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华北平原禹城市耕地变化与驱动力分析(英文)
引用本文:陈朝,吕昌河,范兰.华北平原禹城市耕地变化与驱动力分析(英文)[J].地理学报(英文版),2012,22(3):563-573.
作者姓名:陈朝  吕昌河  范兰
作者单位:Institute of Geographic Sciences and Natural Resources Research, CAS;Graduate University of Chinese Academy of Sciences
基金项目:National Natural Science Foundation of China, No.41071063;National Basic Research Program of China(973 Program), No.2012CB955304
摘    要:Taking Yucheng, a typical agricultural county in Shandong Province as a case, this study applied Logistic regression models to spatially identify factors affecting farmland changes. Using two phases of high resolution imageries in 2001 and 2009, the study obtained the land use and farmland change data in 2001-2009. It was found that the farmland was reduced by 5.14% in the period, mainly due to the farmland conversion to forest land and built-up land, although part of forest land and unused land was converted to farmland. The results of Logistic regressions indicated that location, population growth and farmer income were main factors affecting the farmland conversion, while soil types and pro-curvature were main natural factors controlling the distribution of farmland changes. Regional differences and temporal-spatial variables of farmland changes affected fitting capability of the Logistic re-gression models. The ROC fitting test indicated that the Logistic regression models gave a good explanation of the regional land-use changes. Logistic regression analysis is a good tool to identify major factors affecting land use change by quantifying the contribution of each factor.

关 键 词:farmland  changes  driving  factors  Logistic  regression  model

Farmland changes and the driving forces in Yucheng, North China Plain
Zhao Chen,Changhe Lu,Lan Fan.Farmland changes and the driving forces in Yucheng, North China Plain[J].Journal of Geographical Sciences,2012,22(3):563-573.
Authors:Zhao Chen  Changhe Lu  Lan Fan
Institution:1,2 1. Institute of Geographic Sciences and Natural Resources Research, CAS, Beijing 100101, China; 2. Graduate University of Chinese Academy of Sciences, Beijing 100049, China
Abstract:Taking Yucheng, a typical agricultural county in Shandong Province as a case, this study applied Logistic regression models to spatially identify factors affecting farmland changes. Using two phases of high resolution imageries in 2001 and 2009, the study obtained the land use and farmland change data in 2001–2009. It was found that the farmland was reduced by 5.14% in the period, mainly due to the farmland conversion to forest land and built-up land, although part of forest land and unused land was converted to farmland. The results of Logistic regressions indicated that location, population growth and farmer income were main factors affecting the farmland conversion, while soil types and pro-curvature were main natural factors controlling the distribution of farmland changes. Regional differences and temporal-spatial variables of farmland changes affected fitting capability of the Logistic re-gression models. The ROC fitting test indicated that the Logistic regression models gave a good explanation of the regional land-use changes. Logistic regression analysis is a good tool to identify major factors affecting land use change by quantifying the contribution of each factor.
Keywords:farmland changes  driving factors  Logistic regression model
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