Indirect Evaluation of TS-FNN Model Network Structure Based on ETPEM

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Abstract:

In FWP processing, since the workpiece deformation parameters change with movement and the lag of processing compensation, ETPEM method is taken during the process. This article will establish FWP (flexible workpiece trajectory) processing performance indicators matter-element and TS-FNN model network matter-element to achieve the TS-FNN model network structure goodness evaluation method indirectly on the basis of deep study of ETEPM relevant theories.

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1376-1379

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September 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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