Adaptive Change Detection for Long-Term Machinery Monitoring Using Incremental Sliding-Window

被引:0
作者
Teng Wang [1 ]
GuoLiang Lu [1 ]
Jie Liu [2 ]
Peng Yan [1 ]
机构
[1] Key Laboratory of High-Efficiency and Clean Mechanical Manufacture of MOE, School of Mechanical Engineering,Shandong University
[2] Department of Mechanical and Aerospace Engineering,Carleton University
关键词
Machine monitoring; Change detection; Long-term monitoring; Adaptive threshold;
D O I
暂无
中图分类号
TH17 [机械运行与维修];
学科分类号
0802 ;
摘要
Detection of structural changes from an operational process is a major goal in machine condition monitoring. Existing methods for this purpose are mainly based on retrospective analysis, resulting in a large detection delay that limits their usages in real applications. This paper presents a new adaptive real-time change detection algorithm, an extension of the recent research by combining with an incremental sliding-window strategy, to handle the multi-change detection in long-term monitoring of machine operations. In particular, in the framework, Hilbert space embedding of distribution is used to map the original data into the Re-producing Kernel Hilbert Space(RKHS) for change detection; then, a new adaptive threshold strategy can be developed when making change decision, in which a global factor(used to control the coarse-to-fine level of detection) is introduced to replace the fixed value of threshold. Through experiments on a range of real testing data which was collected from an experimental rotating machinery system, the excellent detection performances of the algorithm for engineering applications were demonstrated. Compared with state-ofthe-art methods, the proposed algorithm can be more suitable for long-term machinery condition monitoring without any manual re-calibration, thus is promising in modern industries.
引用
收藏
页码:1338 / 1346
页数:9
相关论文
共 11 条
[1]   Change-point detection in panel data via double CUSUM statistic [J].
Cho, Haeran .
ELECTRONIC JOURNAL OF STATISTICS, 2016, 10 (02) :2000-2038
[2]  
Incident detection and isolation in drilling using analytical redundancy relations[J] . Anders Willersrud,Mogens Blanke,Lars Imsland.Control Engineering Practice . 2015
[3]  
Fault diagnosis of downhole drilling incidents using adaptive observers and statistical change detection[J] . Anders Willersrud,Mogens Blanke,Lars Imsland,Alexey Pavlov.Journal of Process Control . 2015
[4]  
Retrospective change detection for binary time series models[J] . Konstantinos Fokianos,Edit Gombay,Abdulkadir Hussein.Journal of Statistical Planning and Inference . 2014
[5]  
Prognostics and health management design for rotary machinery systems—Reviews, methodology and applications[J] . Jay Lee,Fangji Wu,Wenyu Zhao,Masoud Ghaffari,Linxia Liao,David Siegel.Mechanical Systems and Signal Processing . 2014 (1-2)
[6]   Robust CUSUM Control Charting [J].
Nazir, Hafiz Zafar ;
Riaz, Muhammad ;
Does, Ronald J. M. M. ;
Abbas, Nasir .
QUALITY ENGINEERING, 2013, 25 (03) :211-224
[7]  
Identification of the change point: an overview[J] . Karim Atashgar.The International Journal of Advanced Manufacturing Technology . 2013 (9)
[8]  
Failure mode and effect analysis in asset maintenance: a multiple case study in the process industry[J] . A.J.J. Braaksma,W. Klingenberg,J. Veldman.International Journal of Production Research . 2013 (4)
[9]   A nonparametric exponentially weighted moving average signed-rank chart for monitoring location [J].
Graham, M. A. ;
Chakraborti, S. ;
Human, S. W. .
COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2011, 55 (08) :2490-2503
[10]   Experimental analysis of change detection algorithms for multitooth machine tool fault detection [J].
Renones, Anibal ;
de Miguel, Luis J. ;
Peran, Jose R. .
MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2009, 23 (07) :2320-2335