Leading indicators and maritime safety: predicting future risk with a machine learning approach

被引:0
|
作者
Lutz Kretschmann
机构
[1] Fraunhofer Center for Maritime Logistics and Services CML,
关键词
Maritime safety; Accident prevention; Safety management; Risk prediction; Leading indicators; Machine learning;
D O I
10.1186/s41072-020-00071-1
中图分类号
学科分类号
摘要
The shipping industry has been quite successful in reducing the number of major accidents in the past. In order to continue this development in the future, innovative leading risk indicators can make a significant contribution. If designed properly, they enable a forward-looking identification and assessment of existing risks for ship and crew, which in turn allows the implementation of mitigating measures before adverse events occur. Right now, the opportunity for developing such leading risk indicators is positively influenced by the ongoing digital transformation in the maritime industry. With an increasing amount of data from ship operation becoming available, these can be exploited in innovative risk management solutions. By combining the idea of leading risk indicators with data and algorithm-based risk management methods, this paper firstly establishes a development framework for designing maritime risk models based on safety-related data collected onboard. Secondly, the development framework is applied in a proof of concept where an innovative machine learning-based approach is used to calculate a leading maritime risk indicator. Overall, findings confirm that a data- and algorithm-based approach can be used to determine a leading risk indicator per ship, even though the achieved model performance is not yet regarded as satisfactory and further research is planned.
引用
收藏
相关论文
共 50 条
  • [21] Application of Machine Learning Methods in Maritime Safety Information Classification
    Liu, Hongze
    Liu, Zhengjiang
    Liu, Dexin
    PROCEEDINGS OF 2018 TENTH INTERNATIONAL CONFERENCE ON ADVANCED COMPUTATIONAL INTELLIGENCE (ICACI), 2018, : 735 - 740
  • [22] Exploration of machine learning methods for maritime risk predictions
    Knapp, Sabine
    van de Velden, Michel
    MARITIME POLICY & MANAGEMENT, 2024, 51 (07) : 1443 - 1473
  • [23] Machine Learning: Predicting Credit Risk
    Melo, Rafael Almeida Pereira
    Guimaraes, Paulo Henrique Sales
    Melo, Marcel Irving Pereira
    SIGMAE, 2024, 13 (04): : 219 - 230
  • [24] PrOsteoporosis: predicting osteoporosis risk using NHANES data and machine learning approach
    Si, Zebing
    Zhang, Di
    Wang, Huajun
    Zheng, Xiaofei
    BMC RESEARCH NOTES, 2025, 18 (01)
  • [25] Predicting Food Safety Compliance for Informed Food Outlet Inspections: A Machine Learning Approach
    Oldroyd, Rachel A.
    Morris, Michelle A.
    Birkin, Mark
    INTERNATIONAL JOURNAL OF ENVIRONMENTAL RESEARCH AND PUBLIC HEALTH, 2021, 18 (23)
  • [26] A Machine Learning Approach for Predicting Therapeutic Adherence to Osteoporosis Treatment
    Marvin, Ggaliwango
    Alam, Md Golam Rabiul
    2021 IEEE ASIA-PACIFIC CONFERENCE ON COMPUTER SCIENCE AND DATA ENGINEERING (CSDE), 2021,
  • [27] Machine learning methodologies versus cardiovascular risk scores, in predicting disease risk
    Alexandros C. Dimopoulos
    Mara Nikolaidou
    Francisco Félix Caballero
    Worrawat Engchuan
    Albert Sanchez-Niubo
    Holger Arndt
    José Luis Ayuso-Mateos
    Josep Maria Haro
    Somnath Chatterji
    Ekavi N. Georgousopoulou
    Christos Pitsavos
    Demosthenes B. Panagiotakos
    BMC Medical Research Methodology, 18
  • [28] Machine learning methodologies versus cardiovascular risk scores, in predicting disease risk
    Dimopoulos, Alexandros C.
    Nikolaidou, Mara
    Felix Caballero, Francisco
    Engchuan, Worrawat
    Sanchez-Niubo, Albert
    Arndt, Holger
    Luis Ayuso-Mateos, Jose
    Maria Haro, Josep
    Chatterji, Somnath
    Georgousopoulou, Ekavi N.
    Pitsavos, Christos
    Panagiotakos, Demosthenes B.
    BMC MEDICAL RESEARCH METHODOLOGY, 2018, 18
  • [29] Predicting Cardiovascular Risk Level Based on Biochemical Risk Factor Indicators Using Machine Learning: A Case Study in Indonesia
    Heryadi, Yaya
    Kosala, Raymond
    Bahana, Raymond
    Suteja, Indrajani
    INTELLIGENT INFORMATION AND DATABASE SYSTEMS, ACIIDS 2019, PT II, 2019, 11432 : 707 - 717
  • [30] PREDICTING FUTURE CITATION COUNTS USING MACHINE LEARNING
    Mansour, Khalid
    Al-Daoud, Essam
    Al-Karaky, Baha
    2021 22ND INTERNATIONAL ARAB CONFERENCE ON INFORMATION TECHNOLOGY (ACIT), 2021, : 102 - 106