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Abstract: . . . Geocarto International 8(4):45-59. Conrado, S. Heruela, Building capacity in wood and biomass energy planning in developing countries in Asia. FAO, 1993. Forest resources assessment 1990 tropical countries. FAO Forestry Paper 112, Rome Italy. Oregon Department of Energy, Biomass resource assessment, Biomass Clearing House, http://www.efe.or.th. Sukit, Angsuwan, Energy conservation and renewable energy division, National Energy Policy Office (NEPO), Promotion of energy efficiency and renewable energy in Thailand. World-wide Information System for Renewable Energy (WIRE), http://wire0.ises.org. Western . . . . . . House, http://www.efe.or.th. Sukit, Angsuwan, Energy conservation and renewable energy division, National Energy Policy Office (NEPO), Promotion of energy efficiency and renewable energy in Thailand. World-wide Information System for Renewable Energy (WIRE), http://wire0.ises.org. Western Renewable Energy Generation Information system (WREGIS), http://www.westgov.org/wieb/wregis/. -7- . . . . . . http://www.fao.org/docrep/W4095E/w4095e09.htm#TopOfPage. Brown, S., L. R. Iverson, A. Prasad, and D. Liu, 1993. Geographic distribution of carbon in biomass and soils of tropical Asian forests. Geocarto International 8(4):45-59. Conrado, S. Heruela, Building capacity in wood and biomass energy planning in developing countries in Asia. FAO, 1993. Forest resources assessment 1990 tropical countries. FAO Forestry Paper 112, Rome Italy. Oregon Department of Energy, Biomass resource assessment, Biomass Clearing House, http://www.efe.or.th. Sukit, Angsuwan, Energy conservation and renewable energy division, National Energy Policy Office (NEPO), Promotion . . . . . . an index of PBD based on climatic, edaphic, and topographic factors. The PBD map was masked with a forest map, produced by reclassifying all the forest classes of the FRA 1990 vegetation maps into one forest class. The potential biomass density index (PBI) was calculated according to a simple model, based on overlaying the following GIS data layers: PBI = climatic index + precipitation + soil (texture, depth, slope) + topography Each of these factors was spatially represented by a numerical scale whose values were ranked according to how the particular factor affected forest biomass (details of . . . . . . are not many connections in terms of waste management and knowledge transfer. Thus, neither side can utilise biomass waste effectively. Fortunately, Internet technology development, as well as policy support for capacity-building in especially remote areas, is now creating the opportunity to develop integrated information systems and providing more accessibility to biomass resources. Thus, development of the database under governmental and local agencies along with strengthening expertise and capability in database planning and development, including data collection, analysis, distribution and quality . . . --3000,5,300,3215,18305
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