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A geostatistical approach to the change-of-support problem and variable-support data fusion in spatial analysis

机译:在空间分析中采用地统计方法解决支撑变化问题和变量支撑数据融合

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摘要

A key issue to address in synthesizing spatial data with variable-support in spatial analysis and modeling is the change-of-support problem. We present an approach for solving the change-of-support and variable-support data fusion problems. This approach is based on geostatistical inverse modeling that explicitly accounts for differences in spatial support. The inverse model is applied here to produce both the best predictions of a target support and prediction uncertainties, based on one or more measurements, while honoring measurements. Spatial data covering large geographic areas often exhibit spatial nonstationarity and can lead to computational challenge due to the large data size. We developed a local-window geostatistical inverse modeling approach to accommodate these issues of spatial nonstationarity and alleviate computational burden. We conducted experiments using synthetic and real-world raster data. Synthetic data were generated and aggregated to multiple supports and downscaled back to the original support to analyze the accuracy of spatial predictions and the correctness of prediction uncertainties. Similar experiments were conducted for real-world raster data. Real-world data with variable-support were statistically fused to produce single-support predictions and associated uncertainties. The modeling results demonstrate that geostatistical inverse modeling can produce accurate predictions and associated prediction uncertainties. It is shown that the local-window geostatistical inverse modeling approach suggested offers a practical way to solve the well-known change-of-support problem and variable-support data fusion problem in spatial analysis and modeling.
机译:在空间分析和建模中使用可变支持合成空间数据时要解决的一个关键问题是支持变更问题。我们提出一种解决支持变更和可变支持数据融合问题的方法。该方法基于地统计反演模型,该模型明确考虑了空间支持方面的差异。此处应用逆模型,以在尊重测量值的同时,基于一个或多个测量值,生成目标支持的最佳预测值和预测不确定性。覆盖大地理区域的空间数据通常表现出空间不平稳性,并且由于数据量大而可能导致计算难题。我们开发了一种局部窗口地统计逆建模方法,以适应空间非平稳性的这些问题并减轻计算负担。我们使用合成的和真实的栅格数据进行了实验。生成合成数据并将其汇总到多个支持中,然后缩减为原始支持,以分析空间预测的准确性和预测不确定性的正确性。对真实的栅格数据进行了类似的实验。对具有可变支持的真实世界数据进行统计融合,以生成单支持预测和相关的不确定性。建模结果表明,地统计学反演模型可以产生准确的预测和相关的预测不确定性。结果表明,所提出的局部窗口地统计反建模方法为解决空间分析和建模中众所周知的支持变换和变量支持数据融合问题提供了一种实用的方法。

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