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Applications of radial-basis function and generalized regression neural networks for modeling of coagulant dosage in a drinking water-treatment plant: Comparative study

机译:径向基函数和广义回归神经网络在饮用水处理厂混凝剂量建模中的应用:比较研究

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摘要

The coagulation process, which involves many complex physical and chemical phenomena, is one of the most important stages in water-treatment plants. The coagulant dosage rate is nonlinearly correlated to raw water characteristics such as turbidity, conductivity, and pH. The coagulation reaction is hard or even impossible to control satisfactorily by conventional methods. The coagulant dosage has typically been determined through the jar test, which requires a long experiment time in a field-water-treatment plant. Modeling can be used to overcome these limitations. In this study, a model for the approximation of coagulant dosage rates in water-treatment plants in Algeria has been developed using artificial neural network (ANN) techniques. Two different ANN techniques, the generalized regression neural network (GRNN) and the radial-basis function neural network (RBFNN), were tested for this purpose. The trained GRNN model outperforms the corresponding RBFNN model.
机译:凝结过程涉及许多复杂的物理和化学现象,是水处理厂最重要的阶段之一。凝结剂的剂量率与原水特性(如浊度,电导率和pH)呈非线性关系。凝结反应难以或什至不可能通过常规方法令人满意地控制。凝结剂的剂量通常是通过广口瓶试验确定的,这需要在野外水处理厂中进行较长的实验时间。建模可以用来克服这些限制。在这项研究中,已经使用人工神经网络(ANN)技术开发了一个近似的阿尔及利亚水处理厂混凝剂剂量率模型。为此,测试了两种不同的人工神经网络技术,即广义回归神经网络(GRNN)和径向基函数神经网络(RBFNN)。经过训练的GRNN模型优于相应的RBFNN模型。

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