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Daily suspended sediment concentration simulation using ANN and neuro-fuzzy models

机译:使用ANN和神经模糊模型进行每日悬浮泥沙浓度模拟

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摘要

In the present study, artificial neural networks (ANNs), neuro-fuzzy (NF), multi linear regression (MLR) and conventional sediment rating curve (SRC) models are considered for time series modeling of suspended sediment concentration (SSC) in rivers. As for the artificial intelligence systems, feed forward back propagation (FFBP) method and Sugeno inference system are used for ANNs and NF models, respectively. The models are trained using daily river discharge and SSC data belonging to Little Black River and Salt River gauging stations in the USA.rnObtained results demonstrate that ANN and NF models are in good agreement with the observed SSC values; while they depict better results than MLR and SRC methods. For example, in Little Black River station, the determination coefficient is 0.697 for NF model, while it is 0.457, 0.257 and 0.225 for ANN, MLR and SRC models, respectively. The values of cumulative suspended sediment load estimated by ANN and NF models are closer to the observed data than the other models. In general, the results illustrate that NF model presents better performance in SSC prediction in compression to other models.
机译:在本研究中,考虑将人工神经网络(ANN),神经模糊(NF),多元线性回归(MLR)和常规沉积物额定曲线(SRC)模型用于河流中悬浮物浓度(SSC)的时间序列建模。对于人工智能系统,前馈传播(FFBP)方法和Sugeno推理系统分别用于ANN和NF模型。使用美国Little Black River和Salt River计量站的每日河流流量和SSC数据对模型进行了训练。获得的结果表明,ANN和NF模型与观测到的SSC值高​​度吻合;尽管它们比MLR和SRC方法具有更好的结果。例如,在小黑河站,NF模型的确定系数为0.697,而ANN,MLR和SRC模型的确定系数分别为0.457、0.257和0.225。通过ANN和NF模型估算的累积悬浮泥沙负荷值比其他模型更接近观测数据。一般而言,结果表明,与其他模型相比,NF模型在SSC预测中表现出更好的性能。

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