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首页> 外文期刊>Environmental Modeling & Assessment >Assessment of Spatiotemporal Varying Relationships Between Rainfall, Land Cover and Surface Water Area Using Geographically Weighted Regression
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Assessment of Spatiotemporal Varying Relationships Between Rainfall, Land Cover and Surface Water Area Using Geographically Weighted Regression

机译:基于地理加权回归的降雨,土地覆盖与地表水面积时空变化关系评估

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Abstract Traditional regression techniques such as ordinary least squares (OLS) are often unable to accurately model spatially varying data and may ignore or hide local variations in model coefficients. A relatively new technique, geographically weighted regression (GWR) has been shown to greatly improve model performance compared to OLS in terms of higher R~2 and lower corrected Akaike information criterion (AIC_c). GWR models have the potential to improve reliabilities of the identified relationships by reducing spatial autocorrelations and by accounting for local variations and spatial non-stationarity between dependent and independent variables. In this study, GWR was used to examine the relationship between land cover, rainfall and surface water habitat in 149 sub-catchments in a predominately agricultural region covering 2.6 million ha in southeast Australia. The application of the GWR models revealed that the relationships between land cover, rainfall and surface water habitat display significant spatial non-stationarity. GWR showed improvements over analogous OLS models in terms of higher R~2 and lower AIC_c- The increased explanatory power of GWR was confirmed by the results of an approximate likelihood ratio test, which showed statistically significant improvements over analogous OLS models. The models suggest that the amount of surface water area in the landscape is related to anthropogenic drainage practices enhancing runoff to facilitate intensive agriculture and increased plantation forestry. However, with some key variables not present in our analysis, the strength of this relationship could not be qualified. GWR techniques have the potential to serve as a useful tool for environmental research and management across a broad range of scales for the investigation of spatially varying relationships.
机译:摘要传统的回归技术,例如普通最小二乘(OLS)通常无法准确地对空间变化的数据进行建模,并且可能会忽略或隐藏模型系数的局部变化。与较高的R〜2和较低的校正的Akaike信息准则(AIC_c)相比,相对较新的技术,即地理加权回归(GWR)已显示出与OLS相比极大地改善了模型性能。 GWR模型有可能通过减少空间自相关并考虑因变量和自变量之间的局部变化和空间不平稳性来提高已确定关系的可靠性。在这项研究中,GWR用于研究澳大利亚东南部一个占地260万公顷的主要农业区域中149个小流域的土地覆盖,降雨量和地表水生境之间的关系。 GWR模型的应用表明,土地覆盖,降雨与地表水生境之间的关系显示出明显的空间非平稳性。 GWR在较高的R〜2和较低的AIC_c方面显示出优于类似OLS模型的改进-近似似然比测试的结果证实了GWR的增强解释力,这表明与类似OLS模型相比,统计上的显着改进。这些模型表明,景观中的地表水量与人为的排水方式有关,可以增加径流以促进集约农业和增加人工林。但是,由于我们分析中不存在某些关键变量,因此无法确定这种关系的强度。 GWR技术有潜力在广泛的尺度上用作环境研究和管理的有用工具,以研究空间变化的关系。

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