Knowledge Innovation Network of Advanced Manufacturing System

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For the advanced manufacturing network, the depth of knowledge innovation is the key to measure its success. This paper points out the necessity to design an effective knowledge innovation network, and presents it from the aspects of connotation, structure and training. Writer put forward a SVM dynamic mechanism of knowledge innovation, which emphasizes innovation culture, mutual trust and information network technology as the core. Research results show that, compared with traditional methods, knowledge innovation network can significantly improve the efficiency of innovation and manufacturing.

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489-493

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December 2012

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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