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How to study the combined domains of environment, economics, and social behavior in Thailand and Cambodia and Uganda and Tanzania Binford, Michael W.1, Lin Cassidy1, John Felkner2, Robert M. Townsend2, Alan L. Kolata3, Jane Southworth1. 1Department of Geography, University of Florida, 2Department of Economics, 3Department of Anthropology, University of Chicago Human Ecology 101 • Ecology: The study of interactions between organisms and their environment (That’s it!) • Humans are organisms – not special in any way except perhaps cultural learning; new adaptations can be inherited culturally. • Environment includes other humans (intraspecific), non-human biota (interspecific: vertebrates, invertebrates, microbes), non-living environment (water, nutrients, climate, mineral soils, atmosphere). • Microbes play multiple roles: direct (pathogens) and indirect (biogeochemical cycles) Human Ecology 101 All social systems exist within physical and biological environments and interact with them, so studying separated social and ecological systems makes sense only if one wants a limited perspective. Nonetheless, they have been separated by disciplinary tunnel vision for generations. Thinking is changing: integrating multiple disciplines for large questions, problem solving. Authors of this paper: Geographers, economists, anthropologists, landscape ecologists Global Question • 1. 2. 3. 4. 5. Overall theme of these five sessions: Linking Social and Ecological Systems: How do we study the whole social-ecological system? Theory, rationale, necessity Human focus: governance and tenure Human focus: Livelihoods Landscape Infrastructure (including this methodological paper) • THEORY-RICH but DATA POOR – – Data are expensive. We must be careful how they are collected Specific Question • Given that we have some theory (with appropriate models) that leads to falsifiable hypotheses with well-defined variables, how do we sample to measure things in the field so as to assure representative variation from both social and environmental domains? Limits We confine our perspective of human behavior in this case to economic and cultural behaviors. “Environment” will be limited to land cover in space, soil moisture in space and time. Some Fundamentals: Define the Problem • Land cover/vegetation is a physical, visible manifestation of the activities of a socialecological system • Land cover is influenced by land use, which is one of the most obvious and important humanenvironment interactions. • Specific social-ecological system question: How do environmental, economic, and cultural variations interact to drive landscape dynamics; of which land-cover and land-use changes are the visible dependent variables? Decade+ of Work • LUCC Agenda: Linking land use to land cover to explain the changes over time has been the focus of over a decade of research – Turner et al. 1994 Research Agenda. IHDP/IGBP – NAS/NRC. 1998. People and Pixels – Walsh and Crews-Meyer. 2004. Linking People, Place, and Policy: A GIScience Approach • Hasn’t actually done much with environment or with human ecology – mostly social science. The Usual Methods • Using remotely sensed data to describe land cover and its change over time • Measurements of “biophysical” factors thought to be important – DEM, Hydrography, vegetation, soils – Static information • Interviews with land tenure holders to determine causes of particular changes – Households, firms, institutions – Social, economic information • Statistical (incl. econometric) analyses seeking correlations to test hypotheses • How do we do this? Four Linking Methods 1. Linking areas on the landscape to owners or users and to long-term environmental records 2. Recording geographic locations of all data for exploratory data analysis 3. Designating many small but sufficiently large land areas as units of study 4. A priori strategies to assure representative sampling jointly across socio-ecological domains 5. Others? 1. Linking areas on the landscape to owners or users and to long-term environmental records. McCracken S.D., B. Boucek, E.F. Moran. 2004. Deforestation trajectories in a frontier region of the Brazilian Amazon. Ch 10 in Walsh and Crews-Meyer. (eds). Linking People, Place, and Policy: A GIScience Approach. Social Drivers of Land-cover Change Nucleated Villages and Dispersed Lands Crawford, T. 2004. Ch. 5 in Walsh and Crews-Meyer. 