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Abstract:
In this paper, experimental factors are decided which influence microirregularities Ry, Sm on ground bearing race surface. The multiple-factor experiments are done, based on the uniformity experiment design table, in order to make the experiments overall reflect the effects of grinding parameters on microirregularity characteristic parameters R y, Sm of ground surface with as few experiments as possible. A neural network model is established with the grinding experimental data, which relates characteristic parameters Ry, Sm of ground surface microirregularities to the grinding parameters, by means of the terminal attractor based BP learning algorithm. Based on the neural network model for the characteristic parameters Ry, Sm of ground surface, some valuable conclusions have been drawn by further multidimensional analysis.
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ISSN: 1013-9826
Year: 2004
Volume: 259-260
Page: 485-489
Language: English
0 . 2 7 8
JCR@2004
0 . 2 2 4
JCR@2005
JCR Journal Grade:3
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WoS CC Cited Count: 0
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ESI Highly Cited Papers on the List: 0 Unfold All
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30 Days PV: 1
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