State-of-the-Art Review and Future Perspectives on Maneuvering Modeling for Automatic Ship Berthing
Abstract
:1. Introduction
1.1. Background
1.2. Application of Automatic Berthing
1.3. Contributions
- (1)
- Conducts bibliometric and statistical analysis on existing automatic berthing research, and extracts the hot issues of automatic berthing.
- (2)
- Demonstrates the similarities and differences between the conventional MMG model and berthing maneuver MMG model.
- (3)
- Summarizes the motion specifications and hydrodynamic performances of the berthing maneuver, and provides proper mathematical expressions.
1.4. Outline
2. Bibliometric Analysis
2.1. Literature Search and Visualization
- (1)
- The first step is to search the literature in the WoS database and the KCI-Korean journal database, with the following index keywords in the theme, abstract, and keywords: (“berthing*” OR “docking*”) AND (“ASV” OR “unmanned surface vessel” OR “unmanned surface vehicle” OR “autonomous surface vessel” OR “autonomous surface vehicle” OR “ship”) NOT (“underwater” OR “ROV” OR “UUV” OR “AUV” OR “aircraft” OR “drone” OR “car” OR “truck” OR “launch” OR “recovery” OR “cell” OR “actuator”);
- (2)
- The second step is to go through the collected literature and remove the research that is out of this work’s scope; 115 papers are retained;
- (3)
- The third step is to supplement studies and papers that are the source of certain research or cited in the selected papers but not included in the database; finally, 134 papers are added. With the literature collection and filter, a total of 249 articles consistent with the research scope are collected.
- (4)
- The fourth step is to extract the research objects, methods, contents, and publication time from the titles, abstracts, and keyword section of the collected references, and establish a bibliometric database.
- (5)
- The fifth step is to set up the threshold for the occurrence number in the extraction database, and then plot the network illustration on automatic berthing studies and density diagrams of the detailed research methods and techniques.
2.2. Global Analysis
2.3. Correlation Analysis
2.3.1. Risk Assessment, Perception Utilization and Motion Control
2.3.2. Maneuverability Modeling
2.4. Discussion of MMG Model
- ▪
- Hydrodynamic forces acting on the ship are treated quasi-steadily.
- ▪
- The lateral velocity component is small compared with the longitudinal velocity component.
- ▪
- Hydrodynamic forces acting on the ship have strong non-linearity; the ship longitudinal velocity is small, and is of the same order as the lateral velocity and yaw moment.
- ▪
- Thrust and steerage forces have four-quadrant characteristics.
- ▪
- The ship is vulnerable to external disturbances.
- ▪
- Ship motion is assisted by auxiliary devices like side thrusters, tugs, cables, and anchors.
- (1)
- What are the similarities and differences between the conventional MMG maneuvering model and the automatic berthing maneuvering model?
- (2)
- How can an accurate automatic berthing maneuvering model be established?
2.5. Remarks
3. Berthing Modeling Methods
3.1. Mathematical Modeling Methods
3.2. Data-Based Methods
- (1)
- The experimental method mainly contains full/model-scale free-running tests, and captive model tests. The former method establishes a database involving the ship maneuverability indices of advance, transfer, overshoot, track reach, etc., to characterize the turning, yaw-checking, and stopping abilities, and to evaluate the ship’s inherent dynamic and course-keeping stabilities (shown in Figure 9a). Meanwhile, the captive model tests measure the hydrodynamic performance of ships to indicate the ship response under various external conditions.
- (2)
- The empirical method makes a quick estimation of the resistance [70] and hydrodynamic derivatives [71,72] of a target ship. This method conducts regression analysis on massive captive model test results of ships within a hull-type set; the hydrodynamic derivatives are expressed as functions of the ship’s main dimensions, and form parameters (shown in Figure 9b).
3.3. System-Based Methods
- (1)
- The grey box model sets a prior model structure [75]; some identification algorithms, such as maximum likelihood (ML) [76], Kalman filtering (KF) [77], the least squares method (LS) [78] or the improved algorithm are used to identify the experiment/simulation parameters like ship speed, yaw rate, propeller revolution, rudder angle, and trajectories. The maneuverability of the target ship is then obtained (shown in Figure 10a). However, these methods have some inherent disadvantages: the accuracy is sensitive to signal noise and initial estimations, and simultaneous drift is another critical issue.
