Intelligent Information of TS Fuzzy PID Control System of BLDCM

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Abstract:

This paper presented a new method based on the Fuzzy self - adaptive PID for BLDCM. This method overcomes some defects of the traditional PID control. Such as lower control precision and worse anti - jamming performance. It dynamic model of BLDCM was built, and then design method for TS fuzzy PID model is given, At last, it compared simulation results of PID control method with TS Fuzzy PID control method. The results show that the TS Fuzzy PID control method has more excellent dynamic antistatic performances, as well as anti-jamming performance. The experiment shows that TS fuzzy PID control has the stronger adaptability robustness and transplant.

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Advanced Materials Research (Volumes 846-847)

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313-316

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Online since:

November 2013

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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