Dynamic Error Modeling Research of On-Machine Measurement System Based on Bayesian Network

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Abstract:

Production rhythm speeding up, requiring the on-machine measurement quick and accurate, however, the measurement speed is increased along with the increase of dynamic error, so the study of dynamic error about on-machine measurement system is particularly important. This paper introduced Bayesian network to the study of dynamic error modeling about on-machine measurement system, effectively expressed the relationship between the error sources and the dynamic error, and verified the feasibility of this method.

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52-56

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September 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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