Energy Consumption Optimization of Production Lines of Enterprise for Process Safety Provision

The task of optimizing the load in the power supply system of a manufacturing enterprise to ensure technological safety in the event of an overload of the power network is considered. The architecture of a distributed control system for work scheduling performed by parallel-working machines in the process of implementing technological processes for processing parts is proposed. The solutions to the problem of preventing overloading the workshop's power system based on a big data processing system are considered.

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