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Analytical perspectives: causes of deforestation Sources and causes Agents and motivations Market failures Efficiency markets ownership Natural resource abundance open access Property rights not well defined predatory competition Externalities ecological functions Institutional failures Lack of government institutions High costs of monitoring and fiscalization Environmental functions (services) of tropical forests Global climate stability carbon sequestration greenhouse effect (GWP intact forest nearly balanced) Preservation of biodiversity scientific and aesthetic benefits (global) Regional climate stability (~national) Hydrological balance and watershed protection (local) Recycling of soil nutrients (local) Protection against fire susceptibility (local) Scanty evidences on Brazilian biodiversity Global estimates 13 m (3 to 100) species of which 1.5 m catalogued Brazil share is 10 to 20% or 150 a 300 thousand (megadiversity) 20% of world vegetation 10% of vertebrate animals 15 to 30 thousand catalogued 1% scientifically prospected Amazon Deforestation and Carbon Dioxide Emissions, 1978-2003 Period Annual deforest Km2 CO2 emissions 109 ton Min. Max. (136 ton/ha) (198 ton/ha) % of World Min. Max 1978-88 22.273 0,31 0,45 4,4 6,3 1988-98 17.614 0,24 0,35 3,6 5,3 1998-03 20.133 0,27 0,40 4,5 6,6 Source: Author’s estimates based upon Inpe’s deforestation data Net carbon emissions from land use changes in Brazilian biomes, 1988-94 (MCT 2004) Net emissions Biome Amazonia Cerrado (shrub) Atlantic forest Caatinga (arid) Pantanal (wetlands) Total TgC/yr TgCO2/yr % 116,9 428,6 59 51,5 11,3 188,7 41,3 26 6 10 7,5 197,1 36,5 27,4 722,5 5 4 100 North Region: Secular growth performance, 1840-2000 North Region: GDP per capita (2000 R$) and growth rates,1840-2000 GDPg%p.a. GDP per capita 5 Rubber boom 1840-1912 4 2,7 2000 R$ 3 2,7 2,7 2,7 Rubber Demographic and crisis economic lethargy 1912-1960 2,7 2,7 2,7 2,2 Stabilization 1994 15 Macro crisis and stagnation Regional 1980-2000 10 policies 9,0 4,3 1960-80 4,1 3,8 4,6 3,8 5 2,2 1,1 -0,5 1840 1860 1880 1900 2 2,3 1920 1940 -1,3 1960 1980 0 2000 -5 1,7 1 1,6 1,3 0,5 1,0 0 0,4 0,5 0,6 0,8 1,1 0,6 -13,7 0,8 -10 0,7 -15 % p.a. GDPpcg%p.a. Drivers of deforestation in Brazilian Amazon Macroeconomic factors: growth and exports Accessibility to markets (transport cost) and geoecological conditions (topology and rainfall) are crucial determinants of profitability and deforestation Agricultural research (Embrapa) soybean Profits derived from productive activities -- logging, cattle ranching and commercial crops (soybean) -drives deforestation; Government incentives and subsidies were important in the 70s not anymore; but federal transfers still make a significant contribution to urban income Land price speculation play a temporary role in remote areas with costly access to markets; Amazon deforestation x growth of Brazilian GDP (1988-2005) Def = 775*%GDP + 16.600 km2 Crescimento do PIB no Brasil e desflorestamento da Amazônia, 1978-2005 Desflorestamento Cresc. PIB % 25.000 3,0 20.000 1,0 15.000 -1,0 10.000 -3,0 5.000 Ano agrícola (Sep-Aug) 2005 2004 2003 2002 2001 2000 1999 1998 1997 1996 1995 1994 1993 1992 1991 1990 -5,0 1989 0 Cresc. PIB (% a.a.) 5,0 30.000 1977/88 Desflorestamento (km2/ano) 35.000 Regional differences in real land prices: cleared areas, 1966-2002 Brasil: Regional average real land prices for unplowed fields, 1966-2002 (R$ 2000/ha) North Northeast East South West Brazil 3000 13.901 2500 1500 1000 500 2002 2001 2000 1999 1998 1997 1996 1995 1994 1993 1992 1991 1990 1989 1988 1987 1986 1985 1984 1983 1982 1981 1980 1979 1978 1977 1976 1975 1974 1973 1972 1971 1970 1969 1968 1967 0 1966 2000 R$/ha 2000 Regional differences in real land prices: forest, 1966-2002 Brasil: Regional average real land prices for natural forest area, 1966-2002 (2000 R$/ha) North Northeast East South West Brazil 6000 5000 3000 2000 1000 2002 2001 2000 1999 1998 1997 1996 1995 1994 1993 1992 1991 1990 1989 1988 1987 1986 1985 1984 1983 1982 1981 1980 