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Grain effect and appropriate grain choosing of land-use spatial pattern

机译:谷物效应和适当的土地使用空间模式选择

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Land-use pattern is spatially correlated and scale-dependent, so doing research on land-use pattern based on raster format data requires making clear how to scale the data and which grain domain is suitable for scaling. The major objective of this study was to explore whether the landscape metrics and spatial autocorrelation index-Moran's I can detect the grain effect of land-use spatial pattern. At first three kinds of scaling methods were carried on the original data to get multi-resolutions images. After comparing several statistics, the better results were interpreted to multi-grains land-use maps. Twenty-three landscape metrics and Moran's I were performed on these maps. Only a few indices were chosen to help delimiting the appropriate grain domain in which the majority of grain-sensitive indices were stable and can be extrapolated or interpolated across spatial grains. The results showed that landscape metrics were grain dependent and could be categorized into three types: regular changing type with obvious inflexions-AI, FRAC_AM, LPI, SPLIT, DIVISION, SHDI, SIDI, MSIDI, SHEI, SIEI and MSIEI; regular changing type without obvious inflexions-NP, PD, LSI, PARA_AM, PARA_MN, PLADJ; unpredictable changing or no changing type-TA, PAFBAC, CONTAG, SHAPE_AM, SHAPE_MN and FRAC_MN. Only the first type was suitable to detect the grain effects of the land-use spatial pattern. Then correlation analysis was performed on these metrics and FRAC_AM, DIVISION and SHDI were picked out as representatives to decide the appropriate grain domain cooperated with Moran's I. This study highlights the need for multi-grain analysis in order to adequately characterize and monitor land-use spatial pattern characteristics, and provides insights into the scaling of land-use spatial pattern.
机译:土地使用模式是空间相关和缩放依赖性的,因此对基于栅格格式数据的土地使用模式进行研究需要清楚如何缩放数据以及哪些粒子域适合缩放。本研究的主要目标是探讨景观度量和空间自相关指数 - 莫兰的我可以检测到土地使用空间模式的谷物效果。在原始数据上携带前三种缩放方法以获得多分辨率图像。在比较若干统计数据后,越好的结果被解释为多谷物土地使用地图。在这些地图上进行了二十三个景观度量和莫兰的我。选择只有几个指数来帮助划定漂白的谷物域,其中大多数晶粒敏感索引稳定,并且可以在空间颗粒中推开或插入。结果表明,景观度量依赖于谷物,可以分为三种类型:常规变化类型,具有明显的Inflexions-AI,Frac_AM,LPI,分裂,部门,Shdi,Sidi,Msidi,Shei,Siei和Msiei;没有明显的Inflexions-NP,PD,LSI,Para_am,Para_mn,Pladj;不可预测的更改或不变类型-Ta,pafbac,incag,shape_am,shode_mn和frac_mn。只有第一类型适合检测土地使用空间图案的晶体效应。然后对这些指标和FRAC_AM进行相关分析,派别和SHDI被挑选为代表,以决定与莫兰的合作域的合作域。本研究突出了对多粒分析的需求,以便充分表征和监控土地使用空间图案特征,并对土地使用空间图案的缩放提供了深度。

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