Grinding Wheel Dynamic Balance Weight Type System Based on the Self-Optimal Fuzzy Control

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Abstract:

.Grinding wheel as the research object in this paper and aim at the vibration signal use the weight balance principle to balance the centrifugal force caused by the eccentric whee. Designed a kind of self-optimization fuzzy controller, through online optimization correction factor realized the control rules of self-adjustment and self-improvement. Not only solved the problem of relying on the Precise mathematical mode as the conventional control system,but also make the control system has automatic adaptation for the changes of the object properties.Experimental results show that:the effect of the correct balance amount and the grinding wheel unbalance correction offset is good, the vibration drop rate reached 93.2%, has played a good role in inhibition of unbalance, the grinder vibration quantity significantly reduced and improved the performance of the control system.

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Periodical:

Advanced Materials Research (Volumes 834-836)

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1360-1364

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Online since:

October 2013

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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DOI: 10.1109/wcica.2002.1022232

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