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Integrative neural networks model for prediction of sediment rating curve parameters for ungauged basins

机译:集成神经网络模型在非流域盆地沉积物等级曲线参数预测中的应用

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One of the most uncertain modeling tasks in hydrology is the prediction of ungauged stream sediment load and concentration statistics. This study presents integrated artificial neural networks (ANN) models for prediction of sediment rating curve parameters (rating curve coefficient alpha and rating curve exponent beta) for ungauged basins. The ANN models integrate a comprehensive list of input parameters to improve the accuracy achieved; the input parameters used include: soil, land use, topographic, climatic, and hydrometric data sets. The ANN models were trained on the randomly selected 2/3 of the dataset of 94 gauged streams in Ontario, Canada and validated on the remaining 1/3. The developed models have high correlation coefficients of 0.92 and 0.86 for alpha and beta, respectively. The ANN model for the rating coefficient alpha is directly proportional to rainfall erosivity factor, soil erodibility factor, and apportionment entropy disorder index, whereas it is inversely proportional to vegetation cover and mean annual snowfall. The ANN model for the rating exponent beta is directly proportional to mean annual precipitation, the apportionment entropy disorder index, main channel slope, standard deviation of daily discharge, and inversely proportional to the fraction of basin area covered by wetlands and swamps. Sediment rating curves are essential tools for the calculation of sediment load, concentration-duration curve (CDC), and concentration-duration-frequency (CDF) analysis for more accurate assessment of water quality for ungauged basins. (C) 2015 Elsevier B.V. All rights reserved.
机译:水文学中最具不确定性的建模任务之一是预测未测量河流的泥沙负荷和浓度统计数据。这项研究提出了集成人工神经网络(ANN)模型,用于预测未放水盆地的沉积物额定曲线参数(额定曲线系数α和额定曲线指数β)。 ANN模型集成了完整的输入参数列表,以提高所达到的精度;使用的输入参数包括:土壤,土地利用,地形,气候和水文数据集。 ANN模型在加拿大安大略省94条规范河流的数据集的2/3中随机选择,并在其余1/3上进行了验证。所开发的模型对于alpha和beta分别具有0.92和0.86的高相关系数。额定系数α的ANN模型与降雨侵蚀力因子,土壤易蚀性因子和分配熵紊乱指数成正比,而与植被覆盖率和年均降雪成反比。等级指数β的ANN模型与年平均降水量,分配熵紊乱指数,主要河道坡度,日排放量标准偏差成正比,与湿地和沼泽覆盖的流域面积比例成反比。泥沙等级曲线是用于计算泥沙量,浓度持续时间曲线(CDC)和浓度持续时间频率(CDF)分析的重要工具,可以更准确地评估未加满盆地的水质。 (C)2015 Elsevier B.V.保留所有权利。

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