Unified Structural-Hydrodynamic Modeling of Underwater Underactuated Mechanisms and Soft Robots

arXiv:2603.07939v1
Predicted impact top 44% in RO · last 90 daysOriginality Highly original
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This work provides a unified modeling approach for researchers and engineers working with underwater underactuated and soft robots, addressing the challenge of identifying high-dimensional structural and hydrodynamic parameters.

This paper proposes a trajectory-driven global optimization framework to model underwater underactuated and soft robotic systems by simultaneously identifying coupled internal elastic, damping, and distributed hydrodynamic parameters. The framework achieved a normalized end effector position error below 5% for an underactuated multibody mechanism and demonstrated strong real-to-sim consistency for an octopus-inspired soft arm and a swimming octopus robot.

Underwater robots are widely deployed for ocean exploration and manipulation. Underactuated mechanisms are particularly advantageous in aquatic environments, as reducing actuator count lowers the risk of motor leakage while introducing inherent mechanical compliance. However, accurate modeling of underwater underactuated and soft robotic systems remains challenging because it requires identifying a high-dimensional set of internal structural and external hydrodynamic parameters. In this work, we propose a trajectory-driven global optimization framework for unified structural-hydrodynamic modeling of underwater multibody systems. Inspired by the Covariance Matrix Adaptation Evolution Strategy (CMA-ES), the proposed approach simultaneously identifies coupled internal elastic, damping, and distributed hydrodynamic parameters through trajectory-level matching between simulation and experimental motion. This enables high-fidelity reproduction of both underactuated mechanisms and compliant soft robotic systems in underwater environments. We first validate the framework on a link-by-link underactuated multibody mechanism, demonstrating accurate identification of distributed hydrodynamic coefficients, with a normalized end effector position error below 5% across multiple trajectories, varying initial conditions, and both active-passive and fully passive configurations. The identified modeling strategy is then transferred to a single octopus-inspired soft arm, showing strong real-to-sim consistency without manual retuning. Finally, eight identified arms are assembled into a swimming octopus robot, where the unified parameter set enables realistic whole body behavior without additional parameter calibration. These results demonstrate the scalability and transferability of the proposed structural-hydrodynamic modeling framework across underwater underactuated and soft robotic systems.

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