Guanghua FANG. Research on Signal Intelligent Operation and Maintenance System of Urban Rail Transit. [J]. Electric Drive for Locomotives (2):92-99(2021)
DOI:
Guanghua FANG. Research on Signal Intelligent Operation and Maintenance System of Urban Rail Transit. [J]. Electric Drive for Locomotives (2):92-99(2021) DOI: 10.13890/j.issn.1000-128x.2021.02.015.
Research on Signal Intelligent Operation and Maintenance System of Urban Rail Transit
In view of the development trend of smart urban rail transit and the maintenance status of urban rail transit signal system, an integrated, intelligent and information-based intelligent operation and maintenance system of urban rail transit signal was developed based on the big data platform and micro service technology architecture system, which can realize the functions of intelligent monitoring, fault diagnosis, health management and operation and maintenance management of urban rail transit signal system, and make contributions to the production of signal equipment industry management provides decision support, reduce maintenance costs and improve operation efficiency.
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