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Multi-scale analysis of spatially varying relationships between agricultural landscape patterns and urbanization using geographically weighted regression.

机译:使用地理加权回归对农业景观格局与城市化之间的空间变化关系进行多尺度分析。

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Scientific interpretation of the relationships between agricultural landscape patterns and urbanization is important for ecological planning and management. Ordinary least squares (OLS) regression is the primary statistical method in previous studies. However, this global regression lacks the ability to uncover some local-specific relationships and spatial autocorrelation in model residuals. This study employed geographically weighted regression (GWR) to examine the spatially varying relationships between several urbanization indicators (urbanization intensity index, distance to urban centers and distance to road) and changes in metrics describing agricultural landscape patterns (total area, patch density, perimeter area ratio distribution and aggregation index) at two block scales (5 km and 10 km). Results denoted that GWR was more powerful than OLS in interpreting relationships between agricultural landscape patterns and urbanization, since GWR was characterized by higher adjust R2, lower Akaike Information Criterion values and reduced spatial autocorrelations in model residuals. Character and strength of the relationships identified by GWR varied spatially. In addition, GWR results were scale-dependent and scale effects were particularly significant in three aspects: kernel bandwidth of weight determination, block scale of pattern analysis, and window size of local variance analysis. Homogeneity and heterogeneity in the relationships between agricultural landscape patterns and urbanization were subject to the coupled influences of the three scale effects. We argue that the spatially varying relationships between agricultural landscape patterns and urbanization are not accidental but nearly universal. This study demonstrated that GWR has the potential to provide references for ecological planners and managers to address agricultural landscapes issues at all scales.
机译:科学解释农业景观格局与城市化之间的关系对于生态规划和管理非常重要。普通最小二乘(OLS)回归是先前研究中的主要统计方法。但是,这种全局回归缺乏揭示模型残差中某些局部特定关系和空间自相关的能力。这项研究使用地理加权回归(GWR)来检验几个城市化指标(城市化强度指数,到城市中心的距离和到道路的距离)与描述农业景观格局的度量值变化(总面积,斑块密度,周长面积)之间的空间变化关系。比例分布和聚集指数)在两个街区(5 km和10 km)。结果表明,GWR在解释农业景观格局与城市化之间的关系方面比OLS更强大,因为GWR具有较高的调整R 2 ,较低的Akaike信息准则值和减少的模型残差空间自相关性。 GWR确定的关系的特征和强度在空间上变化。此外,GWR结果与规模有关,并且规模效应在三个方面尤为重要:权重确定的内核带宽,模式分析的块规模以及局部方差分析的窗口大小。农业景观格局与城市化之间关系的同质性和异质性受到三个尺度效应的耦合影响。我们认为,农业景观格局与城市化之间的空间变化关系不是偶然的,而是近乎普遍的。这项研究表明,GWR有潜力为生态规划者和管理者解决各种规模的农业景观问题提供参考。

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