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Optimisation of energy-saving control parameters of urban underground sewage treatment pumps based on fuzzy parameter adaption

Ya-Zhou Xing, Zhong-Min Yin, Hao Xue and Na Zhang

International Journal of Global Energy Issues, 2020, vol. 42, issue 5/6, 339-354

Abstract: In order to improve energy-saving control of urban underground sewage treatment pumps, an optimisation method of energy-saving control parameters of urban underground sewage treatment pumps based on fuzzy parameter adaption is proposed. Firstly, the energy-saving control object model of an urban underground sewage pump is constructed, and the energy-saving parameters of the urban underground sewage treatment pump are adjusted using a first-order linear auto-disturbance rejection controller. Secondly, a speed observer is used to optimise the speed of the energy-saving underground sewage treatment pump. Finally, the load disturbance and parameter perturbation is optimised by constructing a high-frequency buffeting and hysteresis inhibition model. The simulation results show that the method has good adaptability, strong anti-interference ability and robustness for energy-saving control of sewage treatment pumps.

Keywords: underground sewage treatment pump; energy saving; automatic control. (search for similar items in EconPapers)
Date: 2020
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