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A NEURAL NETWORK MODEL FOR CONTROL OF WASTEWATER TREATMENT PROCESSES

机译:用于控制废水处理过程的神经网络模型

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This paper discusses the development of a neural network model for the prediction of the influent disturbances, which ultimately affect the activated sludge process. Neural networks are particularly suited to problems where there is no clear understanding of the processes and the complex inter-relationship between variables. The historical data used for training and testing the neural network is actual plant data obtained from a municipal plant and weather data for the same time periods. The result of the predicted influent disturbance is used in the control of the dissolved oxygen (DO). The results are applied to a pilot wastewater treatment plant located at the Cape Peninsula University of Technology (CPUT). The number of and the type inputs are varied to find an optimal model in order to predict the Chemical Oxygen Demand (COD), Total Kjeldahl Nitrogen (TKN) and the flowrate. Three different dynamic multilayer perceptron (MLP) feed-forward neural network models are developed for the influent disturbances of COD, TKN and flowrate respectively.
机译:本文讨论了对预测流动紊乱预测的神经网络模型的发展,最终影响活性污泥过程。神经网络特别适用于在没有明确了解过程和变量之间的复杂相互关系的情况下的问题。用于培训和测试神经网络的历史数据是从市政工厂和天气数据同时获得的实际工厂数据。在溶解的氧气(DO)的控制中使用预测的流动扰动的结果。结果适用于位于半岛技术大学(捕捞)的飞行员废水处理厂。改变和类型输入的数量以找到最佳模型,以预测化学需氧量(COD),总KJELDAHL氮(TKN)和流量。三种不同的动态多层Perceptron(MLP)前馈神经网络模型分别用于COD,TKN和流量的影响。

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