Managing Railway Bridges Crossing Waterways through a Machine Learning-Based Maintenance Policy

被引:0
|
作者
Wang, Tianyu [1 ]
Takayanagi, Tsuyoshi [2 ]
Chen, Chi-Wei [3 ]
Reiffsteck, Philippe [4 ]
Chevalier, Christophe [4 ]
Schmidt, Franziska [5 ]
机构
[1] Guangzhou Huali Coll, 11,Huali Rd, Guangzhou 511325, Peoples R China
[2] Railway Tech Res Inst, Disaster Prevent Technol Div, Geotech Hazard & Risk Mitigat Lab, Tokyo 1850034, Japan
[3] Soc Natl Chemins fer Francais Reseau, Dept Ouvrages Art, EMF DET, DTR DGII, F-93212 La Plaine, France
[4] Univ Gustave Eiffel, GERS SRO, Marne La Vallee, France
[5] Univ Gustave Eiffel, MAST EMGCU, Marne La Vallee, France
关键词
Bridges crossing waterways; Machine learning; Maintenance policy; Natural hazards; Railway bridge; Scour; SCOUR DEPTH;
D O I
10.1061/JBENF2.BEENG-6922
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Recently, more frequent and severe natural hazards that are caused by climate change have posed a great threat to the safety of transport systems worldwide. To enhance bridges' resilience to natural hazards, this paper proposes a new maintenance policy that is based on machine learning (ML) for managing bridges that cross waterways in France. Two ML models, for example, random forest (RF) and extreme gradient boosting (XGBoost) classifiers, are tested on bridges in France and Japan to investigate the model's practicality and robustness. Data from these bridges has never been seen by the model before; however, it is in the same range as the original data set. To verify the test results on the unseen data, predictions from the French cases are compared with engineering judgment, and they are in agreement (95% between the senior engineer and the XGBoost model). When comparing the Japanese case test results with the Japanese guideline's scoring table (ST), predictions are not as accurate as in the French cases. This might be caused by the different data distribution between the two countries and the lower threshold for high scour risk cases in the Japanese guidelines. Based on the results of the original and unseen data sets, application scenarios are suggested for each model. Finally, to facilitate the use of the proposed model, a friendly web application was demonstrated to reduce computational complexity. The outcome of this paper could help to identify bridges that are vulnerable to scour in an effective yet intelligent way, which will, in the end, ensure the safety of the rail network. In addition, it could provide insights to other countries' transport agencies who want to develop their ML-based maintenance policy.
引用
收藏
页数:13
相关论文
共 50 条
  • [31] A novel decision support system for managing predictive maintenance strategies based on machine learning approaches
    Arena, S.
    Florian, E.
    Zennaro, I
    Orru, P. F.
    Sgarbossa, F.
    SAFETY SCIENCE, 2022, 146
  • [32] A machine learning-based assistant tool for early frailty screening of patients receiving maintenance hemodialysis
    Wenmei Lv
    Hualong Liao
    Xue Wang
    Shaobin Yu
    Yuan Peng
    Xianghong Li
    Ping Fu
    Huaihong Yuan
    Yu Chen
    International Urology and Nephrology, 2024, 56 : 223 - 235
  • [33] A machine learning-based model for predicting the risk of cognitive frailty in elderly patients on maintenance hemodialysis
    Cao, Meng
    Tang, Bixia
    Yang, Liwei
    Zeng, Jing
    SCIENTIFIC REPORTS, 2025, 15 (01):
  • [34] The Enhancement of Machine Learning-Based Engine Models Through the Integration of Analytical Functions
    Brusa, Alessandro
    Shethia, Fenil Panalal
    Petrone, Boris
    Cavina, Nicolo
    Moro, Davide
    Galasso, Giovanni
    Kitsopanidis, Ioannis
    ENERGIES, 2024, 17 (21)
  • [35] The Detection of Colorectal Cancer through Machine Learning-Based Breath Sensor Analysis
    Polaka, Inese
    Mezmale, Linda
    Anarkulova, Linda
    Kononova, Elina
    Vilkoite, Ilona
    Veliks, Viktors
    Lescinska, Anna Marija
    Stonans, Ilmars
    Pcolkins, Andrejs
    Tolmanis, Ivars
    Shani, Gidi
    Haick, Hossam
    Mitrovics, Jan
    Gloeckler, Johannes
    Mizaikoff, Boris
    Leja, Marcis
    DIAGNOSTICS, 2023, 13 (21)
  • [36] Enhancing Geotourism in Southeastern Morocco through Machine Learning-Based Geomorphosite Identification
    Manaouch, Mohamed
    Naimi, Lahbib
    Haynou, Mbarek
    Aghad, Mohamed
    Sadiki, Mohamed
    Pham, Quoc Bao
    Jakimi, Abdeslam
    GEOHERITAGE, 2025, 17 (01)
  • [37] Machine learning-based failure prediction in industrial maintenance: improving performance by sliding window selection
    Leukel, Joerg
    Gonzalez, Julian
    Riekert, Martin
    INTERNATIONAL JOURNAL OF QUALITY & RELIABILITY MANAGEMENT, 2023, 40 (06) : 1449 - 1462
  • [38] A Machine Learning-Based Evaluation Method for Machine Translation
    Kotani, Katsunori
    Yoshimi, Takehiko
    ARTIFICIAL INTELLIGENCE: THEORIES, MODELS AND APPLICATIONS, PROCEEDINGS, 2010, 6040 : 351 - +
  • [39] SECURING VIRTUAL EXECUTION ENVIRONMENTS THROUGH MACHINE LEARNING-BASED INTRUSION DETECTION
    Azmandian, Fatemeh
    Kaeli, David R.
    Dy, Jennifer G.
    Aslam, Javed A.
    2015 IEEE INTERNATIONAL WORKSHOP ON MACHINE LEARNING FOR SIGNAL PROCESSING, 2015,
  • [40] A machine learning-based assistant tool for early frailty screening of patients receiving maintenance hemodialysis
    Lv, Wenmei
    Liao, Hualong
    Wang, Xue
    Yu, Shaobin
    Peng, Yuan
    Li, Xianghong
    Fu, Ping
    Yuan, Huaihong
    Chen, Yu
    INTERNATIONAL UROLOGY AND NEPHROLOGY, 2024, 56 (01) : 223 - 235