Study on Rotational Speed Intelligent Regulation of Diesel Generator Based on Fuzzy PID Algorithm

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Abstract:

Based on a mathematic model of diesel generator mechanical centrifugal governor and the traditional PID control and fuzzy control, a fuzzy PID controller is designed so as to accomplish the self-adjustment of diesel generator mechanical governor parameters. The fuzzy PID controlling diesel generator mechanical governing system is simulated by Simulink and the simulation results suggest that the fuzzy self-adjusting PID control owns the merits of well dynamic property, strong robustness and better adaptability compared to the traditional PID control. Therefore, the performance of diesel generator rotate speed governing system is largely advanced.

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Periodical:

Advanced Materials Research (Volumes 1008-1009)

Pages:

1022-1026

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Online since:

August 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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