2004. Linking People, Place, and Policy: A GIScience Approach Nucleated Villages and Dispersed Lands Rindfuss, R. et al. Ch. 2 in Walsh and Crews-Meyer. 2004. Linking People, Place, and Policy: A GIScience Approach Zones of Influence Rindfuss, R. et al. Ch. 2 in Walsh and Crews-Meyer. 2004. Linking People, Place, and Policy: A GIScience Approach Zones of Influence Rindfuss, R. et al. Ch. 2 in Walsh and Crews-Meyer. 2004. Linking People, Place, and Policy: A GIScience Approach Crawford, T. 2004. Ch. 5 in Walsh and Crews-Meyer. 2004. Linking People, Place, and Policy: A GIScience Approach 2. Recording geographic locations of all data for exploratory data analysis • Common to all data collection: location • GIS data and software forms the integrating storage, manipulation, retrieval, analytical tools, communication of results • Even if information is not inherently spatial, utility is enhanced - future analyses Field Work 3. Designating many small but sufficiently large land areas as units of study • Replication • Controlling for various factors – independent variables • Size of individual areas must capture variation from several domains – Land tenure and other human activities – Biodiversity and land cover – Other factors Kibale Landscapes Major Land Use / Land cover Types in Kibale 1. Forest & forest fragments 2. Papyrus swamps 3. Agricultural fields a. Crop fields b. Fallow fields 4. Pasture & grassland 5. Tea plantations Complex mosaics of land use/cover types Kibale Park & Bigodi Superpixels High Forest Tea Plantation Recent Clearing Pasture - Fallow Riparian Forest – Forest Fragment Papyrus Swamp Kibale and Tarangire to Scale Tarangire Savanna Landscape Tarangire Landscapes 4. a priori strategies to assure representative sampling jointly across the domains • Sampling protocols sharply defined to address research questions. • Statistical analyses defined • Representative of variables testable • Control to eliminate possible biases General Study Area The Original Problem • • • • Income Growth in Thailand over Past 25 Years has been Phenomenal But, There are Regional Disparities in Income Growth Economists ask “Why?” Conventional wisdom suggests an environmental cause for regional income disparities: the soils are less fertile and there precipitation is more variable in the poorer regions. The Questions • Is environmental variability an important underlying cause of income-growth disparity? Rural, agriculture and Risk • How are environmental variables correlated with economic variables? • Specifically, how does environmental variability create risk to agricultural production, and how do farmers and their villages cope with risk? The Hypotheses • Soil Fertility and Precipitation Amount and Timing are Positively Correlated with 25year Income Growth and Other Economic Variables. • “Good” and “bad” years environmentally, i.e. droughts or floods, will also be “good” and “bad” years economically. Testing the Hypotheses • Measure income growth, access to credit and insurance, use of financial institutions, • Measure temporal and spatial variability of environmental factors, including soil fertility, weather patterns, fertilizer use and access to water of useful quality. • Correlate economic and environmental variables to discover relationships. Sampling in Thailand • Four Changwats (States or Provinces) in Thailand selected to represent a broad spectrum of wealth and income growth – Lop Buri: in the center of the “Rice-Bowl of Asia” – Chachoengsao: in the growth corridor east of Bangkok – Buri Ram: Lower wealth on the edge of the northeast – Sisaket: poor province in the northeast The Sampling • Logistic capability of sampling a total of 200 villages (50 per Changwat) with 15 households in each village sampled for economic factors and 10 for environmental factors. • Villages organized in Tambons (Sub-Counties) for which we had economic and environmental data. • So the question for this phase of the project is: How can we be sure to select villages in such a way that the individual and joint variations of environmental and economic factors will be sampled representatively? Definitions of