. -P.K.Mishra -B.Barat. Govt. of West Bengal. DATABASE AVAILABLE AT NRDMS, BANKURA. Source. Type. DEMOGRAPHIC. CENSUS-2001. TOPOGRAPHY.

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INSTITUTIONALISATION OF

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  1. INSTITUTIONALISATION OF NATURAL RESOURCES DATA MANAGEMENT SYSTEM (NRDMS) IN THE DISTRICT DECISION MAKING SYSTEM OF BANKURA -P.K.Mishra -B.Barat Govt. of West Bengal

  2. DATABASE AVAILABLE AT NRDMS, BANKURA Source Type • DEMOGRAPHIC • CENSUS-2001 • TOPOGRAPHY • S.O.I. TOPOSHEET • IRS 1C/1D SATELLITE • IMAGE (1999) • LANDUSE • SOIL • (SERIES ASSOCIATION) • NBSSLUP, NAGPUR • PHYSIOGRAPHY • NBSSLUP, NAGPUR • GEOLOGY • DIRECTORATE OF • MINES & MINERALS

  3. DATABASE AVAILABLE AT NRDMS, BANKURA (Continued) Source Type • MINERAL RESOURCE • DIRECTORATE OF • MINES & MINERALS • IRS 1C/1D SATELLITE • IMAGE (1999) • WASTE LAND • FOREST LAND • IRS 1C/1D SATELLITE • IMAGE (1999) • SWID, BANKURA • HYDROLOGY • IRS 1C/1D SATELLITE • IMAGE (1999) • SURFACE WATER • S.O.I. TOPOSHEET • SURFACE WATER BODIES

  4. NATURE OF DATABASE • Is the database latest ? • Institutional mechanism to update data (field surveys) • Real time satellite data may help • Data which does not change frequently Example: Forest Cover, Habitation, Waste Land • Type of data & analysis tools • Data: a. Spatial b. Non-spatial • Tools: a. GRAM++ b. Arc-View c. Arc-Info

  5. LAND USE OF BARJORA BLOCK WITH SETTLEMENT

  6. APPLICATIONS PRADHAN MANTRI GRAM SADAK YOJANA (PMGSY) (CORE NET WORK) Objective : To optimise the road network while serving maximum population • Input data and its source: • Road Net Work (field Survey) • Population data (Census-2001) • Mouza Boundaries (Census-2001) • Drainage System (S.O.I. Topo-sheet) • Cross Drainage (field Survey) • Height Contour (SOI Topo-sheet) • Amenities like Market, Health Centres, Bank etc. (field Survey)

  7. APPLICATIONS (Continued) PRADHAN MANTRI GRAM SADAK YOJANA (PMGSY) (CORE NET WORK) • Time Frame: • Actual data entry and • processing : 1 Month • 2. Data Collection : 5 months Output: Road net work for 22 blocks along with utilities • Decision support available: • Optimal selection of roads • Identification of habitation unconnected by roads and its prioritization • Identification of utilities unconnected by road

  8. PRADHAN MANTRI GRAM SADAK YOJANA (PMGSY) CORE NET WORK, MEJHIA BLOCK

  9. APPLICATIONS (Continued) ADMINISTRATION OF HEALTH SUB-CENTRES Objective : To achieve more effective health care services & its delivery in an equitable manner • Input data and its source: • Mouza Boundaries (Census-2001) • Population data (Census-2001) • Health Sub-Centres (field survey) • Road Net Work (field survey) • Habitation (S.O.I. Topo-sheet) • Drainage System (S.O.I. Topo-sheet) • Time Frame: • Actual data entry and • processing : 2 Months • 2. Data Collection : 2 months

  10. APPLICATIONS (Continued) ADMINISTRATION OF HEALTH SUB-CENTRES Output: To optimally reallocate command area of existing Sub centres’ within Gram Panchayat Boundary considering size of population, distance and road connectivity • Decision support available: • Outreach centres are identified and action plan prepared accordingly • 3. To know the present status of different health programme and to prepare action plan on priority basis

  11. SUB CENTRES COMMAND AREA OF ANCHURI B.P.H.C. (BEFORE RE-ALLOCATION)

  12. SUB CENTRES COMMAND AREA OF ANCHURI B.P.H.C. (AFTER RE-ALLOCATION)

  13. SUB CENTRES COMMAND AREA OF ANCHURI B.P.H.C. (1.6 K.M. RADIAL DISTANCE) UNCOVERED SETTLEMENT

  14. SUB CENTRE (HAVING OUTREACH VILLAGES WITH POPULATION MORE THAN 1000)

  15. APPLICATIONS (Continued) ADMINISTRATION OF ANGANWADI CENTRES Objective : Optimal identification of location for setting up of a new anganwadi centre • Input data and its source: • Mouza Boundaries (Census-2001) • Population data (Census-2001) • Anganwadi Centres (field survey) • Road Net Work (field survey) • Habitation (S.O.I. Toposheet) • Drainage System (S.O.I. Toposheet) • ITDP Mouzas (BCW Department) • Time Frame: • Actual data entry and • processing : 2 Months • 2. Data Collection : 2 months

  16. APPLICATIONS (Continued) ADMINISTRATION OF ANGANWADI CENTRES Output: Command area with respect to existing Anganwadi Centres of Gangajalghati Project. • Decision support available: • Determine unserved area which will be taken in next plan on prioratization • The villages far away from the Anganwadi centres could be identified for take home ration. • 3. The materials supplied to the AWCs could be distributed in a planned way incurring less expenditure.

