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A Spatial Conditioned Latin Hypercube Sampling Method for Mapping Using Ancillary Data

机译:使用辅助数据进行映射的空间条件拉丁超立方体采样方法

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摘要

For obtaining maps of good precision by the spatial inference method, the distribution of sampling sites in geographical and feature space is very important. For a regional variable with trends, the predicting error comes from trend estimation, variogram estimation and spatial interpolation. Based on the cLHS (conditioned Latin hypercube Sampling) method, a sampling method called scLHS (spatial cLHS) considering all these three aspects with the help of ancillary data is proposed in this article. Its advantage lies in simultaneously improving trend estimation, variogram estimation and spatial interpolation. MODIS data and simulated data were used as sampling fields to draw sample sets using scLHS, cLHS, cLHS with x and y coordinates as covariates, simple random and spatial even sampling methods, and the distribution and prediction errors of sample sets from different methods were evaluated. The results showed that scLHS performed well in balancing spreading in geographic and feature space, and can generate points pairs with small distances, and the sample sets drawn by scLHS produced smaller mapping error, especially when there were trends in the target variable.
机译:为了通过空间推断方法获得精度高的地图,采样位置在地理和特征空间中的分布非常重要。对于具有趋势的区域变量,预测误差来自趋势估计,变异函数估计和空间插值。本文基于cLHS(条件拉丁超立方体采样)方法,提出了一种在辅助数据的帮助下考虑所有这三个方面的称为scLHS(空间cLHS)的采样方法。它的优势在于同时改进趋势估计,变异函数估计和空间插值。使用MODIS数据和模拟数据作为采样字段,以scLHS,cLHS,xL和y坐标为协变量的cLHS,简单的随机和空间均匀采样方法绘制样本集,并评估了不同方法样本集的分布和预测误差。结果表明,scLHS在平衡地理和特征空间中的扩展方面表现良好,并且可以生成距离较小的点对,并且通过scLHS绘制的样本集产生的映射误差较小,尤其是在目标变量具有趋势时。

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