Applications of machine learning methods in traffic crash severity modelling: current status and future directions

被引:55
作者
Wen, Xiao [1 ]
Xie, Yuanchang [1 ]
Jiang, Liming [1 ]
Pu, Ziyuan [2 ]
Ge, Tingjian [3 ]
机构
[1] Univ Massachusetts, Dept Civil & Environm Engn, 1 Univ Ave, Lowell, MA 01854 USA
[2] Monash Univ, Sch Engn, Bandar Sunway, Malaysia
[3] Univ Massachusetts, Dept Comp Sci, Lowell, MA 01854 USA
关键词
Crash severity; machine learning; decision tree; artificial neural networks; random forests; support vector machines; DRIVER INJURY SEVERITY; SUPPORT VECTOR MACHINE; ARTIFICIAL NEURAL-NETWORK; DATA MINING APPROACH; ACCIDENT SEVERITY; MULTINOMIAL LOGIT; HYBRID APPROACH; SINGLE-VEHICLE; DECISION RULES; RISK-FACTORS;
D O I
10.1080/01441647.2021.1954108
中图分类号
U [交通运输];
学科分类号
08 ; 0823 ;
摘要
As a key area of traffic safety research, crash severity modelling has attracted tremendous attention. Recently, there has been growing interest in applying machine learning (ML) methods in this area. However, the lessons and experience learned so far have not been systematically documented and summarised. This is the first article that surveys studies on ML applications in crash severity modelling and has the following major contributions: (1) it provides a comprehensive and critical review of current research efforts; (2) it summarises the successful experience and main challenges (e.g. data and methodology); and (3) it identifies promising research opportunities towards accurate and reliable crash severity modelling and results interpretation. The review results suggest that imbalanced data remains a major issue. Under- and over-samplings are often used to balance crash severity data despite their limitations. Some studies use local sensitivity analysis (LSA) to interpret ML modelling results but ignore the strict assumptions of LSA and omit the joint effects of risk factors. Moreover, very few studies consider the accuracy and reliability of ML model evaluation metrics. Other issues include spatiotemporal correlations, causality, model transferability and heterogeneity. This paper concludes by providing suggestions on model selection and modification to address the identified issues and recommendations for future research. For example, employing advanced ML methods such as graph convolutional networks (GCN) to model spatiotemporal correlations; exploring innovative ways of applying ML methods; and leveraging new developments in ML (e.g. interpretable ML) to derive causal relationships and interpret modelling results.
引用
收藏
页码:855 / 879
页数:25
相关论文
共 50 条
  • [41] Investigating Factors Influencing Crash Severity on Mountainous Two-Lane Roads: Machine Learning Versus Statistical Models
    Qi, Ziyuan
    Yao, Jingmeng
    Zou, Xuan
    Pu, Kairui
    Qin, Wenwen
    Li, Wu
    [J]. SUSTAINABILITY, 2024, 16 (18)
  • [42] Investigating factors that contribute to freeway crash severity using machine learning
    Nickkar A.
    Yazdizadeh A.
    Lee Y.-J.
    [J]. Advances in Transportation Studies, 2020, 52 : 131 - 142
  • [43] Interpretable machine learning for evaluating risk factors of freeway crash severity
    Samerei, Seyed Alireza
    Aghabayk, Kayvan
    [J]. INTERNATIONAL JOURNAL OF INJURY CONTROL AND SAFETY PROMOTION, 2024, 31 (03) : 534 - 550
  • [44] Machine Learning Applications in Modelling and Analysis of Base Pressure in Suddenly Expanded Flows
    Quadros, Jaimon Dennis
    Khan, Sher Afghan
    Aabid, Abdul
    Alam, Mohammad Shohag
    Baig, Muneer
    [J]. AEROSPACE, 2021, 8 (11)
  • [45] Advances, challenges, and future research needs in machine learning-based crash prediction models: A systematic review
    Ali, Yasir
    Hussain, Fizza
    Haque, Md Mazharul
    [J]. ACCIDENT ANALYSIS AND PREVENTION, 2024, 194
  • [46] Instantaneous Property Prediction and Inverse Design of Plasmonic Nanostructures Using Machine Learning: Current Applications and Future Directions
    Xu, Xinkai
    Aggarwal, Dipesh
    Shankar, Karthik
    [J]. NANOMATERIALS, 2022, 12 (04)
  • [47] On the interpretability of machine learning methods in crash frequency modeling and crash modification factor development
    Wen, Xiao
    Xie, Yuanchang
    Jiang, Liming
    Li, Yan
    Ge, Tingjian
    [J]. ACCIDENT ANALYSIS AND PREVENTION, 2022, 168
  • [48] Federated Learning: Advancements, Applications, and Future Directions for Collaborative Machine Learning in Distributed Environments
    Katyayani, M.
    Keshamoni, Kumar
    Murthy, A. Sree Rama Chandra
    Rani, K. Usha
    Reddy, Sreenivasulu L.
    Alapati, Yaswanth Kumar
    [J]. JOURNAL OF ELECTRICAL SYSTEMS, 2024, 20 (05) : 165 - 171
  • [49] Machine Learning and Radiogenomics: Lessons Learned and Future Directions
    Kang, John
    Rancati, Tiziana
    Lee, Sangkyu
    Oh, Jung Hun
    Kerns, Sarah L.
    Scott, Jacob G.
    Schwartz, Russell
    Kim, Seyoung
    Rosenstein, Barry S.
    [J]. FRONTIERS IN ONCOLOGY, 2018, 8
  • [50] Evaluating expressway traffic crash severity by using logistic regression and explainable & supervised machine learning classifiers
    Madushani J.P.S.S.
    Sandamal R.M.K.
    Meddage D.P.P.
    Pasindu H.R.
    Gomes P.I.A.
    [J]. Transportation Engineering, 2023, 13