Latent-Cause Extraction Model in Maritime Collision Accidents Using Text Analytics on Korean Maritime Accident Verdicts
Abstract
:1. Introduction
2. Materials and Methods
2.1. Text Data Preprocessing
2.1.1. Raw Data of Maritime Accident Verdicts
2.1.2. Preprocessing Conditions
2.2. Word Propensity Explanation and Examples
2.2.1. Word Appearance Frequency Extraction
2.2.2. Word Propensity Extraction
2.3. Word Propensity Application
2.4. Latent-Cause Word Appearances in Complex Maritime Accidents
3. Results
3.1. Word Propensity Derived from the Training Dataset
3.2. Application of Word Propensity to the Separated Groups of Verdicts
3.3. Arrangement of Latent Cause Words in Complex Maritime Accidents
4. Discussion
4.1. Application of Word Propensity to the Separated Groups of Verdicts
4.2. Contexts of Latent Cause Words in Complex Maritime Accidents
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
- [1].
- This collision accident was caused by “Ship A” neglecting maintenance of their strainer in the fuel supply system; during departure from the port, the fuel oil strainer selection lever deviated from the correct position, the fuel oil supply to the main engine was blocked, and the main engine suddenly stopped.
- [2].
- The main engine of a ship is the most important apparatus, and when performing any maintenance work necessary for main engine operation, it must be performed under direct control and supervision of the chief engineer or the first engineer, who is the person in charge.
- [3].
- For scheduled maintenance work on a ship, before performing the work, education (a ToolBox Meeting) on safety and the precautions that should be taken while performing the work must be conducted by the chief engineer or the person in charge.
Ship Name | “Ship A” | “Ship B” | |
---|---|---|---|
Port of Registry | Ulsan City | Ulsan City | |
Ship Owner | C | D Marine Co., Ltd. | |
Gross Tonnage | 626 Tons | 13.1 tons | |
Engine type/output | 1 diesel engine/735 kw | 1 diesel engine | |
Marine accident involved person | A | B | - |
Official title | First engineer | Chief engineer | - |
Type of license | Second engineer (**-**-**-****) | Fourth engineer (**-**-**-****) | - |
Ship Name | “Ship C” | “Ship D” | “Ship E” |
Port of Registry | Ulsan City | Ulsan City | Ulsan City |
Ship Owner | D Marine Co., Ltd. | D Marine Co., Ltd. | D Marine Co., Ltd. |
Gross Tonnage | 10 Tons | 11 Tons | 24 Tons |
Engine type/output | 1 diesel engine | 1 diesel engine | 1 diesel engine |
Marine accident involved person | - | - | - |
Official title | - | - | - |
Type of license | - | - | - |
Accident occurred date | around 21:18, 7 February 2019 | ||
Location of the accident | 35°30’05” North latitude, 129°22’27” East longitude (on the sea in front of plying boat moorings in Jangsaengpo Port, Ulsan City) |
- (1)
- Application of navigation.
- (2)
- Reason for the main engine of “Ship A” suddenly stopping
- (3)
- Responsibility for negligence of main engine maintenance for “Ship A”
- A.
- As the main engine of a ship is the most important apparatus, when performing any maintenance work necessary for the operation of the main engine, it must be performed under the direct control and supervision of the chief engineer or the person in charge, the first engineer.
- B.
- For scheduled maintenance work on the ship, education (a tool box meeting) on safety and precautions when performing the work must be conducted by the chief engineer or the person in charge before performing the work.5 September 2019
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Category | Number of Verdicts | Training Dataset | Test Dataset |
---|---|---|---|
Casualty | 67 | 67 | - |
Capsizes | 34 | 34 | - |
Collision | 550 | 410 | 140 |
Sinking | 36 | 36 | - |
Fire explosion | 61 | 61 | - |
Words | Casualty | Sinking | Capsizes | Collision | Fire |
---|---|---|---|---|---|
Word a | 5 | 12 | 2 | 1 | 98 |
Word b | 3 | 120 | 17 | 2 | 9 |
Word c | 1 | 1 | 67 | 0 | 0 |
Word d | 0 | 21 | 10 | 250 | 7 |
Word e | 80 | 2 | 4 | 10 | 3 |
Words | Casualty | Sinking | Capsizes | Collision | Fire |
---|---|---|---|---|---|
Word a | 4.2% | 12.2% | 1.7% | 0.8% | 81.1% |
Word b | 2.0% | 79.5% | 11.3% | 1.3% | 6.0% |
Word c | 7.4% | 1.4% | 91.1% | 0.0% | 0.0% |
Word d | 0.0% | 10.3% | 8.5% | 73.8% | 7.4% |
Word e | 69.8% | 5.0% | 7.0% | 10.1% | 6.0% |
Word (Translated) | Casualty | Capsizes | Collision | Sinking | Fire and Explosion |
---|---|---|---|---|---|
(1) Hitting | 95.39% | 0.00% | 0.48% | 0.00% | 4.13% |
(2) Hole | 9.89% | 0.00% | 2.29% | 39.87% | 47.96% |
(3) Twisted | 91.22% | 0.00% | 0.00% | 8.78% | 0.00% |
(4) Refrigerator | 0.00% | 12.05% | 2.40% | 2.28% | 83.28% |
