数据融合在谢南多厄河水质不确定性和敏感性分析中的应用

M. Mbuh
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引用次数: 0

摘要

本文旨在展示使用数据融合技术将水质观测与建模相结合的可行性,以有效监测谢南多厄河(SR)的营养物质。它探讨了假设;“通过数据融合,可以提高水质建模和现场观测的敏感性和不确定性,从而更好地预测水质。”它使用水质模拟程序对水质进行建模,并使用卡尔曼滤波(KF)将结果与现场观测相结合。结果表明,在分析的微小变化导致后续预报差异较大的流域,利用更多的观测资料可以改进分析。分析还表明,虽然数据融合是减少不确定性的宝贵工具,但时间尺度的改进也将增强结果并减少不确定性。为了研究野外观测的变化如何影响最终的KF分析,融合和实验室分析交叉验证显示结果有一些改善,具有很高的决定系数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Data Fusion for Uncertainty and Sensitivity Analysis of Water Quality in the Shenandoah River
This article is aimed at demonstrating the feasibility of combining water quality observations with modeling using data fusion techniques for efficient nutrients monitoring in the Shenandoah River (SR). It explores the hypothesis; “Sensitivity and uncertainty from water quality modeling and field observation can be improved through data fusion for a better prediction of water quality.” It models water quality using water quality simulation programs and combines the results with field observation, using a Kalman filter (KF). The results show that the analysis can be improved by using more observations in watersheds where minor variations to the analysis result in large differences in the subsequent forecast. Analyses also show that while data fusion was an invaluable tool to reduce uncertainty, an improvement in the temporal scales would also enhance results and reduce uncertainty. To examine how changes in the field observation affects the final KF analysis, the fusion and lab analysis cross-validation showed some improvement in the results with a very high coefficient of determination.
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