TY - JOUR
T1 - A SVM framework for fault detection of the braking system in a high speed train
AU - Liu, Jie
AU - Li, Yan Fu
AU - Zio, Enrico
N1 - Publisher Copyright:
© 2016 Elsevier Ltd
PY - 2017/3/15
Y1 - 2017/3/15
N2 - In April 2015, the number of operating High Speed Trains (HSTs) in the world has reached 3603. An efficient, effective and very reliable braking system is evidently very critical for trains running at a speed around 300 km/h. Failure of a highly reliable braking system is a rare event and, consequently, informative recorded data on fault conditions are scarce. This renders the fault detection problem a classification problem with highly unbalanced data. In this paper, a Support Vector Machine (SVM) framework, including feature selection, feature vector selection, model construction and decision boundary optimization, is proposed for tackling this problem. Feature vector selection can largely reduce the data size and, thus, the computational burden. The constructed model is a modified version of the least square SVM, in which a higher cost is assigned to the error of classification of faulty conditions than the error of classification of normal conditions. The proposed framework is successfully validated on a number of public unbalanced datasets. Then, it is applied for the fault detection of braking systems in HST: in comparison with several SVM approaches for unbalanced datasets, the proposed framework gives better results.
AB - In April 2015, the number of operating High Speed Trains (HSTs) in the world has reached 3603. An efficient, effective and very reliable braking system is evidently very critical for trains running at a speed around 300 km/h. Failure of a highly reliable braking system is a rare event and, consequently, informative recorded data on fault conditions are scarce. This renders the fault detection problem a classification problem with highly unbalanced data. In this paper, a Support Vector Machine (SVM) framework, including feature selection, feature vector selection, model construction and decision boundary optimization, is proposed for tackling this problem. Feature vector selection can largely reduce the data size and, thus, the computational burden. The constructed model is a modified version of the least square SVM, in which a higher cost is assigned to the error of classification of faulty conditions than the error of classification of normal conditions. The proposed framework is successfully validated on a number of public unbalanced datasets. Then, it is applied for the fault detection of braking systems in HST: in comparison with several SVM approaches for unbalanced datasets, the proposed framework gives better results.
KW - Braking system
KW - Classification
KW - Cost-sensitive models
KW - Feature vector selection
KW - High speed train
KW - Highly imbalanced data
KW - Support vector machine
KW - Threshold optimization
UR - https://www.scopus.com/pages/publications/84996799416
U2 - 10.1016/j.ymssp.2016.10.034
DO - 10.1016/j.ymssp.2016.10.034
M3 - 文章
AN - SCOPUS:84996799416
SN - 0888-3270
VL - 87
SP - 401
EP - 409
JO - Mechanical Systems and Signal Processing
JF - Mechanical Systems and Signal Processing
ER -