  17. ICDS CENTRES, GANGAJALGHATI BLOCK

  18. ICDS CENTRES COMMAND AREA OF GANGAJALGHATI ICDS PROJECT AREA (1 K.M. RADIAL DISTANCE) UNCOVERED SETTLEMENT BALIGUMA

  19. APPLICATIONS (Continued) MICROWATERSHED FOR RASHTRIYA SAM VIKAS YOJANA (RSVY) Objective : To select appropriate microwatershed under RSVY • Input data and its source: • Mouza Boundaries (Census-2001) • Population data (Census-2001) • Microwatershed Boundary developed by IIT, Delhi • Road Net Work (field survey) • Habitation (S.O.I. Toposheet) • Drainage System (S.O.I. Toposheet) • Backward Mouzas (P&RD Deptt) • Land use (IRS-1C 1999 Satellite Image) • Time Frame: • Actual data entry and • processing : 3 Months • 2. Data Collection : 3 months

  20. APPLICATIONS (Continued) MICROWATERSHED FOR RASHTRIYA SAM VIKAS YOJANA (RSVY) Output: Delineation of micro-watershed, listing of mouza and identification of plots for land treatment • Decision support available: • Determination of area of micro-watershed treatment • 2. Identification of ponds for re-excavation and sites for check dams.

  21. AN EXAMPLE OF RSVY MICROWATERSHED SELECTION (AT SALTORA BLOCK)

  22. LANDUSE OF SELECTED PORTION OF SALTORA BLOCK BIHARINATH HILL

  23. SELECTED MINOR IRRIGATION SCHEMES TAKEN UNDER RSVY IN SALTORA BLOCK

  24. LANDUSE VIS-A-VIS CATHCMENT & COMMAND AREA OF SELECTED PORTION OF SALTORA

  25. APPLICATIONS (Continued) PONDS TO BE TAKEN UP UNDER FOOD FOR WORK PROGRAMME (FFWP) Objective : Selection of Ponds under FFWP • Input data and its source: • Mouza Boundaries (Census-2001) • Population data (Census-2001) • Water Bodies (IRS-1C 1999 Satellite Image) • Road Net Work (field survey) • Habitation (S.O.I. Toposheet) • Drainage System (S.O.I. Toposheet) • Backward Mouzas (P&RD Deptt) • Canal (S.O.I. Toposheet)

  26. APPLICATIONS (Continued) PONDS FOR FOOD FOR WORK PROGRAMME Output: Identifying ponds perennial in nature and adjacent to canals • Time Frame: • Actual data entry and • processing : 2 Months • 2. Data Collection : 3 months • Decision support available: • Area of pond planned for excavation and its cost estimation

  27. CANAL NET-WORK WITH PONDS(PART OF SONAMUKHI BLOCK UNDER BANKURA DISTRICT)

  28. APPLICATIONS (Continued) DELINEATION OF ASSEMBLY CONSTITUENCIES Objective : Optimal delineation of Assembly Constituencies • Input data and its source: • Mouza Boundaries (Census-2001) • Population data (Census-2001) • Road Net Work (field survey) • Habitation (S.O.I. Toposheet) • Drainage System (S.O.I. Toposheet) • Time Frame: • Actual data entry and • processing : 1 Month • 2. Data Collection : 1 Month

  29. FINAL ASSEMBLY CONSTITUENCY BOUNDARIES

  30. DECISISON MAKERS (BANKURA) • Office of the District Magistrate & Subordinate offices • Three tiers Structure of Panchayat Raj Institutions • Municipal bodies • Line Departments

  31. LIMITATIONS IN THE PRESENT DECISION MAKING PROCESS • Incorrect resource allocation • Slower decisions (time and cost overrun) • Non optimal solutions • Decisions not on objective parameters • High cost of decision making

  32. THE NEED FOR INSTITUTIONALIZATION • Making it individual neutral • Better and faster decisions • Decision based on objective parameters • (situations: flood, drought) • Outsourcing - not a solution • Sustainability

  33. HOW TO ISTITUTIONALIZE ? • A centralized place where it can be shared • Patient implementation (building up of knowledge base takes time) • 73rd & 74th amendment – decision on transferred subjects by the Zilla Panchayat and Municipal bodies (linking up the committees with NRDMS database) • Lower tiers or panchayats need not be taken up • (higher cost without adequate benefit) • Decisions at centralized level; data collection and implementation at local level • Identification of business process • (on a case to case basis) ; input – output matrix identification and implementation

  34. COST BENEFIT • Quantification of benefits in monetary terms – not always possible • Primarily a capacity building effort • Cost of a model unit: • a. Hardware : 2,62,000 • b. Software : 3,10,000 • c. Manpower : 2,88,000 • d. Site preparation : 50,000 • Total cost for (say) West Bengal: 1,72,90,000

  35. CONCLUSION • A vision needed to tap its potential • Updation of data • Technology • Integration with Panchayat decision making system • Capacity building (a slow process) • Local wisdom to be integrated

  36. THE END

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