Urban Factory - Potentials of a New Factory Typology

JournalIndustrie Management
Issue Volume 30, 2014, Edition 4, Pages 11-15
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Abstract

To remain competitive in a globalized market, enterprises must consider sustainably aspects. The classic aims of quality, costs and time are extended by aspects of the ecological, economic and social quality. The challenge to cope with these new dimensions aiming at long term success is raised by the turbulent influences in a global market with varying demands. A new factory typology, the so called urban factory, pursues the aim to exhaust the potentials of an interlinking of factory and town efficiently. The aim of this topology is to improve the competitive situation of enterprises. In this case the synergetic use of material and energy sources is in focus.

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Potentials: Profitability
Solutions: Production Control

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