Integrative Site Development

Fabrikplanung im Spannungsfeld von Market Pull und Technology Push

JournalIndustrie Management
Issue Volume 25, 2009, Edition 4, Pages 45-48
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Abstract

The development of changeable factory concepts influences the site competitiveness of producing companies. The impact of the underlying factory structure, the factory layout, and the logistics on the operating efficiency of a factory concept is unquestioned. The influence of future production technologies or products on the factory concept, however, is often neglected. In a cooperative project a new method has been derived which allows a holistic coordination of all three elements factory, technology and product.

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Potentials: Strategy

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