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Prediction of total bed material load for rivers in Malaysia: A case study of Langat, Muda and Kurau Rivers

机译:马来西亚河流的总床料负荷预测:以兰加特河,穆达河和库劳河为例

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摘要

A soft computational technique is applied to predict sediment loads in three Malaysian rivers. The feed forward-back propagated (schemes) artificial neural network (ANNs) architecture is employed without any restriction to an extensive database compiled from measurements in Langat, Muda, Kurau different rivers. The ANN method demonstrated a superior performance compared to other traditional sediment-load methods. The coefficient of determination, 0.958 and the mean square error 0.0698 of the ANN method are higher than those of the traditional method. The performance of the ANN method demonstrates its predictive capability and the possibility of generalization of the modeling to nonlinear problems for river engineering applications.
机译:应用一种软计算技术来预测三个马来西亚河流的泥沙负荷。使用反馈前向传播(方案)人工神经网络(ANN)体系结构,不受对从Langat,Muda,Kurau不同河流的测量结果汇编而来的广泛数据库的任何限制。与其他传统的泥沙加注方法相比,人工神经网络方法具有优越的性能。 ANN方法的确定系数0.958和均方误差0.0698高于传统方法。人工神经网络方法的性能证明了其预测能力以及将模型推广到非线性问题的可能性,以用于河流工程应用。

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