Volgograd, Volgograd, Russian Federation
In the work it is defined that digital production systems (DPS) introduction is a modern trend to increase mechanical engineering efficiency and a subject field of the “Technet” measure plan of the National Technological Initiative of the RF up to 2035. There is offered a structure and mechanisms of DPS functioning for machining production. The aspects of DPS introduction taking into account a modern level of technological, control, transport and storage equipment are analyzed.
digital production system, mechanical engineering, machining
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