Paper ID: 2502.18696 • Published Feb 25, 2025
Interpretable Data-Driven Ship Dynamics Model: Enhancing Physics-Based Motion Prediction with Parameter Optimization
TL;DR
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The deployment of autonomous navigation systems on ships necessitates
accurate motion prediction models tailored to individual vessels. Traditional
physics-based models, while grounded in hydrodynamic principles, often fail to
account for ship-specific behaviors under real-world conditions. Conversely,
purely data-driven models offer specificity but lack interpretability and
robustness in edge cases. This study proposes a data-driven physics-based model
that integrates physics-based equations with data-driven parameter
optimization, leveraging the strengths of both approaches to ensure
interpretability and adaptability. The model incorporates physics-based
components such as 3-DoF dynamics, rudder, and propeller forces, while
parameters such as resistance curve and rudder coefficients are optimized using
synthetic data. By embedding domain knowledge into the parameter optimization
process, the fitted model maintains physical consistency. Validation of the
approach is realized with two container ships by comparing, both qualitatively
and quantitatively, predictions against ground-truth trajectories. The results
demonstrate significant improvements, in predictive accuracy and reliability,
of the data-driven physics-based models over baseline physics-based models
tuned with traditional marine engineering practices. The fitted models capture
ship-specific behaviors in diverse conditions with their predictions being,
51.6% (ship A) and 57.8% (ship B) more accurate, 72.36% (ship A) and 89.67%
(ship B) more consistent.
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