Tu Jun, Xia Zong-Guo
Department of Geography and Anthropology, Kennesaw State University, 1000 Chastain Road, Kennesaw, GA 30144-5591, USA.
Sci Total Environ. 2008 Dec 15;407(1):358-78. doi: 10.1016/j.scitotenv.2008.09.031. Epub 2008 Oct 30.
Traditional regression techniques such as ordinary least squares (OLS) can hide important local variations in the model parameters, and are not able to deal with spatial autocorrelations existing in the variables. A recently developed technique, geographically weighted regression (GWR), is used to examine the relationships between land use and water quality in eastern Massachusetts, USA. GWR models make great improvements of model performance over OLS models, which is proved by F-test and comparisons of model R2 and corrected Akaike Information Criterion (AICc) from both GWR and OLS. GWR models also improve the reliabilities of the relationships by reducing spatial autocorrelations. The application of GWR models finds that the relationships between land use and water quality are not constant over space but show great spatial non-stationarity. GWR models are able to reveal the information previously ignored by OLS models on the local causes of water pollution, and so improve the model ability to explain local situation of water quality. The results of this study suggest that GWR technique has the potential to serve as a useful tool for environmental research and management at watershed, regional, national and even global scales.
传统回归技术,如普通最小二乘法(OLS),可能会掩盖模型参数中重要的局部变化,并且无法处理变量中存在的空间自相关性。最近开发的一种技术,即地理加权回归(GWR),被用于研究美国马萨诸塞州东部土地利用与水质之间的关系。GWR模型在模型性能方面比OLS模型有了很大改进,这通过F检验以及GWR和OLS模型的R2和修正赤池信息准则(AICc)的比较得到了证明。GWR模型还通过减少空间自相关性提高了关系的可靠性。GWR模型的应用发现,土地利用与水质之间的关系在空间上并非恒定不变,而是表现出很大的空间非平稳性。GWR模型能够揭示OLS模型之前忽略的关于水污染局部成因的信息,从而提高模型解释水质局部情况的能力。本研究结果表明,GWR技术有潜力作为一种有用工具,用于流域、区域、国家乃至全球尺度的环境研究与管理。