FIELD: power engineering.
SUBSTANCE: invention relates to the field of power engineering systems and can be used to form control actions on equipment of a large-scale pipeline system (LPS) of power engineering in general in real time, taking into account the declared supply of the product and minimization of energy costs. Method for optimal control of power engineering LPS using artificial intelligence technology includes creation of information control system (ICS) and equipping it with measuring instruments for remote control of parameters of operating modes of the main process equipment of pipeline transport. ICS receives data from measuring instruments, parameters of the processes are transmitted through the ADMS to the simulation and optimization system based on neural networks, designed to perform multivariate calculations and optimize operating modes in accordance with the dispatcher's task, where the most efficient scenario is selected, which is realized under control of a dispatcher by generating in ADMS and subsequent transmission of corresponding control commands to equipment. Optimization criterion can be expenditures of fuel and energy resources for transport needs in natural or value terms, transportation of goods, use of gas stock accumulated in pipelines of the system (for gas transportation systems).
EFFECT: intellectualization of power engineering LPS control by using a simulation system to determine optimal controls in real time, which will make it possible to significantly increase quality of made decisions on system control, including to control distribution of product flows so as to minimize energy costs for transportation, and, as a result, operating costs.
1 cl, 3 dwg
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Authors
Dates
2024-05-28—Published
2023-12-20—Filed