A Novel Data-Driven Prediction Framework for Ship Navigation Accidents in the Arctic Region
Abstract
:1. Introduction
- (1)
- Development of a specialized dataset for Arctic navigation accident prediction, encompassing detailed historical data on accident information, such as dates, locations, accident types, involved ship types, meteorological data, and sea ice conditions. This dataset enriches research with practical data. The dataset also incorporates non-accident information to mitigate potential data biases. It provides a holistic view of the variables affecting Arctic navigation, thereby deepening our comprehension of its complexities.
- (2)
- The construction of an optimized accident risk prediction model tailored for the Arctic designed to enhance precision and generalization capabilities. Through meticulous optimization and parameter adjustments, the model stands to improve accident risk prediction and assessment.
- (3)
- Provision of technical support for decision making in the realm of Arctic maritime safety management and risk mitigation. The insights offer substantial aid to ship operators and regulatory bodies, informing their strategies and actions.
2. The Research Framework
- Step 1. RIFs identification
- Step 2. Data collection
- Step 3. Data processing
- Step 4. Selected algorithms and evaluation criteria
- (1)
- Tree-Augmented Naive (TAN) Bayesian Classification
- (2)
- K2 algorithm
- (3)
- Random Forest (RF)
- (4)
- Support Vector Machine (SVM)
- Step 5. Result analysis
3. Optimal Algorithm Selection
4. Results
4.1. Scenario Analysis
4.1.1. Scenario One: Ice-Free Conditions
4.1.2. Scenario Two: Adverse Wind Conditions
4.2. Sensitivity Analysis
5. Discussion
5.1. Algorithm Selection
5.2. Prediction Outcomes
5.3. Limitations of Research
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Search Criteria | Details |
---|---|
Data source | WoS Core Collection database |
Keywords | Topic = “arctic OR polar OR ice-covered water”, AND topic = “navigation OR navigational”, AND topic = “safety OR risk”. |
Year | 1 January 1950–31 December 2022 |
Literature type | Article, review |
Language | English |
Citation Counts 1 | First Author | Year | Journal Title | Literature Title |
---|---|---|---|---|
165 | Kum Serdar | 2015 | Safety Science | A root cause analysis for Arctic Marine accidents from 1993 to 2011 |
148 | Zhang Mingyang | 2019 | Safety Science | Use of HFACS and fault tree model for collision risk factors analysis of icebreaker assistance in ice-covered waters |
141 | Baksh Al-Amin | 2018 | Ocean Engineering | Marine transportation risk assessment using Bayesian Network: Application to Arctic waters |
78 | Khan Bushra | 2020 | Safety Science | A Dynamic Bayesian Network model for ship-ice collision risk in the Arctic waters |
31 | Zhang Chi | 2020 | Transportation Research Part A-Policy and Practice | An integrated risk assessment model for safe Arctic navigation |
30 | Aziz Abdul | 2019 | Reliability Engineering & System Safety | Operational risk assessment model for marine vessels |
29 | Lehtola Ville | 2019 | Cold Regions Science and Technology | Finding safe and efficient shipping routes in ice-covered waters: A framework and a model |
22 | Li Zhuang | 2021 | Journal of Loss Prevention in The Process Industries | Decision-making on process risk of Arctic route for LNG carrier via dynamic Bayesian network modeling |