- (2)
- To cope with these defects, the black box model is proposed. No prior information is needed other than the datasets to gain the mapping relationship between system input variables and output variables [79] (shown in Figure 10b). Machine learning and deep learning techniques have been successfully applied as tools to establish the identified model, for example, the least-squares support-vector machine (LS-SVM) [80], the fully connected neural network [81], the deep neural network [55,82], etc.
3.4. CFD-Based Methods
- (1)
- The virtual captive model tests method conducts specific maneuvering test simulations based on the maneuvering model [83,84] of the target ship, the hydrodynamic characteristics of which are obtained via the CFD method (shown in Figure 11a, where upper left is the dimensionless longitudinal force X’, upper right the propeller thrust coefficient KT, torque coefficient KQ, and thrust efficiency η0, lower left the comparisons of the turning maneuver trajectory, and lower right the comparisons of the heading angle ψ and rudder angle δ time histories). Moreover, the propeller–rudder interaction, ship–ship interaction, ship–bank interaction, shallow-water effects, and detailed ship amplitudes and flow field development could also be obtained. This is the most effective, economical, and widely used method for studying the maneuverability of a ship.
- (2)
- The direct simulation method indicates that the maneuvering model tests are performed with the CFD method directly (shown in Figure 11b, where the upper part is the turning maneuver, and lower part the zig-zag maneuver). This method can assess the maneuverability of a ship under various external conditions and working conditions (calm water, regular and irregular waves, constraint water, wind, propeller reversal, etc.), and observe the response of the target ship to rudder/propeller operations. However, this method demands longer research periods and stronger computing power, and it is not the best option for the maneuverability study at present.
- (3)
- In consideration of the research requirements, efficiency, and rapidity, a hybrid method that integrates the empirical method and CFD method is constructed, based on the study experience and solid foundation [85,86,87]. The hydrodynamic performances of the ship hull, propeller, and rudder are obtained from the CFD method, and the hull–propeller–rudder interaction factors are solved by empirical methods. The accuracy of this method is affected by the ship-type diversity involved in the empirical formula.
3.5. Remarks
4. Berthing Maneuver Modeling
- (1)
- Low-speed effect, large drifting and yaw rate. Compared with the service speed, in the berthing process the longitudinal velocity is very low, the lateral speed and yaw rate are of the same magnitude, the hydrodynamic forces and moments acting on the ship hull present strong non-linearity, and the ship motion covers the full drifting conditions.
- (2)
- Four-quadrant propulsion and steerage. Ships in berthing operation need to operate the main engine frequently to adjust the ship amplitude and maintain the rudder steerage. Under such circumstances, the propeller and rudder work in four-quadrant conditions, and their performances are explicitly different from the designed capabilities.
- (3)
- External disturbances. Under berthing maneuver, thrust due to the propeller cannot counteract the disturbances induced by external environments. To maintain the steerage of the ship, the external disturbances, including the water-cushion effect (shallow-water effect, bank effect, ship–ship interaction), wind, and current, should be considered.
- (4)
- Auxiliary-device-induced forces. Due to the small velocity and low propeller revolution, the rudder is affected by the wake, and the crabbing motion and turning motion of the ship usually count on the assistance of auxiliary devices like side thrusters, tugs, and anchors.
4.1. Hydrodynamic Forces Acting on the Hull
4.1.1. Ship Speed
4.1.2. Drifting and Rotation Rate
- (1)
- The piecewise model [89] involving the small drifting model, moderate drifting model, and large drifting model. It should be noted that the moderate drifting model is the interpolation of the small drifting model and the large drifting model.
- (2)
- (3)
4.2. Propulsion and Steerage Devices
4.3. External Disturbance
4.3.1. Shallow-Water Effect
4.3.2. Bank Effect
4.3.3. Ship–Ship Interaction
4.3.4. Wind and Current
4.4. Auxiliary Devices
4.4.1. Side Thruster
4.4.2. Tug Assistance
4.5. Remarks
5. Conclusions
- (1)
- What are the similarities and differences between the conventional MMG maneuvering model and the automatic berthing maneuvering model?
- (2)
- How can an accurate automatic berthing maneuvering model be established?
