Study of the Cone-Shaped Drogue for a Deep-Towed Multi-Channel Seismic Survey System Based on Data-Driven Simulations
Abstract
:1. Introduction
2. Numerical Model
3. Physical Experiment
3.1. Circulating Water Tank Equipment
3.2. Data Collection
3.3. Experiment Results
4. Virtual Simulation
4.1. Parameter Tuning
4.2. Building Data Library
5. Machine Learning Processing
5.1. Polynomial Regression
5.2. Neural Network Regression
5.2.1. Basic Structure of Neural Networks
5.2.2. Establishment of Neural Networks
5.2.3. Results and Discussion
6. Summary
- (1)
- The five design variables and three research objectives were determined according to the Morison formula. The rotational angle, angular velocity, angular acceleration, velocity, and acceleration were selected as input design variables, and the drag forces Fx, lateral forces Fy, and torque Mz were respectively taken as the output research objectives. According to the motion characteristics of the towed vehicle and the cone-shaped drogue in actual sea trial, a reasonable range of design variables was set.
- (2)
- The simulation model was calibrated with the aid of physical experiments to ensure that the simulation results accurately reflected the mapping relationship between the design variables and the research objectives, and a large number of samples were obtained by the simulation model. After transforming coordinates and low-pass filtering of the data, a data library was established.
- (3)
- Polynomial regression and neural network regression algorithms were used to create the surrogate model. Analysis results show that the surrogate model obtained by machine learning have good performance in predicting research objectives. The results also reveal that the neural network regression algorithm is superior to polynomial regression algorithm and its largest error of mean square is less than 0.8 (N2/N2·mm2) and its R-squared is close to 1. Therefore, the surrogate model that maps the relationship between the hydrodynamic characteristics of the drogue and towing conditions was established successfully.
- (1)
- As the information of the current step is merely adopted to predict the research target, neither the polynomial regression nor neural network regression considers the cumulative effect of the front steps. Therefore, the current surrogate model is fit for situations in which the cumulative effect of the front steps is not obvious, such as the exploration stage of the deep-towed system. In the future, the time-series algorithm will be used to model the diving and rising stages, during which the cumulative effect is non-negligible.
- (2)
- The geometry of the cone-shaped drogue is unchanged here. The geometry of the cone-shaped drogue will be set as an independent variable so that the cone-shape drogue can be optimised to stabilise the deep-towed system.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Data1 | Data2 | Data3 | Data4 | Data5 | Data6 | Data7 | Data8 | Data9 | |
---|---|---|---|---|---|---|---|---|---|
Angle (rad) | 0.177 0.530 | 0.262 0.262 | 0.26 0.26 | 0.083 0.533 | 0.015 0.419 | 0.28 0.52 | 0.1 0.4 | 0 0.37 | 0.09 0.52 |
Angular vel. (rad/s) | 0.35 0.35 | 0 0 | 0 0 | 0.167 0.167 | 0.11 0.3 | −0.5 0.46 | −0.6 0.2 | −0.36 0.52 | −0.41 0.43 |
Angular accel. (rad/s2) | 0 0 | 0 0 | 0 0 | 0 0 | −1.29 0.56 | −0.93 0.913 | −2.0 0 | −1.2 2.1 | −1.02 1.46 |
Velocity (mm/s) | 354.67 1062.83 | 194.7 500 | 200 650 | 99.6 639.6 | 181.2 500 | 128.42 520 | 137.4 500.3 | 150 600 | 14.12 600 |
Acceleration (mm/s2) | 700 700 | 0 1071.43 | −300 500 | 200 200 | −266.74 735.825 | −471.2 471.22 | −322.17 376.971 | −1125 750 | −750 1500 |
Fx(N2) | Fy(N2) | Mz(N2˙mm2) | |
---|---|---|---|
Polynomial Regression | 0.0452 | 0.0015 | 0.8310 |
Neural Network Regression | 0.0297 | 0.0019 | 0.7341 |
Fx(N2) | Fy(N2) | Mz(N2˙mm2) | |
---|---|---|---|
Polynomial Regression | 0.9891 | 0.9929 | 0.9868 |
Neural Network Regression | 0.9928 | 0.9910 | 0.9883 |
Fx (N) | Fy (N) | Mz (N˙mm) | |
---|---|---|---|
Average | 2.1722 | 1.7746 | 5.4190 |
MIN | 0.0296 | 0.0020 | 0.7526 |
MAX | 12.7854 | 4.8293 | 23.6963 |
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Zhu, X.; Sun, M.; He, T.; Yu, K.; Zong, L.; Choi, J.-H. Study of the Cone-Shaped Drogue for a Deep-Towed Multi-Channel Seismic Survey System Based on Data-Driven Simulations. J. Mar. Sci. Eng. 2021, 9, 1367. https://doi.org/10.3390/jmse9121367
Zhu X, Sun M, He T, Yu K, Zong L, Choi J-H. Study of the Cone-Shaped Drogue for a Deep-Towed Multi-Channel Seismic Survey System Based on Data-Driven Simulations. Journal of Marine Science and Engineering. 2021; 9(12):1367. https://doi.org/10.3390/jmse9121367
Chicago/Turabian StyleZhu, Xiangqian, Mingqi Sun, Tianhao He, Kaiben Yu, Le Zong, and Jin-Hwan Choi. 2021. "Study of the Cone-Shaped Drogue for a Deep-Towed Multi-Channel Seismic Survey System Based on Data-Driven Simulations" Journal of Marine Science and Engineering 9, no. 12: 1367. https://doi.org/10.3390/jmse9121367
APA StyleZhu, X., Sun, M., He, T., Yu, K., Zong, L., & Choi, J. -H. (2021). Study of the Cone-Shaped Drogue for a Deep-Towed Multi-Channel Seismic Survey System Based on Data-Driven Simulations. Journal of Marine Science and Engineering, 9(12), 1367. https://doi.org/10.3390/jmse9121367