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首页> 外文期刊>Journal of Hydrology >An instrument variable based algorithm for estimating cross-correlated hydrological remote sensing errors
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An instrument variable based algorithm for estimating cross-correlated hydrological remote sensing errors

机译:一种基于仪器变量估计跨相关水文遥感误差的算法

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Optimally using multi-source remote-sensing (RS) and/or reanalyzed hydrological products requires knowledge of each product's accuracy and inter-product error cross-correlations. Quadruple collocation (QC) analysis can potentially solve for this error information without the reliance of high-quality ground references. However, QC requires at least three independent products for a variable of interest. At the global scale, obtaining three independent products is often a challenge. To address this issue, this study proposes an extended double instrumental variable algorithm (denoted as END), which can accurately estimate product error and inter-product error cross-correlations using only two independent products - a requirement easier to meet in practice. Synthetic numerical experiments demonstrate that END is robust and unbiased - provided product error auto-correlations are not strongly contrasting. The performance of EIVD is further tested via a (real-data) global precipitation error analysis using traditional QC results as a validation reference. The global consistency (i.e., spatial correlation) of QC- and END-estimated product-truth correlation is above 0.86 [-] for all precipitation products being considered, and the relative mean difference of QC- and END-based correlations is, on average, less than 5%. The spatial consistency of QC- and EIVD-based inter-product error cross correlation is 0.47 [-] with a relative bias of 8%. A quantitative analysis demonstrates that regions with inconsistent EIVD and QC results are likely attributable to the violation of the QC error independency assumptions. Given the robustness of END in fully parameterizing hydrological product error information, it is expected to improve the accuracy and efficiency of multi-source hydrological data merging and data assimilation.
机译:最佳使用多源遥感(RS)和/或重新分析水文产品需要了解每个产品的准确性和产品内部误差互相关。在不依赖高质量的地址的情况下,可以解决此错误信息的四倍搭配(QC)分析。然而,QC需要至少三个独立的产品来实现感兴趣的变量。在全球范围内,获得三种独立产品往往是一个挑战。为了解决这个问题,本研究提出了一种扩展的双重器械变量算法(表示为结束),其可以仅使用两个独立产品准确估计产品误差和产品互相误差互相关 - 在实践中更容易满足的要求。合成数值实验表明,结束是稳健的,并且无偏见 - 提供的产品错误自动相关性并不强烈对比。使用传统的QC结果作为验证参考,通过(实际数据)全局降水误差分析进一步测试EIVD的性能。对于所考虑的所有降水产物,QC和最终估计的产品 - 真理相关的全局一致性(即,空间相关性)高于0.86 [ - ],QC和终点相关的相对平均差异是平均的,小于5%。基于QC和基于EIVD的内部误差交叉相关的空间一致性为0.47 [ - ],相对偏差为8%。定量分析表明,具有不一致的EIVD和QC结果的区域可能归因于违反QC错误独立性假设。鉴于完全参数化水文产品误差信息的稳健性,预计将提高多源水文数据合并和数据同化的准确性和效率。

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