首页 | 本学科首页   官方微博 | 高级检索  
     

基于油液中金属浓度梯度特征的滤波剩余寿命预测模型
引用本文:张英波,贾云献,邱国栋,黄河,谷玉波. 基于油液中金属浓度梯度特征的滤波剩余寿命预测模型[J]. 系统工程理论与实践, 2014, 34(6): 1620-1625. DOI: 10.12011/1000-6788(2014)6-1620
作者姓名:张英波  贾云献  邱国栋  黄河  谷玉波
作者单位:1. 军械工程学院 装备指挥与管理系, 石家庄 050003;2. 65659部队, 锦州 121017;3. 驻黎阳机械公司军代室, 贵阳 561116;4. 空军西安飞行学院 理论训练系, 西安 710306
基金项目:总装重点预研基金(9140A27020308JB34)
摘    要:基于随机滤波理论的剩余寿命预测模型是基于状态的维修的重要组成部分. 首先根据设备磨损过程,建立了磨损、金属粒子浓度和剩余寿命三者的函数关系. 进而针对滤波模型基于油液信息进行预测时的局限性,建立了基于油液浓度梯度特征的滤波模型. 此模型无需对监测信息中的换油影响进行线性回归处理,从而减少了误差,并以金属浓度梯度特征建模,完善了状态信息与剩余寿命之间的负相关关系. 然后设计了极大似然参数估计方法,在参数估计过程中考虑了截尾数据对估计值的影响. 最后以某型自行火炮发动机的油液光谱分析数据为例,实现了发动机的剩余寿命预测,结果表明了该模型的可行性和有效性.

关 键 词:剩余寿命  滤波模型  金属浓度梯度  状态信息  参数估计  
收稿时间:2011-04-24

Stochastic filtering residual useful life prediction model based on metal concentration gradient in lubricant
ZHANG Ying-bo,JIA Yun-xian,QIU Guo-dong,HUANG He,GU Yu-bo. Stochastic filtering residual useful life prediction model based on metal concentration gradient in lubricant[J]. Systems Engineering —Theory & Practice, 2014, 34(6): 1620-1625. DOI: 10.12011/1000-6788(2014)6-1620
Authors:ZHANG Ying-bo  JIA Yun-xian  QIU Guo-dong  HUANG He  GU Yu-bo
Affiliation:1. Department of Equipment Command and Management, Ordnance Engineering College, Shijiazhuang 050003, China;2. Troop No.65659 of PLA, Jinzhou 121017, China;3. Military Representative Office in Liyang Machine Factory, Guiyang 561116, China;4. Department of Aviation Theory Training, Xi'an Flight Academy of Air Force, Xi'an 710306, China
Abstract:Residual useful life prediction model based on stochastic filtering is an important part of condition based maintenance. Firstly according to the component wearing process, the functions among wear, metal concentration and residual life were established. Secondly, to the restriction of filtering model when using lubricant analysis data, a filtering model based on metal concentration gradient in lubricant was built up. This prediction model does not need to deal with the oil changes by linear regression, which could influence the lubricant data; thereby some calculation errors are avoided. Another advantage of the model is that the negative correlation between condition data and residual life is more perfect owing to the adoption of metal concentration gradient. Thirdly, a maximum likelihood parameter estimation method was designed, which had considered the truncated data. Finally we took the oil spectral analysis data of a certain artillery engine as an example to carry out the residual useful life prediction of the engine. Results show that the model is practicable and effective.
Keywords:residual useful life  filtering model  metal concentration gradient  condition information  parameter estimation  
本文献已被 CNKI 等数据库收录!
点击此处可从《系统工程理论与实践》浏览原始摘要信息
点击此处可从《系统工程理论与实践》下载全文
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