1979 1978 1977 1976 1975 1974 1973 1972 1971 1970 1969 1968 1967 0 1966 2000 R$/ha 4000 Transport costs ($/ton) to São Paulo, 1968 Transport costs ($/ton) to São Paulo, 1980 Transport costs ($/ton) to São Paulo, 1995 Transport costs ($/ton) to nearest state captital, 1968 Transport costs ($/ton) to nearest state captital, 1980 Transport costs ($/ton) to nearest state captital, 1995 Reduction in transport cost to national markets (São Paulo), 1968-80 Reduction in transport cost to national markets (São Paulo), 1980-95 Reduction in transport cost to local markets (State capital), 1968-80 Reduction in transport cost to local markets (State capital), 1980-95 Costs and benefits: roads (Fuller et al 2002, McVey 2002) Soybean trucked to markets (~ 800 miles) in very poor road conditions 2 x US costs Paving of roads is a hot policy issue (Avança Brasil) Mechanical extrpaolations Laurance et. al 2002 catastrophic results; 35-50% of Amazonia deforested Econometric models Andersen et al. 2002 Pfaff et al. 2005 more reasonable impacts Roads lead to land use intensification (logging and cattle rising) deforestation impact depends on the elasticity of demand in relevant markets (Angelsen 1999): local x national markets The Carajás investment program: the railway corridor (EFC), steel mills (+) and the impact area (AIC) Trends and projections Geometric trend extrapolations of deforestation are untenable. Land prices and land use intensification (short fallow) act as deterrents of deforestation. Systemic effects are important The indirect long run effects of Carajás on deforestation are relatively small. Urban concentration of population increases land prices and reduces fertility rates Policy trade-offs: deforestation x growth favors subsidized credit credit; deforestation x equity favor roads; land prices are crucial Policy issues: impacts of Carajás Demographic transition and urbanization smaller long run rates of population growth Population density higher price of land intensification of land use saturation effects Roads increased commercialization intensification of land use Brazil: R&D expenditures on agriculture, 1973-1993 Brazil: Embrapa expenditure on R&D in agriculture (real terms and as % of Agricultural GDP) %Ag Gdp 0,6% 7 0,5% 6 4 0,3% 3 0,2% 2 0,1% 1 0,0% 0 1974 1975 1976 1977 1978 1979 1980 1981 1982 1983 1984 1985 1986 1987 1988 1989 1990 1991 1992 1993 1993 BR$ 5 0,4% % Agr.GDP Milhões Real Soybean yield in AML and the rest of Brazil, 1975-2004 (ton/ha) Soybean yield in Legal Amazonia and in the rest of Brazil, 1975-2004 (ton/ha) Legal Amazonia Rest of Brazil 3,5 3,0 ton/ha 2,5 2,0 1,5 Fonte: IBGE - PAM 2004 2003 2002 2001 2000 1999 1998 1997 1996 1995 1994 1993 1992 1991 1990 1989 1988 1987 1986 1985 1984 1983 1982 1981 1980 1979 1978 1977 1976 1975 1,0 Spatial dynamics of deforestation in Amazon Squatter doing shifting cultivation and loggers are leading agents of (small scale) deforestation in wild areas Cattle ranchers and large scale deforestation come in the second stage of frontier settlement Commercial crops (soybean) penetrate in the third stage replacing pasture area with relatively small impact on deforestation in consolidated areas Cattle herd in Legal Amazonia and in the rest of Brazil, 1975-2003 (million heads) Rest of Brazil Legal Amazonia 200 180 160 Million heads 140 120 100 80 60 40 20 Fonte: IBGE - PPM 2003 2001 1999 1997 1995 1993 1991 1989 1987 1985 1983 1981 1979 1977 1975 0 Rondônia 1981 1983 Tocantins Maranhão Acre Amazonas Roraima Amapá 2002 Pará 1999 Mato Grosso 1977 Legal Amazonia: Cattle herd by State, 1977-2003 60 Million heads 50 40 30 20 10 Fonte: IBGE - PPM 2003 2001 2000 1998 1997 1996 1995 1994 1993 1992 1991 1990 1989 1988 1987 1986 1985 1984 1982 1980 1979 1978 1976 1975 0 Cattle herd density (heads/km2), 1975 Cattle herd density (heads/km2), 1980 Cattle herd density (heads/km2), 1985 Cattle herd density (heads/km2), 1990 Cattle herd density (heads/km2), 1995 Cattle herd density (heads/km2), 2000 Cattle herd density (heads/km2), 2003 Cost and benefits: cattle raising (Margulis 