1CRRC Academy, Beijing
2School of Software Engineering, Beijing Jiaotong University, Beijing
3CRRC Academy (Qingdao) Co., Ltd., Qingdao, Shandong
*通讯作者:
Qi Liu,单位:CRRC Academy, Beijing School of Software Engineering, Beijing Jiaotong University, Beijing;
摘要
轨道交通装备的运力压力和高技术含量使得安全控制问题具有潜在的灾难性,这些挑战对轨道交通运维领域的智能化发展提出了更高的要求,为行业带来了巨大的发展空间。本文从轨道交通机车智能运维检测和电力机车技术状态管理平台两个方面,阐述了智能运维的现状。通过对机车运行数据采集、智能监控维护系统架构、影响故障诊断和远程运维的关键因素、智能运维系统等方面的分析,总结了智能运维的现状。
关键词: 轨道交通;智能运维;电力机车
Abstract
The transportation capacity pressure and the high technological content of rail transit equipment make safety control problems potentially disastrous. These challenges elevate demands for the development of intelligent technology in the field of rail transit operation and maintenance, allowing significant room for growth and development in the industry. This paper reviews the current status of intelligent operation and maintenance by discussing the intelligent operation and maintenance detection of locomotives and the electric locomotive technology state management platform in rail transit. Through an analysis of locomotive operating data acquisition, the architecture of the intelligent monitoring and maintenance system, key factors affecting fault diagnosis and remote operation and maintenance, and intelligent operation and maintenance systems, this paper summarizes the current state of intelligent operation and maintenance.
Key words: Rail transit; Intelligent operation and maintenance; Electric locomotive
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