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Artificial Neural Network Based Control of Electrocoagulation based Automobile Wastewater Treatment Plant

机译:基于人工神经网络的电凝汽车污水处理厂控制

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Wastewater from vehicle garages and workshops is an important contributor to water pollution. Oil is the major content of wastewater in vehicle garages. The project focuses on the use of Electrocoagulation technique (EC) for the removal of oil content in wastewater from vehicle garages. We took samples from KSRTC Thrissur depot since they use more than 10000 litres of water per day in a continuous manner and this huge amount of water is wasted. The different parameters affecting the EC process will be quickly varying. Hence a non linear model of the process is required for further automation and control of input parameters for the EC process. Artificial Neural Network (ANN) technique is used for the non linear modeling purpose. An ANN model is developed relating important parameters affecting the Eletrocoagulation and the oil removal. The removal of oil is observed in terms of Chemical Oxygen Demand of experiment feed and water sample after Electrocoagulation.. The parameters are Current Density, time of EC, salt concentration and pH of the sample. The combination of inputs is designed by Design of Experiment tool in MINITAB software. The percentage COD removal is predicted using ANN. The Regression Coefficient is obtained in the range of 0.8-0.9 by ANN model and comparison of ANN predicted COD removal and experimental removal has also shown closed result. We concluded that EC can give about 90 % removal of oil in terms of COD and the ANN can predict percentage removal of oil. Hence in practice the adjustment of operating parameters will result in greater removal of oil content in wastewater and to allow automation of the Electrocoagulation process.
机译:车库和车间产生的废水是造成水污染的重要因素。石油是汽车车库废水的主要成分。该项目着重于使用电凝技术(EC)去除车库中废水中的油分。我们从KSRTC Thrissur仓库取样,因为它们每天连续使用超过10000升水,并且浪费了大量水。影响EC流程的不同参数将迅速变化。因此,为了进一步自动化和控制EC过程的输入参数,需要过程的非线性模型。人工神经网络(ANN)技术用于非线性建模目的。建立了与影响电凝和除油的重要参数相关的ANN模型。电凝后,根据实验进料和水样品的化学需氧量观察到了油的去除。参数为电流密度,EC时间,盐浓度和样品的pH。输入的组合由MINITAB软件中的“实验设计”工具设计。使用ANN预测COD去除百分比。通过ANN模型获得的回归系数在0.8-0.9范围内,并且ANN预测的COD去除率与实验去除率的比较也显示出封闭的结果。我们得出的结论是,就COD而言,EC可以去除大约90%的油,而ANN可以预测去除百分比的油。因此,在实践中,操作参数的调整将导致废水中油含量的去除更多,并使电凝过程自动化。

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