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Multiple Linear Regression Model for Total Bed Material Load Prediction

机译:床总物料负荷预测的多元线性回归模型

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摘要

A new total bed material load equation that is applicable for rivers in Malaysia was developed using multiple linear regression analyses. A total of 346 hydraulic and sediment data were collected from nine natural and channelized rivers having diverse catchment characteristics in Malaysia. The governing parameters were carefully selected based on literature survey and field experiments, examined and grouped into five categories namely mobility, transport, sediment, shape, and flow resistance parameters. The most influential parameters from each group were selected by using all possible regression model method. The suitable model selection criteria namely the R-square, adjusted R-square, mean square error, and Mallow's C_p statistics were employed. The accuracy of the derived model is determined using the discrepancy ratio, which is a ratio of the calculated values to the measured values. The best performing models that give the highest percentage of prediction from the validation data were chosen. In general, the newly derived model is best suited for rivers with uniform sediment size distribution with a d_(50) value within the range of 0.37-4.0 mm and performs better than the commonly used Graf, Yang, and Ackers-White total bed material load equations.
机译:使用多重线性回归分析,开发了适用于马来西亚河流的新的总床料负荷方程。从马来西亚的9条具有不同汇水特征的天然河道和渠道河道中,总共收集了346个水力和泥沙数据。在文献调查和野外试验的基础上,精心选择了控制参数,并将其分为五个类别,即流动性,运输性,沉积物,形状和流动阻力参数。通过使用所有可能的回归模型方法,从每组中选择最具影响力的参数。使用合适的模型选择标准,即R平方,调整后的R平方,均方误差和Mallow的C_p统计量。使用差异率确定导出模型的准确性,该差异率是计算值与测量值的比率。选择了性能最好的模型,这些模型从验证数据中得出最高的预测百分比。一般而言,新推导的模型最适合具有d_(50)值在0.37-4.0 mm范围内的均匀沉积物尺寸分布的河流,并且其性能优于常用的Graf,Yang和Ackers-White总床材料负载方程式。

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