The Research on Comparison and Conversion of Two Friction Materials Testing Standards

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In this paper, the BP neural network nonlinear relationship model of friction coefficient between the GB5763-98 standards and SAEJ661 test specifications has been built, and the model was trained. The prediction results show that by the BP model: forecasts and actual test results are basic agreement; the error size is not more than 0.1.

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1876-1879

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July 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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