2002, Faminow 1999, Andersen 2002) Early settlers capitalize gains in land appropriation (land price speculation) Large (capitalized) cattle ranchers appropriate most of the gains of forest conversion: rates of return in cattle ranching are potentially high (circa 10% p.a.) Deforestation + small scale cattle ranching important mechanism of social mobility extensive land use technologies No ecological/precipitation constraint penetrates the rain forest Economic/environmental sustainability of cattle ranching still an open issue Soybean cropped area in Legal Amazonia and in the rest of Brazil, 1980-2004 (million ha) Milllion ha Legal Amazonia Rest of Brazil 22 20 18 16 14 12 10 8 6 4 2 Source: IBGE - PAM 2004 2003 2002 2001 2000 1999 1998 1997 1996 1995 1994 1993 1992 1991 1990 1989 1988 1987 1986 1985 1984 1983 1982 1981 1980 0 Legal Amazonia: Soybean cropped area by states, 1980-2004 Mato Grosso Maranhão Tocantins Pará Rondônia 6 Million ha 5 4 3 2 1 Fonte: IBGE - PAM 2004 2003 2002 2001 2000 1999 1998 1997 1996 1995 1994 1993 1992 1991 1990 1989 1988 1987 1986 1985 1984 1983 1982 1981 1980 0 Soybean: harvested area as % of area, 1975 Soybean: harvested area as % of area, 1980 Soybean: harvested area as % of area, 1985 Soybean: harvested area as % of area, 1990 Soybean: harvested area as % of area, 1995 Soybean: harvested area as % of area, 2000 Soybean: harvested area as % of municipal area, 2004 Cost and benefit: soybean (Ong 2004, Rezende 2004) The role of Embrapa agricultural research was crucial specially for soybean cultivation Large scale mechanized technology leads to income concentration but does not generate frontier proletarians Agro-business activities urban employment Strong precipitation restrictions does not penetrate the dense rain forest Comes in a later stage of settlement mechanization requires no trunks and roots Technology and deforestation (Angelsen and Kaimowitz 2001) Sustainable development requires both higher productivity and forest conservation Technological change (progress) Increase in TFP (total factor productivity) Embodied (in inputs) x disembodied (management) Factor saving x neutral changes Technological change x deforestation Green revolution (Borlaug) hypothesis: fixed demand + higher yield less agricultural area (global level) Subsistence hypothesis: new technology impact on land requirements • Full belly x increased aspirations) • Land degradation hypothesis Development hypothesis: dynamic feed backs are positive (EKC, forest transition, Nerlove) Technology and deforestation Selective logging is important source of finance for initial investment Slash and burn technique is a rational response to the relative scarcity of labor and capital in the early stages of settlement Cattle raising with extensive land use is a rational product/technology choice given the low prices of land and thus becomes the most important source of deforestation Intensification requires adequate infrastructure (roads) and adequate topology Geo-ecological (rainfall) barries to commercial crops (soybean as suplementary feeding) Above-ground carbon cycle in-slash-and-burn agriculture Carbon stock in Vegetation (ton / ha) initial carbon stock 1st burn abandon decomposition + use secondary recovery Time Brazil: fire spots + forest fires, 2003QI (IBGE 2005) Brazil: fire spots + forest fires, 2003QII (IBGE 2005) Brazil: fire spots + forest fires, 2003QIII (IBGE 2005) Brazil: fire spots + forest fires, 2003QIV (IBGE 2005) Policy issues: technological options The impact of land use intensification (both for logging and cattle ranching) on deforestation depends on the importance of local and national markets as destination of output (elasticity of demand) Intensification in remote frontier areas is restricted by lack of transport infrastructure and by geoecological conditions (dense forest, topology, etc.) Intensification will require technical government research and assistance as well as comprehensive campaigns of technology dissemination Policy issues: fiscal and environmental instruments The reduction of federal