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Generative Adversarial Network-based Missing Data Handling and Remaining Useful Life Estimation for Smart Train Control and Monitoring Systems

Authors
Lee, HyunsooHan, Seok-YounPark, Kee-Jun
Issue Date
27-Nov-2020
Publisher
WILEY-HINDAWI
Citation
JOURNAL OF ADVANCED TRANSPORTATION, v.2020
Journal Title
JOURNAL OF ADVANCED TRANSPORTATION
Volume
2020
URI
https://scholarworks.bwise.kr/kumoh/handle/2020.sw.kumoh/18537
DOI
10.1155/2020/8861942
ISSN
0197-6729
Abstract
As railway is considered one of the most significant transports, sudden malfunction of train components or delayed maintenance may considerably disrupt societal activities. To prevent this issue, various railway maintenance frameworks, from "periodic time-based and distance-based traditional maintenance frameworks" to "monitoring/conditional-based maintenance systems," have been proposed and developed. However, these maintenance frameworks depend on the current status and situations of trains and cars. To overcome these issues, several predictive frameworks have been proposed. This study proposes a new and effective remaining useful life (RUL) estimation framework using big data from a train control and monitoring system (TCMS). TCMS data is classified into two types: operation data and alarm data. Alarm or RUL information is extracted from the alarm data. Subsequently, a deep learning model achieves the mapping relationship between operation data and the extracted RUL. However, a number of TCMS data have missing values due to malfunction of embedded sensors and/or low life of monitoring modules. This issue is addressed in the proposed generative adversarial network (GAN) framework. Both deep neural network (DNN) models for a generator and a predictor estimate missing values and predict train fault, simultaneously. To prove the effectiveness of the proposed GAN-based predictive maintenance framework, TCMS data-based case studies and comparisons with other methods were carried out.
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