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Name | Type | Date | Affiliations | Overview for Development | |
---|---|---|---|---|---|
Asia | Shioji Maru | Training ship (49 m) | 2018 | MES-S, MOL, TUMST, etc. |
|
Sunflower Shiretoko | Car ferry (190 m) | 2022 | MOL Ferry |
| |
Mikage | Container ship (95.4 m, 194TEU) | 2022 | MOL Ferry |
| |
/ | System | 2020 | KASS |
| |
ZhiTeng | Training ship (21 m) | 2019 | China waterborne transport research institute, etc. |
| |
ZhiFei | Container ship (117 m, 300TEU) | 2021 | China waterborne transport research institute, etc. |
| |
Europe | Falco | Car ferry (53.8 m) | 2018 | Rolls-Royce |
|
Folgefonn | Ferry (83 m) | 2018 | Wartsilia |
| |
YARA Birkeland | Container ship (117 m, 300TEU) | 2021 | Kongsberg and Yara |
| |
PENTA | Fully integrated assisted docking system | 2021 | Volvo Penta |
|
Indices | Conventional MMG Model | MMG Berthing Maneuver Model | ||
---|---|---|---|---|
Similarities | Modeling methods | Data-based System-based CFD-based | Data-based System-based CFD-based | |
Differences | Hull | Ship speed | 0.1 < Fr < 0.3 | Fr < 0.1 |
Drifting | |β| = [0, 20°] |r’| = [0, 0.6] | |β| = [0, 180°] |r’| > 0.6 | ||
Rotation rate | ||||
Propulsion, Steerage devices | Thruster | First-quadrant inflow angle | Four-quadrant inflow angle | |
Rudder | Small resultant inflow angle High rudder effect | Large resultant inflow angle Low rudder effect | ||
External disturbance | Insensitive | Vulnerable and sensitive | ||
Auxiliary devices | None | Side thruster, tug, and cable |
Prediction Methods | Advantages | Disadvantages | |
---|---|---|---|
Data-based | Full/model-scale free-running tests |
|
|
Captive model tests |
|
| |
Empirical methods |
|
| |
System-based | Grey box |
|
|
Black box |
| ||
CFD-based | Virtual captive model tests |
|
|
Direct simulation | |||
Integrated method |
|
|
Motion | Quadrant | θp | U | np |
---|---|---|---|---|
ahead ship ahead telegraph | Ⅰ | 0–90° | ahead | normal |
ahead ship astern telegraph | Ⅱ | 90°–180° | ahead | reverse |
astern ship astern telegraph | Ⅲ | −180°–−90° | astern | reverse |
astern ship ahead telegraph | Ⅳ | −90°–0 | astern | normal |
Propulsion | Advantages | Disadvantages |
---|---|---|
Conventional propulsion |
|
|
Azimuth electric diesel |
|
|
Mechanically azimuth thruster |
|
|
Stern-bow thrusters |
|
|
Water-jet propulsion |
|
|
Water-jet thrusters |
|
|
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Zhang, S.; Wu, Q.; Liu, J.; He, Y.; Li, S. State-of-the-Art Review and Future Perspectives on Maneuvering Modeling for Automatic Ship Berthing. J. Mar. Sci. Eng. 2023, 11, 1824. https://doi.org/10.3390/jmse11091824
Zhang S, Wu Q, Liu J, He Y, Li S. State-of-the-Art Review and Future Perspectives on Maneuvering Modeling for Automatic Ship Berthing. Journal of Marine Science and Engineering. 2023; 11(9):1824. https://doi.org/10.3390/jmse11091824
Chicago/Turabian StyleZhang, Song, Qing Wu, Jialun Liu, Yangying He, and Shijie Li. 2023. "State-of-the-Art Review and Future Perspectives on Maneuvering Modeling for Automatic Ship Berthing" Journal of Marine Science and Engineering 11, no. 9: 1824. https://doi.org/10.3390/jmse11091824
APA StyleZhang, S., Wu, Q., Liu, J., He, Y., & Li, S. (2023). State-of-the-Art Review and Future Perspectives on Maneuvering Modeling for Automatic Ship Berthing. Journal of Marine Science and Engineering, 11(9), 1824. https://doi.org/10.3390/jmse11091824