20 | Wang Yangjun | 2018 | Symmetry-Basel | An Improved A * Algorithm Based on Hesitant Fuzzy Set Theory for Multi-Criteria Arctic Route Planning |
16 | Zhang Weibin | 2020 | Ocean Engineering | Multi-ship following operation in ice-covered waters with consideration of inter-ship communication |
16 | Zhang Ye | 2020 | Maritime Policy & Management | Real-time assessment and prediction on maritime risk state on the Arctic Route |
13 | Fu Shanshan | 2022 | Ocean Engineering | Towards a probabilistic approach for risk analysis of nuclear-powered icebreakers using FMEA and FRAM |
11 | Li Zhuang | 2022 | Ocean Engineering | A decision support model for ship navigation in Arctic waters based on dynamic risk assessment |
10 | Li Zhuang | 2021 | Sustainability | Risk Reasoning from Factor Correlation of Maritime Traffic under Arctic Sea Ice Status Association with a Bayesian Belief Network |
7 | Li Zhuang | 2022 | Process Safety and Environmental Protection | Using DBN and evidence-based reasoning to develop a risk performance model to interfere ship navigation process safety in Arctic waters |
7 | Shan Yulong | 2019 | Symmetry-Basel | Study on the Allocation of a Rescue Base in the Arctic |
5 | Browne Thomas | 2022 | Marine Policy | A method for evaluating operational implications of regulatory constraints on Arctic shipping |
3 | Judson Brad | 1997 | Journal of Navigation | A Tanker Navigation Safety System |
2 | Zhang Chi | 2022 | Ocean Engineering | A three-dimensional ant colony algorithm for multi-objective ice routing of a ship in the Arctic area |
2 | Wang Chuya | 2022 | Sustainability | Risk Assessment of Ship Navigation in the Northwest Passage: Historical and Projection |
0 | Zvyagina Tatiana | 2022 | Journal of Marine Science and Engineering | Finding Risk-Expenses Pareto-Optimal Routes in Ice-Covered Waters |
0 | Hsieh Tsung-Hsuan | 2022 | Journal of Marine Science and Engineering | Application of Radar Image Fusion Method to Near-Field Sea Ice Warning for Autonomous Ships in the Polar Region |
Ranking | Journal Article | Review Article | Polar Code | Collection of RIFs |
---|---|---|---|---|
1 | Ice concentration | Ice condition | Ice | Ice concentration Ice thickness Topside icing Low temperature Wind speed Alcohol/drug use Vessel speed Extended periods of darkness or daylight Wave height Sea temperature High latitude Remoteness Equipment failure Vessel size Lack of crew experience Human error Vessel type Lack of emergency response equipment Physical and mental conditions Severe weather conditions The environment |
2 | Ice thickness | Ice concentration | Topside icing | |
3 | Wind speed | Ice thickness | Low temperature | |
4 | Vessel speed | Alcohol/drug use | Extended periods of darkness or daylight | |
5 | Visibility | Vessel speed | High latitudes | |
6 | Wave height | Sea temperature | Remoteness | |
7 | Equipment failure | Vessel size (deadweight tonnage, draft, length) | Lack of crew experience | |
8 | Human error | Vessel type | Lack of emergency response equipment | |
9 | Physical and mental conditions | Air temperature | Severe weather conditions | |
10 | Air temperature | Climatic changes | The environment |
Attributes | Name | Classification | Data Source | |
---|---|---|---|---|
Accident attributes | Year | 2005–2012 | AIBN | |
CASA | ||||
2013–2023 | NSRIO | |||
Lloyd’s | ||||
Season | Summer (May–October) | AIBN | ||
CASA | ||||
Summer (May–October) | NSRIO | |||