Environmental Variability • Temporal variability is defined by monthly precipitation and streamflow measurements – water availability. • Spatial variability is defined by the distribution of vegetation and soils types, or “Land Cover.” • Spatially explicit soil moisture estimation (Felkner and Binford 2002) Methods • Monthly Precipitation used to create soil moisture budgets for several soils (50, 100, 150 and 200 mm available water capacity). • Satellite Remote Sensing (Landsat Thematic Mapper) used to create maps of spectral land-cover classes Precipitation • Annual total precipitation is not significantly different across the study area, but the timing is. • The Northeast has shorter rainy seasons. Worst Year Soil Moisture Budget for Sisaket, Thailand mm Equivalent Depth 500 400 300 P PET 200 AET D 100 0 1 2 3 4 5 6 7 8 9 10 11 12 Month of the Year Sisaket Tambons CCA Axis 1 and 2 Scores 1 0 -1 0 1 -1 -2 CCA Axis 2 -2 2 3 CCA Axis 1 Sample Sites in Sisaket Sampled Tambons Comparison Between All Sisaket Tambons and Sampled Tambons Economic Variables All Tambons Sampled Tambons Mean Std. Dev. Mean Std. Dev. POP 5428 2710 6511 3134 HH 981 434 1217 510 HH_AGR 916 400 1102 404 SURF3 11 13 12 17 FOREST 12 5 16 6 TWELL 361 219 429 272 DWELL 169 132 193 123 SWELL 195 173 240 246 PIPE2 43 91 39 95 DRINK_W 551 347 738 432 AGR_W_1 0 1 0 1 VILL 10 4 12 3 SURF1 9 4 10 3 SING1 418 391 426 412 SING3 373 382 326 342 SING5 12 47 29 87 SING7 0 1 0 0 SING9 0 0 0 0 SING11 1 4 0 0 SING13 3 5 3 3 SING15 1 4 0 0 SING17 24 40 64 112 RICEY 285 91 283 45 FERTIL2 1983 988 2256 580 ORCH2 0 1 0 0 VEGF2 0 0 0 0 0 0 0 0 FLOWER2 RICEN1 908 386 1072 323 RICEN2 4 21 27 66 RICEN3 3 20 2 5 RICEN4 3 31 0 0 RICENEW FERTIL1 FERTIL31 FERTIL32 FERTIL33 CHEM ORCH1 VEGF1 FLOWER1 RUBBER1 DRYAGR1 DRYAGRS DRYAGRU DRYAGRR PUBF1 PUBF2 SOILQ11 SOILQ12 SOILQ2 SOILQ31 SOILQ32 SOILQ33 SOILQ34 SOILQ35 SOILQ36 SOILQ37 SOILQ38 SOILQ4 SOILQ5 PROPTY5 PROPTY7 All Tambons Sampled Tambons Mean Std. Dev. Mean Std. Dev. 715 388 1031 285 890 378 1062 305 0 0 0 1 4 4 4 3 6 4 8 3 643 384 812 321 3 14 5 15 65 191 159 322 0 2 0 1 3 16 6 20 3 3 4 4 1 1 1 1 3 3 3 4 0 0 0 0 1 2 1 1 258 758 297 590 6 4 8 5 0 1 1 1 1 2 1 2 1 2 1 4 0 1 0 1 1 2 2 2 0 1 1 1 5 4 6 3 1 2 1 3 1 1 1 1 0 1 0 0 654 358 904 303 159 269 285 388 19599 11114 23118 11436 16264 8764 19672 9955 NONE SIGNIFICANTLY DIFFERENT Conclusions • Economic variables already used to select Changwats. • Only two discernable classes of “environment”: Forested uplands and non-forested lowlands. • Therefore, only a simple stratified random sample of Tambons is required to capture both economic and environmental variation. • Satellite remote sensing allowed us to do a rapid, inexpensive, and synoptic assessment of “environment” without knowing a priori very much about the distribution of land cover in widespread areas of Thailand, and provided a defensible sampling design for capturing the individual and joint variation between environmental and economic variables. Field and Soil Sampling – Linked to Household/Village/ Tambon General Soil Fertility Results Sampling in Cambodia Four Provinces in Cambodia also selected to represent a broad spectrum of wealth and income growth. All with access to Tonle Sap. Battambang: wealthy for rich agriculture, commerce. Thailand Laos Siem Reap Battambang Kampong Thom: wealthy – commerce, agriculture. Phnom Penh Siem Reab: Somewhat poor, but location of Angkor Wat temple – tourism major industry. Otdar Meanchey: Very poor, last redoubt of Pol Pot. Created in late ’90’s because of difficulty of administration due to remnants of civil war. Vietnam Major Cities 0 25 50 100 Kilometers 150 200 The Best Method? • Depends on one’s research question, theory, models, variables. • Scale of landscape, scale of human activities, scale of biophysical processes and patterns • Invent your own, but the primary objective is to assure representative, unbiased sampling. Thanks To: • National Science Foundation, SBR-9515306, and NICHD (National Institute of Child Health and Human Development) 5-RO1-HD27638-06 (R.M. Townsend, PI) • National Science Foundation, BCS-0433787 (Alan L. Kolata, Michael W. Binford, and Robert Townsend, PIs) • National Oceanic and Atmospheric Administration, Office of Global Programs NA56GP0360 (M.W. Binford, PI)