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Magnetic, modular, undulatory robots as robophysical models for exploration of fish-inspired swimming.

ORAL

Abstract

Evolution has successfully explored various forms of fluid-structure interaction (FSI) for underwater locomotion, from which a great diversity of fish swimming has emerged. However, it remains unclear how fish or fish-inspired swimming emerges from the complex physics of FSI which includes interactions among active structures (e.g., fins and elongated bodies), neuromuscular and motor control, and the physics of fluids. We address this problem using robophysical models of undulatory swimming (magnetic, modular, undulatory robots). Via experimental motor learning, we systematically explored the relationship among the body morphology, motor control, swimming gaits and performance. First, we studied the effects of the robot design (e.g., body length, caudal fin stiffness) on the emergence of swimming gaits and performance (e.g., forward/backward swimming, turning maneuver). Second, we identified the embodied properties in the FSI of the emergent gaits using motor learning, frequency response and motor control perturbation. Third, we employed time-resolved Particle Image Velocimetry (PIV) to quantitatively study the hydrodynamic properties for a diversity of emergent swimming gaits. These results provide novel insights and guiding principles for fish and fish-inspired robot swimming.

Publication: H. Deng, P. Burke, D. Li and B. Cheng, "Design and experimental learning of swimming gaits for a magnetic, modular, undulatory robot," 2021 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), 2021, pp. 9562-9568.<br><br>D. Li, H. Deng, Y. E. Bayiz, and B. Cheng, "Effects of design and hydrodynamic parameters on optimized swimming for simulated, fish-inspired robots," (IROS 2022, accepted)<br><br>H. Deng, C. Nitory, D. Li, K. Panta, S. Priya and B. Cheng, "Design of an autonomous modular swimming robot with disturbance rejection," (ICRA 2023, submitted).<br><br>H. Deng, D. Li, C. Nitory, A. Wertz, S. Priya and B. Cheng, "Robot learning and rhythm control generate diverse, robust swimming at an invariant Strouhal number," (Science advances, submitted).<br><br>H. Deng, et al, "Effects of caudal fin stiffness on forward swimming and turning maneuver via experimental robot learning," (planned paper).<br><br>H. Deng, et al, "A particle image velocimetry study of a fish-inspired robot at diverse swimming gaits," (planned paper).

Presenters

  • Hankun Deng

    Penn State University

Authors

  • Hankun Deng

    Penn State University

  • Donghao Li

    Penn State University

  • Kundan Panta

    The Pennsylvania State University

  • Bo Cheng

    Pennsylvania State University