(5) Wave | 24.61% | 35.49% | 1.36% | 37.20% | 1.35% |
(6) Flipped | 4.62% | 92.61% | 2.77% | 0.00% | 0.00% |
(7) Material | 12.38% | 1.02% | 0.93% | 0.39% | 85.28% |
… | … | … | … | … | … |
(9436) Lubrication | 0.00% | 7.37% | 0.52% | 12.43% | 79.67% |
(9437) Locked | 5.88% | 0.00% | 0.00% | 51.07% | 43.05% |
(9438) Equipment | 18.89% | 24.97% | 15.34% | 15.55% | 25.24% |
(9439) Loaded | 6.93% | 59.67% | 3.58% | 23.72% | 6.10% |
(9440) Light bulb | 0.00% | 0.00% | 1.89% | 20.86% | 77.25% |
(9441) Drowsiness | 0.00% | 0.00% | 58.18% | 0.00% | 41.82% |
(9442) Fatigue | 26.68% | 2.87% | 27.59% | 30.05% | 12.81% |
Word (Translated) | Casualty | Capsizes | Collision | Sinking | Fire and Explosion |
---|---|---|---|---|---|
(1) Bounced | 98.19% | 0.00% | 1.81% | 0.00% | 0.00% |
(2) Symptom | 94.83% | 0.00% | 5.17% | 0.00% | 0.00% |
(3) Drunk | 71.59% | 0.00% | 28.41% | 0.00% | 0.00% |
(4) Unlicensed | 68.68% | 0.00% | 21.28% | 5.33% | 4.71% |
(5) Wearing | 65.83% | 18.04% | 1.03% | 8.08% | 7.01% |
Word (Translated) | Casualty | Capsizes | Collision | Sinking | Fire and Explosion |
---|---|---|---|---|---|
(1) Lower | 0.00% | 97.31% | 2.69% | 0.00% | 0.00% |
(2) Piece | 9.95% | 73.54% | 2.85% | 0.00% | 13.66% |
(3) Asked | 26.60% | 73.40% | 0.00% | 0.00% | 0.00% |
(4) Reject | 6.42% | 42.18% | 6.25% | 10.46% | 34.68% |
(5) Trim | 0.00% | 40.53% | 1.39% | 58.08% | 0.00% |
Word (Translated) | Casualty | Capsizes | Collision | Sinking | Fire and Explosion |
---|---|---|---|---|---|
(1) Updated | 0.00% | 0.00% | 7.00% | 93.00% | 0.00% |
(2) Interfered | 0.00% | 0.00% | 11.50% | 88.50% | 0.00% |
(3) Too short | 0.00% | 0.00% | 20.17% | 45.94% | 33.89% |
(4) Systemical | 25.48% | 0.00% | 18.74% | 43.60% | 12.19% |
(5) Ahead | 0.00% | 0.00% | 65.57% | 30.57% | 3.87% |
Word (Translated) | Casualty | Capsizes | Collision | Sinking | Fire and Explosion |
---|---|---|---|---|---|
(1) Short | 0.00% | 0.00% | 0.24% | 0.45% | 99.31% |
(2) Forgot | 0.00% | 0.00% | 21.55% | 0.00% | 78.45% |
(3) List | 0.00% | 0.00% | 37.31% | 0.00% | 62.69% |
(4) Essential | 0.00% | 0.00% | 35.01% | 23.46% | 41.53% |
(5) Checked | 0.00% | 0.00% | 7.54% | 57.26% | 35.20% |
Category | Context in the Verdict (Translated) |
---|---|
(1) Casualty | “The crew bounced off the control console and were seriously harmed.” |
“The crew felt the symptoms of a propeller malfunction but ignored them.” | |
“The captain or officer had drunk the liquor or liquefied medicine.” | |
“The captain handed over control of the ship to an unlicensed person.” | |
“None of the crew members working on the deck were wearing life jackets.” | |
(2) Capsizes | “The height of the ship’s bridge was lower than that of the other ship.” |
“In front of the bridge, a large piece of the ship structure was loaded.” | |
“The captain asked the officer if anything had happened during the duty.” | |
“The crew members did not reject the unwarranted order of the captain.” | |
“The ship always has to keep the trim within 10 degrees for safety reasons.” | |
(3) Sinking | “The nautical chart of the ship was not updated.” |
“The captain’s decision should not have been interfered with.” | |
“The distance to the pier was too short when the engine stopped.” | |
“The owner of the ships did not provide systemic safety management.” | |
“The ship was sailing by taking the wind from ahead of the ship.” | |
(4) Fire and explosion | “The captain found out that fire started from a short circuit in the cable.” |
“The crew forgot to turn on the auxiliary blower for the main engine.” | |
“Crew members were not using a checklist of equipment before sailing.” | |
“The conditions of essential equipment should be maintained.” | |
“The main engine and equipment were not tested and checked.” |
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Hwang, T.; Youn, I.-H. Latent-Cause Extraction Model in Maritime Collision Accidents Using Text Analytics on Korean Maritime Accident Verdicts. Appl. Sci. 2022, 12, 914. https://doi.org/10.3390/app12020914
Hwang T, Youn I-H. Latent-Cause Extraction Model in Maritime Collision Accidents Using Text Analytics on Korean Maritime Accident Verdicts. Applied Sciences. 2022; 12(2):914. https://doi.org/10.3390/app12020914
Chicago/Turabian StyleHwang, Taemin, and Ik-Hyun Youn. 2022. "Latent-Cause Extraction Model in Maritime Collision Accidents Using Text Analytics on Korean Maritime Accident Verdicts" Applied Sciences 12, no. 2: 914. https://doi.org/10.3390/app12020914
APA StyleHwang, T., & Youn, I. -H. (2022). Latent-Cause Extraction Model in Maritime Collision Accidents Using Text Analytics on Korean Maritime Accident Verdicts. Applied Sciences, 12(2), 914. https://doi.org/10.3390/app12020914