Water Quality Soft-Sensing Model of Sewage Treatment Process Combined with the Mechanism and RBF

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Abstract:

As the activated sludge sewage treatment process has strong non-linearity, uncertainty, time-varying and other complex characteristics, it is difficult to establish water quality soft-sensing model of sewage treatment process. This paper studies the present situation of detection technology of sewage quality COD, and summarizes the problems of the existing water quality soft-sensing model. Adopting the technology of mechanism modeling and RBF, establishes water quality soft-sensing model to adapt changes in a wide range of conditions, and has high precision structure.

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1215-1218

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March 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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