Study on the Fuzzy Neural Network Control Used in Wastewater Treatment

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In this paper, we introduce the study on fuzzy neural network control used in wastewater treatment. An effective fuzzy neural network controller is proposed. The simulation result shows that the system gives strong robustness and good dynamic characteristics. It is used to control dissolved oxygen and forecast water quality. The result indicates that the concentration of dissolved oxygen can reach expectation fleetly and effectively. The model has better precision of forecasting and faster speed of convergence.

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3127-3132

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July 2011

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© 2011 Trans Tech Publications Ltd. All Rights Reserved

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