Bayesian Rating Curve Inference as a Streamflow Data Quality Assessment Tool

被引:0
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作者
Asgeir Petersen-Øverleir
André Soot
Trond Reitan
机构
[1] Norwegian Water Resources and Energy Directorate,Hydrology Department
[2] University of Oslo,Department of Mathematics
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关键词
Gauging station; Discharge measurement; Rating curve; Streamflow time-series; Quality assurance; Bayesian statistics;
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学科分类号
摘要
A streamflow time-series is normally obtained by transforming a time-series of recorded stage to discharge using an estimated rating curve. The accuracy of this streamflow time-series depends on the characteristics of the available stage-discharge measurements used to fit the rating curve. The Norwegian Water Resources and Energy Directorate (NVE) has developed a method based on rating curve uncertainty for performing objective quality assessment of streamflow time-series. The method, which is based on a Bayesian statistical framework, uses the available stage-discharge measurements and the corresponding stage time-series to derive statistics utilised for a quality assurance of the streamflow time-series. Nearly one thousand streamflow time-series periods have been classified using the method. This paper presents the results.
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页码:1835 / 1842
页数:7
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