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Artificial neural network weights optimization based on social-based algorithm to realize sediment over the river

机译:基于社交算法的人工神经网络权重优化实现河流上的沉积物

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Predictions of sediment load are required in a wide spectrum of problems such as design of the dead volume of a dam, sediment transport in the river, design of stable channels, and dredging needs. Researchers have used the regression between sediment concentration and water discharge. Such relationships are obtained through the application of regression analysis in many studies. Unfortunately, in the classical regression approach to determine sediment concentration-water discharge relationships, internal uncertainties are not taken explicitly into consideration. Therefore, researchers look for non-linear methods to estimate sediment load such as artificial neural network (ANN) methods to solve non-linear problems. The main purpose of this paper is to optimize the ANN connection weights with novel social-based algorithm (SBA) to realize the sediment in Maroon river. The SBA tries to capture several people in different types of countries. They try to reach high levels. The approach illustrated feed-forward neural network optimization for sediment estimation of four Maroon river stations in Iran, which was called FF-SBA. Three inputs were presented in each station: length of river, discharge and debit. Sediment parameter on the same station is measured as the output parameter. Results of optimization algorithms such as the genetic algorithm, particle swarm optimization and imperialist competitive algorithm were compared with the SBA results, and it was found that the FF-SBA model exhibited more capability, flexibility, and accuracy in sediment training, testing, and forecasting steps for the Maroon river in Iran.
机译:各种各样的问题都需要对泥沙负荷进行预测,例如大坝的死体积设计,河流中的泥沙运输,稳定的河道设计和疏ging需求。研究人员使用了沉积物浓度和排水量之间的回归。这种关系是通过在许多研究中应用回归分析获得的。不幸的是,在确定沉积物浓度与水流量关系的经典回归方法中,没有明确考虑内部不确定性。因此,研究人员寻求用于估计沉积物负荷的非线性方法,例如用于解决非线性问题的人工神经网络(ANN)方法。本文的主要目的是利用新型的基于社会的算法(SBA)优化ANN连接权重,以实现栗色河中的泥沙。 SBA试图抓住不同类型国家中的几个人。他们试图达到较高的水平。该方法说明了前馈神经网络优化方法,用于伊朗四个栗色河站点的沉积物估算,称为FF-SBA。每个站都提供了三个输入:河流长度,流量和借方。测量同一站点上的泥沙参数作为输出参数。将遗传算法,粒子群算法和帝国主义竞争算法等优化算法的结果与SBA结果进行了比较,发现FF-SBA模型在泥沙训练,测试和预测中表现出更大的能力,灵活性和准确性。前往伊朗的栗色河。

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