首页 | 本学科首页   官方微博 | 高级检索  
     检索      

轮轨力在线监测类系统设备状态智能预警技术研究
引用本文:田德柱,段培勇,李旭伟,谢锦妹.轮轨力在线监测类系统设备状态智能预警技术研究[J].铁道建筑,2020(4):97-101.
作者姓名:田德柱  段培勇  李旭伟  谢锦妹
作者单位:轨道交通系统测试国家工程实验室;中国铁道科学研究院集团有限公司铁道建筑研究所
基金项目:中国铁道科学研究院集团有限公司基金(2018YJ039)。
摘    要:以车辆运行品质轨边动态监测系统为对象,统计分析其不良检测数据,研究影响设备状态的具体因素,确定了以定时消息、过车过程中软件及检测数据状态、数据统计信息状态和日报表为主的自检信息内容及传输机制。通过分析砝码车标准值调整变动规律及运行现状,制定了标准值定期录入机制。研究了设备故障预警评估方法,开发了基于B/S结构的Web系统监控预警平台,可提供分级设备状态监控、趋势展示、预警、查询、统计等功能。预警平台的应用大幅降低了设备维护人员的劳动强度,提高了工作效率,实现了设备故障的超前预判,并能有效缩短故障时间,为设备维护单位提供有力的技术支撑。

关 键 词:轮轨力  TPDS  设备状态  传感器  自检信息  设备故障预警

Research on Intelligent Early Warning Technology for Equipment State of Wheel and Rail Force Online Monitoring System
TIAN Dezhu,DUAN Peiyong,LI Xuwei,XIE Jinmei.Research on Intelligent Early Warning Technology for Equipment State of Wheel and Rail Force Online Monitoring System[J].Railway Engineering,2020(4):97-101.
Authors:TIAN Dezhu  DUAN Peiyong  LI Xuwei  XIE Jinmei
Institution:(National Engineering Laboratory for Rail Transit System Testing,Beijing 100081,China;Railway Engineering Research Institute,China Academy of Railway Sciences Corporation Limited,Beijing 100081,China)
Abstract:Taking the dynamic monitoring system of vehicle operation quality rail edge as the object,through the statistical analysis of its bad detection data,the specific factors affecting the equipment state were studied.Based on the timing message,the software during the passing process,the state of the data,the state of the data statistics and the daily report,the self-test information content and transmission mechanism were determined.The standard value periodic input mechanism was formulated by analyzing the change law and operation state of the standard value adjustment of the standard vehicle.The equipment failure early warning assessment method was researched,and the Web system monitoring and early warning platform based on B/S structure was developed.It can provides hierarchical device state monitoring,trend display,early warning,query,statistics and other functions.The application of the early warning platform can greatly reduce the labor intensity of the equipment maintenance personnel,improve the work efficiency,realize the advance prediction of the equipment failure,effectively shorten the failure time,and provide powerful technical support for the equipment maintenance unit.
Keywords:wheel and rail force  TPDS(Truck Performance Detecting System)  equipment state  sensor  self-test information  equipment failure early warning
本文献已被 CNKI 维普 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号