Title :
Predicting failure times of railcar wheels and trucks by using wayside detector signals
Author :
Zhiguo Li ; Qing He
Author_Institution :
Dept. of Bus. Solutions & Math. Sci., IBM T. J. Watson Res. Center, Yorktown Heights, NY, USA
Abstract :
Nowadays railway networks are instrumented with various wayside detectors. Given massive amount of data collected from electronic wayside detectors, railcar failure prediction has recently attracted great attention in order to reduce rolling stock inspection and maintenance costs and improve railway safety. In this work, we present a methodology to predict the failure times of railcar wheels and trucks, by fusing sensor signals from three types of wayside detectors, including Wheel Impact Load Detector (WILD), Machine Vision (MV) systems, and Optical Geometry Detectors (OGD). In data preprocessing, missing values are handled by missForest, a Random Forest based nonparametric missing value imputation algorithm, and a variety of new features are generated to capture the signal characteristics. Several state-of-the-art regression models are built and compared to predict the lifetime of railcar wheels and trucks in a US national railway network.
Keywords :
failure analysis; impact (mechanical); maintenance engineering; railway rolling stock; railway safety; regression analysis; remaining life assessment; sensors; wheels; MV systems; OGD; US national railway network; WILD; data preprocessing; electronic wayside detectors; failure times prediction; lifetime prediction; machine vision systems; maintenance costs; missForest; optical geometry detectors; railcar failure prediction; railcar trucks; railcar wheels; railway safety; random forest based nonparametric missing value imputation algorithm; regression models; rolling stock inspection; sensor signals; signal characteristics; wayside detector signals; wheel impact load detector; Data models; Detectors; Feature extraction; Maintenance engineering; Predictive models; Radio frequency; Wheels; Missing Value Imputation; Predictive Model; Rail Wayside Detectors; Random Forests; Remaining Useful Life;
Conference_Titel :
Mechatronics and Automation (ICMA), 2014 IEEE International Conference on
Conference_Location :
Tianjin
Print_ISBN :
978-1-4799-3978-7
DOI :
10.1109/ICMA.2014.6885854