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Mapping by spatial predictors exploiting remotely sensed and ground data: a comparative design-based perspective

机译:空间预测器利用遥感和地面数据进行制图:基于比较设计的观点

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摘要

This study was designed to compare the performance – in terms of bias and accuracy – of four different parametric,semiparametric and nonparametric methods in spatially predicting a forest response variable using auxiliary information from remote sensing. The comparison was carried out in simulated and real populations where the value ofresponse variable was known for each pixel of the study region. Sampling was simulated through a tessellation stratified design. Universal kriging and cokriging were considered among parametric methods based on the spatial autocorrelation of the forest response variable. Locallyweighted regression and k-nearest neighbor predictors wereconsidered among semiparametric and nonparametricmethods based on the information from neighboring sites in the auxiliary variable space. The study was performed from a design-based perspective, taking the populations as fixed and replicating the sampling procedurewith 1000Monte Carlo simulation runs. On the basis of the empirical values of relative bias and relative root mean squared error it was concluded that universal kriging and cokriging were more suitable in the presence of strong spatial autocorrelation of the forest variable, while locally weightedregression and k-nearest neighbors were more suitable when the auxiliary variables were well correlated with the response variable. Results of the study advise that attention should be paid when mapping forest variablescharacterized by highly heterogeneous structures. The guidelines of this study can be adopted even for mapping environmental attributes beside forestry.
机译:本研究旨在比较四种不同参数,半参数和非参数方法在利用遥感辅助信息在空间上预测森林响应变量方面的性能(在偏差和准确性方面)。比较是在模拟人群和真实人群中进行的,其中对于研究区域的每个像素都知道响应变量的值。抽样是通过棋盘格分层设计进行模拟的。在基于森林响应变量的空间自相关的参数方法中,考虑了通用克里金法和协同克里金法。基于辅助变量空间中邻近站点的信息,在半参数和非参数方法中考虑了局部加权回归和k最近邻预测因子。该研究是从基于设计的角度进行的,以总体为固定,并使用1000Monte Carlo模拟运行来复制采样过程。根据相对偏差和相对均方根误差的经验值,得出结论:在森林变量具有很强的空间自相关性的情况下,通用克里格法和共克里格法更合适,而局部加权回归和k近邻法则更合适。当辅助变量与响应变量很好地相关时。研究结果表明,在绘制由高度异质结构表征的森林变量时应注意。该研究的指导原则甚至可以用于在林业旁边绘制环境属性。

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