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首页> 外文期刊>Journal of the American Water Resources Association >SEASONAL AND REGIONAL PATTERNS IN PERFORMANCE FOR A BALTIC SEA DRAINAGE BASIN HYDROLOGIC MODEL
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SEASONAL AND REGIONAL PATTERNS IN PERFORMANCE FOR A BALTIC SEA DRAINAGE BASIN HYDROLOGIC MODEL

机译:波罗的海排水盆地水文模型的季节和区域格局

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This study evaluates the ability of the Catchment SIMulation (CSIM) hydrologic model to describe seasonal and regional variations in river discharge over the entire Baltic Sea drainage basin (BSDB) based on 31years of monthly simulation from 1970 through 2000. To date, the model has been successfully applied to simulate annual fluxes of water from the catchments draining into the Baltic Sea. Here, we consider spatiotemporal bias in the distribution of monthly modeling errors across the BSDB since it could potentially reduce the fidelity of predictions and negatively affect the design and implementation of land-management strategies. Within the period considered, the CSIM model accurately reproduced the annual flows across the BSDB; however, it tended to underpredict the proportion of discharge during high-flow periods (i.e., spring months) and overpredict during the summer low flow periods. While the general overpredictions during summer periods are spread across all the subbasins of the BSDB, the underprediction during spring periods is seen largely in the northern regions. By implementing a genetic algorithm calibration procedure and/or seasonal parameterization of subsurface water flows for a subset of the catchments modeled, we demonstrate that it is possible to improve the model performance albeit at the cost of increased parameterization and potential loss of parsimony.
机译:这项研究基于1970年至2000年的31年月度模拟,评估了汇水模拟(CSIM)水文模型描述整个波罗的海流域(BSDB)河流流量的季节性和区域变化的能力。迄今为止,该模型已经已成功应用于模拟从集水区排入波罗的海的年水通量。在这里,我们考虑在BSDB的每月模型误差分布中的时空偏差,因为它可能会降低预测的保真度,并对土地管理策略的设计和实施产生负面影响。在所考虑的时期内,CSIM模型准确地再现了整个BSDB的年度流量;但是,在高流量时期(即春季),它往往会低估排放比例,而在夏季低流量时期,则会倾向于高估排放量。尽管夏季期间的一般高估分布在BSDB的所有子流域中,但春季期间的低估主要发生在北部地区。通过对一部分集水区实施遗传算法校准程序和/或对地下水流量进行季节性参数化,我们证明尽管可以提高参数化性能和简约性的潜在损失,但仍可以改善模型的性能。

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