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Predictive modeling of discharge of flow in compound open channel using radial basis neural network

机译:基于径向基神经网络的复合明渠水流量预测模型

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摘要

Predicting the flow discharge in open channel is the main parameters in the flood management. The concept of the compound open channel is the accurate approach for modeling the natural streams. Several ways as analytical approaches and artificial intelligence methods have been proposed for predicting the discharge in rivers in term of compound open channel concepts. In this paper the single channel method (SCM), coherence method (COHM), and divided channel method (DCM) as common analytical approacheswere used to predict the discharge in the compound open channel and in follow to achieve more accuracy in flow discharge prediction the radian basis neural network (RBF) was developed. The performance of RBF was compared with other types of transfer function governed on neurons of neural network. The results showed that the DCM with horizontal separated boundary among the subsections with correlation of determination (R2 = 0.76) is accurate through the analytical approaches. Assessing the results of the MLP model showed that this model with (R2 = 0.95) is a bit more accurate than the RBF (R2 = 0.85) and analytical approaches.
机译:预测明渠流量是洪水管理的主要参数。复合明渠的概念是模拟自然流的准确方法。根据复合明渠概念,已经提出了几种分析方法和人工智能方法来预测河流的流量。本文使用单通道方法(SCM),相干方法(COHM)和分隔通道方法(DCM)作为常见的分析方法来预测复合明渠中的流量,并以此在流排放预测中获得更高的准确性。开发了弧度基神经网络(RBF)。将RBF的性能与控制在神经网络神经元上的其他类型的传递函数进行了比较。结果表明,通过分析方法,在各子区域之间具有水平分隔边界且确定性相关(R2 = 0.76)的DCM是准确的。评估MLP模型的结果表明,具有(R2 = 0.95)的模型比RBF(R2 = 0.85)和分析方法更为准确。

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