Innovations for Manufacturing in Germany 2020

JournalIndustrie Management
Issue Volume 22, 2006, Edition 1, Pages 39-43
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Abstract

The sector of manufacturing and other involved sectors generates more than 50 % of the German GNP. For future success of this sector a production research, leaded to permanent top performance in production technology, is necessary. Adaptive manufacturing systems are needed for the fast changing future markets. Digital manufacturing is a knowledge based production, which accelerate the technical planning processes and allows collaborative work in networked production structures. The example of an innovation-cluster “digital production” shows the impact of future manufacturing systems realized through time and cost cutting in the developing processes of products and their production.

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