government transfer ( fiscal responsibility) will indirectly induce lower deforestation through increased taxation and lower disposable income • Taxation of land at municipal level is an important policy issue • Transfer linked to deforestation performance • International compensation Effective regulation of land use (forest reserve) is an important instrument to halt deforestation in critical environmental areas (rainforest, etc.) Government investment in infrastructure (roads) Total economic value (TEV) of the standing forest Use values Existence I. Direct II. Indirect III. Option 1. Sustainable logging and and extraction of other forets products 1. Local climate stability 1. Future uses of I. and II. 2. Tourism and other recreational activities 2. Nutrient recycling 2. Insurance premium for the future use of biodiversity 3. Sicentific and educational services (genetic material) 3. Hydrological balance and protection of aquifers 4. Global climate stability (carbon sequestration ) 1. Preservation of cultural and aesthetic inheritance Empirical problems Dificulties of distinguishing indirect use value, option values and existence values Uncertainties in estimates are significant The order of magnitude of benefits and beneficiaries Rate of discount Benefits of future generations which are more rich and better endowed with technology Rate of discount = pure rate of intertemporal discount + elasticity of the marginal utility of consumption x growth rate of consumption Value used are 2%, 6% and 12% a.a. Total Economic Value (GDP) of deforested areas in Legal Amazonia from 1985-95 in US$ de 1995/ha (Andersen et al 2002) Net present value of Rural GDP Total GDP Total Economic Value Private benefits Local public benefits Global public benefits Discount rates 2% 6% 12% p.a. p.a. p.a. 1..657 553 276 2.406 3635 802 1.418 401 481 1.425 590 475 163 237 74 1620 790 170 Policy issues in the PostKyoto environment Need of international compensation Avoided deforestation Project x national level Non-permanence issue Sovereignity Leakages Externality problems Transfer of technology: intensification will require technical research and assistance as well as massive investments on technology dissemination Policy issues in the PostKyoto environment The reduction of federal government transfer (fiscal responsibility) will indirectly induce lower deforestation through increased taxation of economic activity • Taxation of land at municipal level could play some role • Transfer linked to deforestation performance Effective regulation of land use (forest concession and reserves) is an important instrument to halt deforestation in critical environmental areas (rainforest, biodiversity niches etc.) Government investment in infrastructure (roads) Brazilian geographic regions (Ibge 2005) Table 3. Simulation of Percent Change in Converted Land (ARALT) per Hectare of MCA Land for the IPCC Scenarios A2 for the Timeslices 2050s and 2080s – Model C, Weighted 2050 A2 Region North E1 2080 A2 E2 E1 E2 -13 -11 -27 -26 Northeast 11 12 27 30 Southeast 11 11 15 15 South 24 22 32 29 CentralWest 12 15 2 5 Brazil 12 13 14 15 Table 3. Simulation of Percent Change in Converted Land (ARALT) per Hectare of MCA Land for the IPCC Scenarios B2 for the Timeslices 2050s and 2080s – Model C, Weighted 2050 B2 Region North Northeast Southeast South CentralWest Brazil E1 2080 B2 E2 E1 E2 -21 1 8 18 9 -18 2 9 16 12 -41 9 11 19 -1 -39 11 12 17 3 6 7 5 7 Table 3. Simulation of Percent Change in Converted Land Value per Hectare for the IPCC Scenarios A2 for the Timeslices 2050s and 2080s – Model C, Weighted 2050 A2 Region North Northeast Southeast South CentralWest Brazil E1 2080 A2 E2 E1 E2 -32 6 28 202 84 -31 7 28 201 82 -63 -5 22 602 134 -63 -5 20 592 126 90 89 221 216 Table 3. Simulation of Percent Change in Converted Land Value per Hectare for the IPCC Scenarios B2 for the Timeslices 2050s and 2080s – Model C, Weighted 2050 B2 Region North Northeast Southeast South CentralWest Brazil E1 2080 B2 E2 E1 E2 -29 2 18 134 42 -28 4 18 133 41 -53 1 24 194 56 -52 2 23 192 54 57 56 79 78