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MLP, ANFIS, and GRNN based real-time coagulant dosage determination and accuracy comparison using full-scale data of a water treatment plant

机译:基于MLP,ANFIS和GRNN的实时凝结剂剂量确定和使用水处理厂满量程数据的准确性比较

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摘要

Real-time determination of appropriate coagulant dosage under wide fluctuation of raw water quality in a water treatment plant (WTP) is a challenging task due to nonlinearity relation between coagulant dosage and raw water characteristics. In this research, three techniques, multilayer perceptron (MLP), adaptive neuro fuzzy inference system (ANFIS), and generalized regression neural network (GRNN), are applied to determine the coagulant dosage at Bansong drinking WTP. Each model is developed based on 8,760 historical data sets with hourly resolution for a whole year. Several statistical properties are determined to obtain the best-fit model from each method. The top performing models of each method are evaluated by external validation indices and absolute relative error according to nine turbidity zones. From the result, MLP and ANFIS models meet all conditions of validation indices, but GRNN cannot. The MLP shows the best result for high turbidity zones over 20 NTU as well as for overall performance. Meanwhile, ANFIS provides consistent results and better performance than MLP for low turbidity zones which have higher disorder of coagulant dosage data. The GRNN shows high accuracy for the highest turbidity zone which occurs during the rainy season. It is concluded that MLP, ANFIS, and GRNN can support operators effectively for real-time determination of coagulant dosage.
机译:由于凝结剂用量与原水特性之间存在非线性关系,因此在水处理厂(WTP)的原水质量波动较大的情况下,实时确定合适的凝结剂用量是一项艰巨的任务。在这项研究中,三种技术,多层感知器(MLP),自适应神经模糊推理系统(ANFIS)和广义回归神经网络(GRNN)被用于确定Bansong饮用WTP的凝血剂量。每个模型都是根据8760个历史数据集开发的,并具有全年的每小时分辨率。确定几种统计属性,以从每种方法获得最佳拟合模型。根据九个浊度区,通过外部验证指标和绝对相对误差来评估每种方法的最佳性能模型。从结果来看,MLP和ANFIS模型满足验证指标的所有条件,但GRNN不能。对于超过20 NTU的高浊度区域以及整体性能,MLP显示出最佳结果。同时,对于具有较高混凝剂量数据的低浊度区域,ANFIS可提供一致的结果,并且性能优于MLP。 GRNN显示出在雨季期间出现的最高浊度区的高精度。结论是,MLP,ANFIS和GRNN可以有效地支持操作员实时确定凝血剂量。

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