Quantitative Ship Collision Frequency Estimation Models: A Review
Abstract
:1. Introduction
2. Quantitative Ship Collision Frequency Estimation Models
2.1. Basic Scientific Approach to Risk Analysis in Maritime Transport
2.2. Analytical Models
2.2.1. IWRAP Analytical Models
2.2.2. Other Analytical Models
2.3. AIS Data-Processing-Based Models
2.4. Simulation Models
2.5. Model Classification
2.6. Methods for Estimating Causation Probabilities
3. Disadvantages of Existing Models and Improvement Possibilities
3.1. Disadvantages of Existing Models
- (a)
- (b)
- The aspect of uncertainty, which is part of the risk analysis, is not taken into account in most of the models used for calculating the causation probability [29], and this is particularly emphasized in the analysis of the human and organizational factors [14]. The modeling of the human factor and the lack of analysis of the uncertainty aspect have also been identified as a shortcoming in existing models within the research [76].
- (c)
- The lack of a generally accepted standard for the storage of data on maritime accidents, i.e., ship collisions with the associated detailed information, represents an issue [77]. The first problem is manifested in the fact that different models for estimating the collision frequency use different methods for detecting collision candidates [14], and the accuracy of each of these methods cannot be assessed well enough due to the lack of a standard collision database (and all the relevant details) against which the results of the model and the corresponding methods of detection of collision candidates could be compared [15]. Another potential problem arises from a possible bias in the models for calculating causation probability because such models tend to rely heavily on expert knowledge in the absence of data.
- (d)
- Most of the existing AIS data-processing-based models for estimating collision frequencies are designed for a specific navigation area, which has its own specific characteristics, and their application to other geographical navigation areas can be difficult [5].
- (e)
- Furthermore, all models for calculating causation probabilities are closely related to individual geographical navigation areas, which have their own specific properties [77]. Causation probabilities borrowed from other geographical navigation areas are often used in ship collision frequency estimation models [19,28]. This can affect the accuracy of the results, as the causation probability of one navigation area may not accurately describe the traffic situation of another navigation area.
- (f)
- Many AIS data-processing-based models and simulation models for estimating ship collision frequency use their own original methods for detecting collision candidates, do not explicitly express an estimate of the number of actual collisions and do not propose their own causation probability. The validation of such models is hindered due to the fact that it is not possible to compare the results with the actual number of collisions based on statistical historical data [48,77]. Causation probability depends on the navigation area, but also on the model, i.e., the way collision candidates are detected, so it is often not possible to use already calculated existing causation probabilities from the literature [77].
- (g)
- With regard to the detection of collision candidates, most ship collision frequency estimation models analyze two ships (a pair of ships) in a dangerous situation without considering other ships that could potentially affect the encounter of these two ships [14].
- (h)
- According to the same source [14], most AIS data-processing-based models for estimating the ship collision frequency detect collision candidates by analyzing AIS data in time intervals, which may cause an error because the time between two iterations is “ignored”. The problem is particularly emphasized in the situation of a dangerous encounter between two ships, since the kinematic status of the ships changes significantly (due to the critical situation), i.e., the criteria parameters on the basis of which the collision candidate is detected change. It follows that there is a possibility that the model may fail to detect a collision candidate due to the “ignored” time. Additionally, the direct use of AIS data assesses the risk of the current traffic situation in a navigation area, but not of a possible future hypothetical situation (change in traffic volume and structure, change in rules and regulations, etc.).
- (i)
- Analytical models for estimating ship collision frequency treat ship passages on a route (i.e., departures of ships) as a stationary Poisson process, which is often not a realistic assumption [41]. Most of the time, the number of ships passing a route varies depending on the time of day, month, etc. For example, in the Strait of Istanbul, there is a significant difference in day and night traffic [70], but this is also true for many other navigation areas.
- (j)
- Bend collision scenarios have not been adequately addressed among existing analytical models [41], including the models used in IWRAP [19]. Random sailing direction collision scenarios are also inadequately analyzed (e.g., IWRAP makes approximations to address this scenario by using head-on and crossing collision scenario to simulate random sailing direction collision scenario).
3.2. Improvement Possibilities of Existing Models
- (a)
- When developing the model, it is necessary to define which scientific approach to risk analysis will be used; this can be carried out using the methodology presented in [29].
