Smart Factory Production and Operation Management Methods based on HCPS

The human-cyber-physical system (HCPS) is a composite intelligent system comprising humans, cyber systems, and physical systems with the aim of achieving specific manufacturing goals at an optimized level. Smart factory is an important carrier of a new-generation intelligent manufacturing. In order to achieve the comprehensive collaboration of human-machine-thing and other elements in the smart factory, the HCPS is introduced to the smart factory in this paper. Firstly, a smart factory model is constructed based on human-cyber-physical (HCPS). Then, according to the characteristics of big data, Internet-of-Things(IoT) and artificial intelligence(AI), the management methods of smart factory is proposed, including production design, resource intelligent management and knowledge discovery. Finally, a guiding technology architecture of human-centered smart factory production and operation management is given. The smart factory based on HCPS is of great significance to realize the full use of various resources, and agile management. Index Terms-Human-cyber-physical system, Smart Factory, Production and Operation, Management Methods

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