Zhe CHEN, Sen ZHANG, Lei WANG, et al. Research on the Overall Scheme of Electric Locomotive Fault Prognostics and Health Management System. [J]. Electric Drive for Locomotives (3):125-131(2021)
DOI:
Zhe CHEN, Sen ZHANG, Lei WANG, et al. Research on the Overall Scheme of Electric Locomotive Fault Prognostics and Health Management System. [J]. Electric Drive for Locomotives (3):125-131(2021) DOI: 10.13890/j.issn.1000-128x.2021.03.020.
Research on the Overall Scheme of Electric Locomotive Fault Prognostics and Health Management System
In order to effectively improve the safety and reliability of electric locomotives in the driving process, the research on electric locomotive failure prediction and health management technology was carried out and an overall system plan was formed, which realized the health management of intelligent monitoring and fault prediction of the important components of electric locomotives. The electric locomotive health management system researched and designed had been applied to Jingshen electric locomotives and achieved preliminary results, which laying a foundation for the subsequent deepening of research, and supporting the realization of conditional maintenance of electric locomotives.
关键词
轨道交通电力机车故障预测与健康管理状态修故障诊断
Keywords
rail transitelectric locomotivefailure prediction and health managementconditional maintenancefault diagnosis
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