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Natural Rivers Longitudinal Dispersion Coefficient Simulation Using Hybrid Soft Computing Model

机译:混合软计算模型模拟天然河流纵向弥散系数。

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The determination of longitudinal dispersion coefficient (LDC) of pollutants in stream contributes to several environmental and hydraulic engineering practices. Hence, providing an accurate and reliable methodology for predicting LDC is an essential process required water resources engineers. In this research, new hybrid soft computing model called deep neural network (DNN) coupled with genetic algorithm (GA), is developed to predict LDC using historical information attained from published researches in the literature. The GA is established as an evolutionary modeling phase to define the highly influencing hydraulic variables as an input combination attributes to compute the LDC. The hydraulic variables belonged to various stream all around the world, are utilized to build the modeling structure. The developed prediction model assessed using various statistical metrics to visualize its predictability. The proposed coupled predictive model validated with the core established research on the same application. In general, the model exhibited an excellent methodology for the environmental and hydraulic engineering aspects. Most importantly, the proposed model fulfilled the contribution of river engineering sustainability.
机译:确定河流中污染物的纵向弥散系数(LDC)有助于一些环境和水利工程实践。因此,提供一种准确可靠的方法来预测最不发达国家(LDC)是水资源工程师必需的基本过程。在这项研究中,开发了一种新的混合软计算模型,称为深度神经网络(DNN)与遗传算法(GA)结合,以利用从文献中发表的研究中获得的历史信息来预测LDC。遗传算法被建立为一个进化建模阶段,以定义影响力很大的水力变量作为计算LDC的输入组合属性。属于世界各地各种水流的水力变量被用来建立建模结构。已开发的预测模型使用各种统计指标进行了评估,以可视化其可预测性。所提出的耦合预测模型已在同一应用程序的核心研究中得到验证。总的来说,该模型在环境和水利工程方面表现出了极好的方法论。最重要的是,所提出的模型实现了河流工程可持续性的贡献。

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