Design and control of soft biomimetic pangasius fish robot using fin ray effect and reinforcement learning
Samuel M. Youssef, MennaAllah Soliman, Mahmood A. Saleh, Ahmed H. Elsayed, Ahmed G. Radwan
- 发表年份
- 2022
- 引用次数
- 29
- 访问权限
- 开放获取
摘要
Soft robots provide a pathway to accurately mimic biological creatures and be integrated into their environment with minimal invasion or disruption to their ecosystem. These robots made from soft deforming materials possess structural properties and behaviors similar to the bodies and organs of living creatures. However, they are difficult to develop in terms of integrated actuation and sensing, accurate modeling, and precise control. This article presents a soft-rigid hybrid robotic fish inspired by the Pangasius fish. The robot employs a flexible fin ray tail structure driven by a servo motor, to act as the soft body of the robot and provide the undulatory motion to the caudal fin of the fish. To address the modeling and control challenges, reinforcement learning (RL) is proposed as a model-free control strategy for the robot fish to swim and reach a specified target goal. By training and investigating the RL through experiments on real hardware, we illustrate the capability of the fish to learn and achieve the required task.
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