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Multimodel combination techniques for analysis of hydrological simulations: Application to Distributed Model Intercomparison Project results

机译:用于水文模拟分析的多模型组合技术:在分布式模型比较项目结果中的应用

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This paper examines several multimodel combination techniques that are used for streamflow forecasting: the simple model average (SMA), the multimodel superensemble (MMSE), modified multimodel superensemble (M3SE), and the weighted average method (WAM). These model combination techniques were evaluated using the results from the Distributed Model Intercomparison Project ( DMIP), an international project sponsored by the National Weather Service (NWS) Office of Hydrologic Development (OHD). All of the multimodel combination results were obtained using uncalibrated DMIP model simulations and were compared against the best-uncalibrated as well as the best-calibrated individual model results. The purpose of this study is to understand how different combination techniques affect the accuracy levels of the multimodel simulations. This study revealed that the multimodel simulations obtained from uncalibrated single-model simulations are generally better than any single-member model simulations, even the best-calibrated single-model simulations. Furthermore, more sophisticated multimodel combination techniques that incorporated bias correction step work better than simple multimodel average simulations or multimodel simulations without bias correction.
机译:本文研究了用于流量预测的几种多模型组合技术:简单模型平均(SMA),多模型超级整体(MMSE),改进的多模型超级整体(M3SE)和加权平均法(WAM)。这些模型组合技术是使用由国家气象局(NWS)水文发展办公室(OHD)赞助的国际项目分布式模型比较项目(DMIP)的结果进行评估的。所有多模型组合结果都是使用未经校准的DMIP模型仿真获得的,并与最佳未校准以及最佳校准的单个模型结果进行了比较。这项研究的目的是了解不同的组合技术如何影响多模型仿真的准确性水平。这项研究表明,从未经校准的单模型仿真获得的多模型仿真通常比任何单成员模型仿真都要好,即使是最佳校准的单模型仿真也是如此。此外,结合了偏差校正步骤的更复杂的多模型组合技术比简单的多模型平均模拟或没有偏差校正的多模型模拟效果更好。

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