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Application of a Distributed Large Basin Runoff Model to Lake Erie: Model Calibration and Analysis of Parameter Spatial Variation

机译:分布式大流域径流模型在伊利湖上的应用:模型标定和参数空间变化分析

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The distributed large basin runoff model (DLBRM) was designed to simulate the hydrological processes of the Great Lakes watersheds. As part of its development, the DLBRM was recently applied to 18 watersheds in the Lake Erie basin, where it was first calibrated to reproduce the observed discharge in 1950-1964 and then applied to 1999-2006. Four different calibration objective functions: root mean squared error (RMSE) minimization, mean absolute error (MAE) minimization, correlation maximization, and Nash-Sutcliffe index maximization were tested, revealing RMSE minimization as the most successful method and able to achieve results very close to its global minimum. Further, the distribution of the main DLBRM parameters in the 18 watersheds was consistent with regional patterns, although each watershed was calibrated individually, thus adding credibility to the calibration process. Model performances, while generally good, varied across the basin according to a series of environmental factors, including climate, watershed shape, topography, and land cover and observation factors such as gauging station distribution. Gauging station coverage proved to be extremely important in the ability of the model to track flow variability. The DLBRM proved to be able to replicate well the 1999-2006 hydrologies of most watersheds without recalibration. However, its performance declined in heavily urbanized watersheds, where the landscape changed the most. The results described in this paper will lead to improved model performance and increased practical applications of the DLBRM, providing important information to researchers and decision makers for efficient water management programs in Great Lakes watersheds.
机译:设计了分布式大流域径流模型(DLBRM)来模拟大湖流域的水文过程。作为其开发的一部分,DLBRM最近应用于伊利湖流域的18个流域,在此首先进行校准以重现1950-1964年观测到的流量,然后应用于1999-2006年。测试了四个不同的校准目标函数:均方根误差(RMSE)最小化,平均绝对误差(MAE)最小化,相关最大化以及Nash-Sutcliffe指数最大化,这表明RMSE最小化是最成功的方法,并且能够非常接近地获得结果达到全球最低水平。此外,尽管每个流域都是单独校准的,但主要的DLBRM参数在18个流域中的分布与区域格局一致,因此增加了校准过程的可信度。模型性能虽然总体上不错,但会根据一系列环境因素(包括气候,流域形状,地形和土地覆盖以及观测因素(如测站的分布))在整个流域发生变化。测量站的覆盖范围被证明对模型跟踪流量变化的能力极为重要。事实证明,DLBRM无需重新校准即可很好地复制大多数流域的1999-2006年水文。但是,在城市化程度最高的集水区,其表现却有所下降。本文描述的结果将改善DLBRM的模型性能并增加其实际应用,为大湖流域的有效水管理计划的研究人员和决策者提供重要信息。

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