Product Lifecycle Management Challenges of CPPS
Chapter
First Online:
Abstract
In the chapter Product Lifecycle Management (PLM) Challenges of CPPS, data and information management issues arising from the advanced use of modern product development and engineering methods are addressed. These advanced methods are required for engineering processes of smart systems and individualized products with high complexity and variability. Emphasis is put on challenges of the life-cycle oriented information integration of products and the respective Cyber-Physical Production Systems (CPPS). Furthermore, the chapter addresses data and information management problems coming from integration of the use and operation phase of products and systems in terms of forward and backward information flows.
Keywords
Product lifecycle management (PLM) Cyber-physical production systems (CPPS) Information management Model based systems engineering (MBSE) Digital TwinReferences
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