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Spatial Autocorrelation of Winter Wheat in Sampling Units and its Effect on Sampling Efficiency

机译:冬小麦抽样单位的空间自相关性及其对抽样效率的影响。

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An effective way to obtain large areas of crop area information is the space sampling method constructed by combining remote sensing data with traditional sampling methods. However, the traditional sampling method requires that the sampling units should satisfy the principle of mutual independence, and does not take into account that regional crops are spatially attributed to spatial autocorrelation due to natural conditions, socioeconomic factors, and other factors. In the past, it has not been reported whether the spatial autocorrelation has influence on the sampling efficiency of agricultural crops and how it affects the extent of impact, thus limiting the further improvement of the spatial sampling efficiency of crop acreage. In response to this problem, this study selected Fengtai County of Anhui Province as a research area. Through the combination of remote sensing data, spatial analysis and traditional sampling methods, three spatial sampling schemes (simple, systematic, and stratified sampling) were designed, 10 sampling unit scale levels, and the spatial autocorrelation of winter wheat area in different sampling units is quantitatively evaluated using the global spatial autocorrelation index (Moran's I); based on different sampling unit scales, three kinds of spatial sampling schemes are used to conduct sample selection, overall extrapolation and error estimation; the overall relative error (r) of the sampling extrapolation, the coefficient of variation (CV) of the total value estimate and the sample size (n) were selected as the evaluation index of the sampling efficiency to quantitatively evaluate the efficiency of the three spatial sampling schemes. The research results show that the winter wheat planting area spatial autocorrelation gradually decreases with the increase of sampling unit size in the sampling unit, but it still shows a strong spatial autocorrelation, The variation range of Z-Score is indicating that the winter wheat in the study area shows significant aggregation characteristics at different sampling unit sizes in the study area. Using 3 sampling methods to extrapolate the total population of cells at different sampling unit sizes, compared with the same sampling, the relative sampling error in the winter wheat area estimation first increases and then decreases with the increase of sampling unit size (decreased spatial autocorrelation), 1) For each method, the sampling error average under the four sampling fractions is conducted, and the average sampling error reaches the lowest point at 2000m
机译:一种获得大面积作物面积信息的有效方法是将遥感数据与传统采样方法相结合而构建的空间采样方法。但是,传统的采样方法要求采样单位应满足相互独立的原则,并且不考虑由于自然条件,社会经济因素和其他因素而将区域性作物在空间上归因于空间自相关。过去,尚未报道空间自相关是否会影响农作物的采样效率以及它如何影响影响程度,从而限制了作物面积空间采样效率的进一步提高。针对这一问题,本研究选择了安徽省丰台县作为研究区域。通过遥感数据,空间分析和传统采样方法相结合,设计了三种空间采样方案(简单,系统和分层采样),划分了10个采样单位尺度水平,不同采样单元的冬小麦面积空间自相关分别为使用全局空间自相关指数(Moran's I)进行定量评估;根据不同的采样单位尺度,采用三种空间采样方案进行样本选择,整体外推和误差估计。选择采样外推的总体相对误差(r),总值估计的变异系数(CV)和样本大小(n)作为采样效率的评估指标,以定量评估三个空间的效率抽样方案。研究结果表明,随采样单元大小的增加,冬小麦种植面积的空间自相关逐渐减小,但仍表现出较强的空间自相关性,Z-Score的变化范围说明研究区域显示了研究区域中不同采样单位大小的显着聚集特征。使用3种采样方法外推不同采样单位大小的细胞总数,与相同采样相比,冬小麦面积估计中的相对采样误差随着采样单位大小的增加而先增大然后减小(空间自相关减小)。 ,1)每种方法均进行四个采样分数下的平均采样误差,并且平均采样误差在2000m处达到最低点

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