Nonlinear Innovation-Based Maneuverability Prediction for Marine Vehicles Using an Improved Forgetting Mechanism
Abstract
:1. Introduction
- (1)
- In this paper, an improved EFK algorithm was developed by virtue of nonlinear innovation. This solved the problem of limited innovation length for full-scale trail data and improved the online prediction convergence speed in engineering practice. Then, the tangent function was used to process errors. The forgetting factor was introduced to reduce the cumulative impact of historical interference data. The convergence of the improved algorithm identification and the consistency between the real-time prediction of ship maneuvering and the actual navigation were analyzed theoretically. In order to verify the effectiveness of the proposed method, this paper used real ship experimental data for turning tests. On this basis, the improved algorithm was compared with full-scale test data. The results showed that the proposed algorithm is effective, and that the real-time prediction data were more than 95% consistent with the ship’s actual navigation. This is more suitable for ship model parameter identification and maneuverability prediction. This has leading significance for practical engineering applications.
- (2)
- In this paper, a maneuvering prediction method was proposed for 4-DOF attitude prediction, using the corresponding nonlinear innovation algorithm. The parameters in the motion model were optimized to reduce the estimation error of the minimum variance, greatly improving the identification accuracy and efficiency. The most important purpose of this was to reduce the fitting time and improve the fitting degree. The effectiveness of this method for the real-time identification of ship motion mathematical model parameters was proven, and the feasibility of the ship motion prediction was verified. This method provides a theoretical reference for the real-time identification of actual ship motion.
2. Description of the Mathematical Model
3. Design of the Nonlinear Innovation Based on the Identification Algorithm
4. Experiment for the Maneuvering Prediction and Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Quantity | Conversion from Gaussian and CGS EMU to SI |
---|---|
Length between perpendiculars | |
Breadth | |
Mean draft | |
Displacement volume | |
Height of the initial stability | |
Block coefficient | |
Rudder area | |
Aspect ratio | |
Max. rudder angle | |
Max. rudder rate | |
Propeller diameter | |
Speed | |
Max. shaft velocity |
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Song, C.; Zhang, X.; Zhang, G. Nonlinear Innovation-Based Maneuverability Prediction for Marine Vehicles Using an Improved Forgetting Mechanism. J. Mar. Sci. Eng. 2022, 10, 1210. https://doi.org/10.3390/jmse10091210
Song C, Zhang X, Zhang G. Nonlinear Innovation-Based Maneuverability Prediction for Marine Vehicles Using an Improved Forgetting Mechanism. Journal of Marine Science and Engineering. 2022; 10(9):1210. https://doi.org/10.3390/jmse10091210
Chicago/Turabian StyleSong, Chunyu, Xianku Zhang, and Guoqing Zhang. 2022. "Nonlinear Innovation-Based Maneuverability Prediction for Marine Vehicles Using an Improved Forgetting Mechanism" Journal of Marine Science and Engineering 10, no. 9: 1210. https://doi.org/10.3390/jmse10091210
APA StyleSong, C., Zhang, X., & Zhang, G. (2022). Nonlinear Innovation-Based Maneuverability Prediction for Marine Vehicles Using an Improved Forgetting Mechanism. Journal of Marine Science and Engineering, 10(9), 1210. https://doi.org/10.3390/jmse10091210