ANN Based Rare Earth Lifting Permanent Magnetic Chuck Design

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Abstract:

A novel and saving energy rare earth lifting permanent magnetic chuck was designed based on neural network. The working principle, the neural network model of magnetic circuit design and the self-acting driving system of rare earth lifting permanent magnetic chuck were developed. Industry prototypes were manufactured, and they verified that the proposed rare earth lifting permanent magnetic chuck was feasible.

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950-954

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October 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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