Lloyd’s | ||||
Type of accident | Equipment failure | AIBN CASA NSRIO Lloyd | ||
Grounding | ||||
Collision | ||||
Fire/explosion | ||||
Loss of control | ||||
Allision | ||||
Other | ||||
Vessel characteristics | Vessel type | Fishing vessel | AIBN CASA NSRIO Lloyd’s | |
Dangerous cargo vessel | ||||
Bulk carrier | ||||
Ro-ro passenger ship | ||||
Icebreaker | ||||
Other | ||||
Vessel tonnage (t) | Small: (0, 500] | AIBN CASA NSRIO Lloyd’s | ||
Secondary small: (500, 3000] | ||||
Medium: (3000, 10000] | ||||
Secondary large: (10000, 30000] | ||||
Large: (30000, +∞) | ||||
Vessel age (years old) | Small: (0, 5] | AIBN CASA NSRIO Lloyd’s | ||
Secondary small: (5, 10] | ||||
Medium: (10, 20] | ||||
Secondary large: (20, 30] | ||||
Large: (30, +∞) | ||||
Sea ice environment | Ice concentration | Freedom of navigation: [0, 10) | CMS | |
Unable to sail on the planned course: [10, 30] | ||||
Obstacles to navigation: [40, 80] | ||||
Unable to sail independently without icebreaker support: [90, 100] | ||||
Ice thickness (cm) | New ice: (0, 10] | CMS | ||
Young ice: (10, 30] | ||||
Thin first-year ice: (30, 70] | ||||
Medium first-year ice: (70, 120) | ||||
Thick first-year ice: [120, 250) | ||||
Second-year ice: [250, 300) | ||||
Multi-year ice: [300, +∞) | ||||
Meteorological conditions | Wind scale (m/s) | One: [0.3, 1.5] | ECMWF | |
Two: [1.6, 3.3] | ||||
Three: [3.4, 5.4] | ||||
Four: [5.5, 7.9] | ||||
Five: [8.0, 10.7] | ||||
Six: [10.8, 13.8] | ||||
Seven: [13.9, 17.1] | ||||
Eight: [17.2, 20.7] | ||||
Nine: [20.8, 24.4] | ||||
Wind direction | N | S | ECMWF | |
NE | SW | |||
E | W | |||
SE | NW | |||
Air temperature (°C) | One: [−20, 0) | ECMWF | ||
Two: [0, 4.9] | ||||
Three: [5, 9.9] | ||||
Four: [10, 11.9] | ||||
Five: [12, 13.9] | ||||
Six: [14, 15.9] |
The Selected Indicators | The Evaluated Performance |
---|---|
Precision | Accuracy |
Recall | Consistency |
F1 score | The balance between precision and recall |
ROC | Accuracy |
Mean absolute error (MAE) | Prediction error |
Root-mean-square error (RMSE) | Prediction error |
Precision | Recall | F1 Score | ROC | MAE | RMSE | |
---|---|---|---|---|---|---|
TAN | 0.970 | 0.970 | 0.970 | 0.998 | 0.047 | 0.173 |
K2 | 0.967 | 0.967 | 0.967 | 0.990 | 0.076 | 0.185 |
Random forest | 0.969 | 0.969 | 0.969 | 0.994 | 0.068 | 0.181 |
SMO | 0.953 | 0.953 | 0.953 | 0.953 | 0.058 | 0.191 |
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Share and Cite
Yang, X.; Zhi, J.; Zhang, W.; Xu, S.; Meng, X. A Novel Data-Driven Prediction Framework for Ship Navigation Accidents in the Arctic Region. J. Mar. Sci. Eng. 2023, 11, 2300. https://doi.org/10.3390/jmse11122300
Yang X, Zhi J, Zhang W, Xu S, Meng X. A Novel Data-Driven Prediction Framework for Ship Navigation Accidents in the Arctic Region. Journal of Marine Science and Engineering. 2023; 11(12):2300. https://doi.org/10.3390/jmse11122300
Chicago/Turabian StyleYang, Xue, Jingkai Zhi, Wenjun Zhang, Sheng Xu, and Xiangkun Meng. 2023. "A Novel Data-Driven Prediction Framework for Ship Navigation Accidents in the Arctic Region" Journal of Marine Science and Engineering 11, no. 12: 2300. https://doi.org/10.3390/jmse11122300
APA StyleYang, X., Zhi, J., Zhang, W., Xu, S., & Meng, X. (2023). A Novel Data-Driven Prediction Framework for Ship Navigation Accidents in the Arctic Region. Journal of Marine Science and Engineering, 11(12), 2300. https://doi.org/10.3390/jmse11122300