PLM Oriented Quality Information Model and Management System for Optoelectronic Product

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Abstract:

Optoelectronic industry is one of the pillar cornerstone industries in the 21st century. For China optoelectronic enterprises, how to participate in the global competition by means of the world-class quality has become the survival or perish subject. Based on the analysis of optoelectronic products and its quality management characteristics, this paper proposed the product lifecycle quality management model which is customer demands-driven and six sigma process control targeted by emphasizing the process control based on fact and data. This paper suggested and illustrated the prototype system of optoelectronic product lifecycle quality management combined with the actual quality management for demonstrating the feasibility of model.

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Advanced Materials Research (Volumes 889-890)

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1467-1470

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February 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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