Intelligent and Real-Time Information System of Production Manufacturing Based on Internet of Things Technology

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China is a big manufacturing country, and the number of manufacturing enterprises with a certain scale is large. With the increasingly fierce market competition, manufacturing enterprises need to adopt new management methods, improve the market competitiveness of enterprises, and reduce the production cost. This requirement has large scale of market, and it has good economic and society profits. In this paper, the design for intelligent manufacturing information management system is proposed, and it can make the production process be digital and information. The process accuracy is improved, labor costs are reduced, and management efficiency is improved. It can promote the upgrade of production lines effectively, and it can reduce the production line improvement cost. This system not only helps to establish digital production line, but also makes the production manufacturing mode be reformed. It can promote management system, standard, method, and way of production manufacturing to be changed.

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1594-1598

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September 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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