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Logical Methods Usage in Diagnostics of the Multi-agents Air-conditioning System
Full text (PDF)
UDC: 004.8: [519.1+629.7]
Publication Language: Ukrainian
Stuc. intelekt. 2024; 29(4):242-255
Abstract: The possibility of cooperative agents usage for the on-board air conditioning system research and diagnosis is considered. A logical model for type I and II faults searching is proposed. This work provides an opportunity to master the practical knowledge and skills the first and second types logical models building to obtaining a minimum test of performance and finding malfunctions and damages the place at complex information systems development, operation and maintenance the stages. An algorithm has been developed that combines the development a generalized I type logical model from the system functional circuit input side and the subsequent construction II type a logical model from its free outputs. The deep learning metod allows to increase the accuracy of the model, the speed of finding faults, predicting and preventing accidents.
Keywords: on-board air conditioning systems, logical methods, agents, diagnostics
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