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首页> 外文期刊>Journal of Hydrology >Evaluation of seasonal and spatial variations of lumped water balance model sensitivity to precipitation data errors
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Evaluation of seasonal and spatial variations of lumped water balance model sensitivity to precipitation data errors

机译:集总水量平衡模型对降水数据误差敏感性的季节性和空间变化评估

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摘要

Sensitivity of hydrological models to input data errors have been reported in the literature for particular models on a single or a few catchments. A more important issue, i.e. how model's response to input data error changes as the catchment conditions change has not been addressed previously. This study investigates the seasonal and spatial effects, of precipitation data errors on the performance of conceptual hydrological models. For this study, a monthly conceptual water balance model, NOPEX-6, was applied to 26 catchments in the Malaren basin in Central Sweden. Both systematic and random errors were considered. For the systematic errors, 5-15% of mean monthly precipitation values were added to the original precipitation to form the corrupted input scenarios. Random values were generated by Monte Carlo simulation and were assumed to be (1) independent between months, and (2) distributed according to a Gaussian law of zero mean and constant standard deviation that were taken as 5, 10, 15, 20, and 25% of the mean monthly standard deviation of precipitation. The results show that the response of the model parameters and model performance depends, among others, on the type of the error, the magnitude of the error, physical characteristics of the catchment, and the season of the year. In particular, the model appears less sensitive to the random error than to the systematic error. The catchments with smaller values of runoff coefficients were more influenced by input data errors than were the catchments with higher values. Dry months were more sensitive to precipitation errors than were wet months. Recalibration of the model with erroneous data compensated in part for the data errors by altering the model parameters. (c) 2005 Elsevier B.V. All rights reserved.
机译:对于单个或几个集水区的特定模型,文献中已经报道了水文模型对输入数据错误的敏感性。一个更重要的问题,即先前未解决过的集水条件变化导致模型对输入数据错误的响应如何变化。本研究调查降水数据误差对概念性水文模型性能的季节和空间影响。在本研究中,将每月概念性水平衡模型NOPEX-6应用于瑞典中部Malaren盆地的26个流域。系统误差和随机误差均被考虑。对于系统误差,将每月平均降水量的5-15%添加到原始降水量中,以形成损坏的输入情景。随机值是通过蒙特卡洛模拟生成的,并假定为(1)在两个月之间是独立的,并且(2)根据零均值和恒定标准偏差的高斯定律进行分布,取值为5、10、15、20和月平均降水标准偏差的25%。结果表明,模型参数和模型性能的响应尤其取决于误差的类型,误差的大小,集水区的物理特征和一年的季节。特别是,模型对随机误差的敏感度小于对系统误差的敏感度。径流系数较小的集水区比输入数值较大的集水区受输入数据误差的影响更大。与潮湿月份相比,干旱月份对降水误差更敏感。通过更改模型参数,使用错误数据对模型进行的重新校准部分补偿了数据错误。 (c)2005 Elsevier B.V.保留所有权利。

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