软计算在水处理厂及配水网络中的应用

D. V. Wadkar, R. Karale, M. Wagh
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引用次数: 3

摘要

在发展中国家,传统的配水管网分析在预测水质、混凝剂剂量、余氯等供水系统相关问题时耗时长、效率低。本文实现了水质神经网络、混凝剂量神经网络和残差神经网络模型。级联前馈神经网络(CFFNN)和前馈神经网络(FFNN)在训练和测试期间分别对水质参数和余氯进行了较好的预测。CFFNN水质模型(27-30-27)对出水水质参数的预测效果较好,R = 0.989。在混凝剂剂量建模中,与其他模型相比,CFFNN(2-40-1)在较宽的浊度范围内具有较好的预测效果,R = 0.947。同样在余氯模型中,FFNN(2-25-1)的预测效果最好,R = 0.988。
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Application of soft computing in water treatment plant and water distribution network
Analysis of traditional water distribution network (WDN) is more time-consuming and less effective to predict the problem related to water supply systems such as water quality, coagulant dose, and residual chlorine in developing countries. In the present paper water quality neural network, coagulation dose neural network, and residual neural network model were implemented. The performance of the Cascade Feed Forward Neural Network (CFFNN) and Feedforward neural network (FFNN) was excellent for the prediction of water quality parameters and residual chlorine respectively during the training and testing period. CFFNN water quality model (27-30-27) with R = 0.989 produced an excellent prediction of outlet water quality parameters. In coagulant dose modelling, CFFNN (2-40-1) yielded a good prediction with R = 0.947 for a broad range of turbidities as compared to other models. Similarly in residual chlorine modelling, FFNN (2-25-1) delivered the best prediction with R = 0.988 as compared to other models.
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来源期刊
CiteScore
2.90
自引率
16.70%
发文量
31
期刊介绍: JAWER’s paradigm-changing (online only) articles provide directly applicable solutions to water engineering problems within the whole hydrosphere (rivers, lakes groundwater, estuaries, coastal and marine waters) covering areas such as: integrated water resources management and catchment hydraulics hydraulic machinery and structures hydraulics applied to water supply, treatment and drainage systems (including outfalls) water quality, security and governance in an engineering context environmental monitoring maritime hydraulics ecohydraulics flood risk modelling and management water related hazards desalination and re-use.
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