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Monitoring and Modeling Land- Use Change in the Pearl River Delta, China, Using Satellite Imagery and Socioeconomic Data Robert K. Kaufmann Harvard University January 29, 2003 http://www.bu.edu/cees/readmoreRK.html
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Modeling and Forecasting Effects of Land-Use Change in China Based on Socioeconomic Drivers Boston University Department of Geography Principal Investigator: Robert K. Kaufmann Co-Investigators:Curtis E. Woodcock Dennis G. Dye Karen C. Seto Chinese Collaborators:Lu Jinfa, Institute of Geography CAS Li Xiaowen, IRSA Wang Tongsan, Economic Forecasting Center Huang Xiuhua, IRSA Liang Youcai, State Information Center Funded by NASA LCLUC-NAG5-6214
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Why Pearl River Delta, Guangdong Province? 1988 - 1996 real GDP growth: 350-550% Major agricultural region and national leader in production of: lychees, bananas, pond fish, sugar cane Special Economic Zones Geographic proximity to Hong Kong Cultural ties to overseas Chinese investors
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China Study Area: Pearl River Delta
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30 December 1995 TM 432 1 2 3
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10 December 1988 TM 432 3 March 1996 TM 432 Land-Use Change Map water natural vegetation agriculture urban natural to urban agriculture to urban 5 km
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10 December 1988 TM 4323 March 1996 TM 432 Land-Use Change Map water natural vegetation agriculture urban water to ag ag to urban natural to urban 5 km
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10 December 1988 TM 432 3 March 1996 TM 432 Land-Use Change Map water natural vegetation agriculture urban natural to urban agriculture to urban 5 km agriculture to water
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Official Estimates vs. Satellite-Derived Estimates of Agricultural Land Seto, K.C., R.K. Kaufmann, and C.E. Woodcock. 2000. Agricultural land conversion in southern China. Nature 406: 121.
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Land Use and Land Use Change: 1988 -1996 Made in conjunction with NASA Goddard Space Flight Center
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350 - 550% 200 - 300% 100 - 190% 1988 - 1996 Real GDP Growth 25 km
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1988 - 1996 Percent Land-Use Change of Counties High: 17 - 23% Medium: 14 - 15% Low: 0 - 9% 25 km
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Modeling Socioeconomic Drivers of LUC Y it = i + i x it + it i = 1,…, N t = 1,…, T Dependent variables: - agriculture urban - natural vegetation/water urban Examples of independent variables: - GDP - Demography (m/f/rural/urban) - Gross output value in industry & agriculture - Wages by sector
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Agriculture to Urban = -0.11 [-5.0] + 1.50 *Relative land productivity [1.97] - 3.97 *Ag labor productivity [-4.58] + 1.24 *Investment in capital construction [2.74] + 0.03 *Average wage [5.98] Natural to Urban = 0.028 [3.13] + 6.53*Relative land productivity [3.55] - 1.39 *Relative labor productivity [-3.37] + 2.85*Investment in capital construction [3.27] Drivers of Land-Use Change Seto, K.C. and R.K. Kaufmann, In press, Modeling the drivers of urban land-use change in the Pearl River Delta, China: Integrating remote sensing with socioeconomic data. Land Economics
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Evaluation of Results *Panel cointegration--variables share the stochastic trend *Hendry forecast test--Regression results stable over space and time *Moran’s I--No spatial autocorrelation *Granger causality--Some evidence that RHS variables “Granger cause” land use change no evidence for opposite effect
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Results Successful mapping of land-use change with high accuracy (93.5%) Amount of developed land has increase by 319% between 1988 and 1996 Developed new method to evaluate change in series of images using time series techniques Identified and quantified major drivers of urbanization
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