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Spatially varying relationships between land-cover change and driving factors at multiple sampling scales

机译:多种采样尺度下土地覆被变化与驱动因子之间的空间变化关系

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Modeling the relationships between environment, human activity, and natural conditions is very important for understanding human-environment interactions. This study aims at examining how these relationships vary over spatial sampling scales and investigating the spatially varying relationships between land-cover changes and driving factors, as well as the variations in the relationships at different sampling scales in the Tibetan Autonomous Prefecture of Qinghai Province, P.R. China. Regular sampling methods are used first to generate eight sets of data points at different scales, and then the values for land-cover changes and the factors are extracted for these data points. Geographically weighted regression (GWR) model is applied to analyze the relationships between land-cover changes and the factors at different sampling scales. The results indicate that the influences of the factors (e.g. the signs, significances, and values of coefficients) change greatly over different sampling scales; similarly, for different types of land-cover changes, the contributions of the factors also vary. Generally, roads, rivers, and lakes contribute greatly to land-cover changes, while villages, temples, and elevations contribute less. A possible reason is that the densities of roads, rivers, and lakes is much greater than those of villages and temples, and the populations in temples and villages are too small to have much effect on land-cover changes. The results demonstrate that the sampling scales have an important influence on the relationships between land-cover change and the factors.
机译:对环境,人类活动和自然条件之间的关系进行建模对于理解人与环境的相互作用非常重要。这项研究旨在研究这些关系在空间采样尺度上的变化,并调查青藏高原地区的土地覆盖变化与驱动因素之间的空间变化关系,以及不同采样尺度下的关系变化。中国。首先使用常规采样方法来生成八组不同规模的数据点,然后针对这些数据点提取土地覆盖变化的值和因子。应用地理加权回归(GWR)模型分析了不同采样尺度下土地覆盖变化与因子之间的关系。结果表明,在不同的抽样范围内,因素的影响(例如符号,显着性和系数值)有很大变化;同样,对于不同类型的土地覆盖变化,因素的贡献也不同。通常,道路,河流和湖泊对土地覆被变化的贡献很大,而村庄,庙宇和高地的贡献较小。可能的原因是,道路,河流和湖泊的密度比村庄和庙宇的密度高得多,并且寺庙和村庄的人口太少,无法对土地覆被的变化产生太大影响。结果表明,抽样规模对土地覆被变化与影响因子之间的关系具有重要影响。

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