- (b)
- The uncertainty aspect needs to be included in the models used to calculate causation probability as it improves the accuracy of the causation probability itself. The research [88] suggests the use of the “Credal Network” concept for conducting probabilistic inference with an interval, thus including the aspect of uncertainty in the model for calculating the causation probability. The research concluded that the highest degree of uncertainty is the result of individual exact probability values in the Bayesian network determined based on the collected expert knowledge, and the paper proposes a solution by introducing probability intervals (instead of single probability values). Regarding the calculation of the causation probability, it is necessary to take into account the IMO guidelines for Human Reliability Analysis (HRA), which include the analysis using the generic tools “Technique for Human Error Rate Prediction (THERP)” and “Human Error Assessment and Reduction Technique (HEART)” [76].
- (c)
- The existence of standards for the storage of ship collision information, together with collision details relevant to the development and testing of models, may help to resolve this problem. The long-term existence of such a publicly available database for at least one significant geographical navigation area would allow testing and validation of all models using a common database. In this way, comparison of results from different models is valid, as differences in results could not be attributed to the data, and the accuracy of each model’s results is measured by comparison with recorded actual collisions and associated details.
- (d)
- It is desirable to develop simulation models for estimating ship collision frequency that can be readily adapted for use in different navigation areas. Examples of computer simulation models that can be used in different navigation areas without demanding modifications are presented in [39,41]. The popularity of analytical models for estimating ship collision frequency stems from their practicality and applicability in different geographical navigation areas.
- (e)
- Although practice has shown that the use of “borrowed” causation probabilities from other navigation areas produces results of satisfactory accuracy [17], it is recommended to use the causation probability of the navigation area for which the ship collision risk is assessed.
- (f)
- For the developed AIS data-processing-based models and simulation models that estimate collision frequency, it is necessary to calculate the corresponding causation probability if the method used by a model to detect collision candidates differs from existing collision detection methods for which a calculated causation probability exists. This is also highlighted in [77].
- (g)
- The focus should be on approaches that simultaneously consider situations in which multiple dangerous encounters occur without analyzing all pairs of ships separately [14]. In other words, it is necessary to include the influence of other surrounding ships on the possibility of a collision of a pair of ships in a hazardous situation. An example of such an approach can be found in [64].
- (h)
- Instead of analyzing the data in time intervals, it is desirable to develop an approach that considers the dangerous encounter of two ships as a “process” [15]. This approach can prevent an error that occurs due to a neglected time interval in a dangerous encounter between two ships. Hypothetical scenarios can be addressed using simulation models. Alternatively, an example of the methodology from the AIS data-processing-based model which can address hypothetical scenarios to some extent is described in [52].
- (i)
- Simulation models for ship collision frequency estimation can successfully overcome this shortcoming [76].
- (j)
- Models covering bend collisions should be developed [41], as well as models that address random sailing direction collisions. Simulation models represent a suitable solution to this issue.
4. Discussion
4.1. Discussion on Recent Related Literature Reviews
4.2. General Remarks
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Model Class Type | Existing Collision Candidate Detection Approaches | |||
---|---|---|---|---|
Safe Boundary Approach | Synthetic Indicator Approach | Non-Conventional Approaches and Approaches Emerged from Robotics and Artificial Intelligence | ||
Ship Domain | Direct/Nearly Direct Ship–Ship Contact and Collision Diameter | |||
AIS data-processing-based models | [48] *, [24] *, [52] *, [54] *, [11] *, [56,60] | [44] * | [57,58] | [15,64] |
Simulation models | [72,73] | [65] *, [41] *, [39] | [67] *, [69] | [66] *, [70,71] |
Analytical models | [7], [17] *, [28] *, [40] *, [45] *, [47] | [46] * |
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Čorić, M.; Mandžuka, S.; Gudelj, A.; Lušić, Z. Quantitative Ship Collision Frequency Estimation Models: A Review. J. Mar. Sci. Eng. 2021, 9, 533. https://doi.org/10.3390/jmse9050533
Čorić M, Mandžuka S, Gudelj A, Lušić Z. Quantitative Ship Collision Frequency Estimation Models: A Review. Journal of Marine Science and Engineering. 2021; 9(5):533. https://doi.org/10.3390/jmse9050533
Chicago/Turabian StyleČorić, Mirko, Sadko Mandžuka, Anita Gudelj, and Zvonimir Lušić. 2021. "Quantitative Ship Collision Frequency Estimation Models: A Review" Journal of Marine Science and Engineering 9, no. 5: 533. https://doi.org/10.3390/jmse9050533
APA StyleČorić, M., Mandžuka, S., Gudelj, A., & Lušić, Z. (2021). Quantitative Ship Collision Frequency Estimation Models: A Review. Journal of Marine Science and Engineering, 9(5), 533. https://doi.org/10.3390/jmse9050533