Acceleration Compensating Fuzzy Control in Magnetic Suspension System

Abstract:

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In this paper, an acceleration compensating control approach is used for dealing with the non-linear dynamics of a multiple degrees of freedom electromagnetic suspension system. This method not only has simple configuration and is implement easily, but also improves the performance of the dynamic stability and the anti-jamming capability. Simulations on the magnetic suspension demonstrated the efficiency of proposed method.

Info:

Periodical:

Advanced Materials Research (Volumes 468-471)

Edited by:

Wenzhe Chen, Pinqiang Dai, Yonglu Chen, Dingning Chen and Zhengyi Jiang

Pages:

64-68

Citation:

H. X. Liu et al., "Acceleration Compensating Fuzzy Control in Magnetic Suspension System", Advanced Materials Research, Vols. 468-471, pp. 64-68, 2012

Online since:

February 2012

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$38.00

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