Wu Qiuxuan, Wu Yan, Yang Xiaochen, Zhang Botao, Wang Jian, Chepinskiy Sergey A, Zhilenkov Anton A
Institute of Electrical Engineering, School of Automation, Hangzhou Dianzi University, Hangzhou, China.
HDU-ITMO Joint Institute, Hangzhou Dianzi University, Hangzhou, China.
Front Robot AI. 2022 Apr 20;9:815435. doi: 10.3389/frobt.2022.815435. eCollection 2022.
The soft organisms in nature have always been a source of inspiration for the design of soft arms and this paper draws inspiration from the octopus's tentacle, aiming at a soft robot for moving flexibly in three-dimensional space. In the paper, combined with the characteristics of an octopus's tentacle, a cable-driven soft arm is designed and fabricated, which can motion flexibly in three-dimensional space. Based on the TensorFlow framework, a data-driven model is established, and the data-driven model is trained using deep reinforcement learning strategy to realize posture control of a single soft arm. Finally, two trained soft arms are assembled into an octopus-inspired biped walking robot, which can go forward and turn around. Experimental analysis shows that the robot can achieve an average speed of 7.78 cm/s, and the maximum instantaneous speed can reach 12.8 cm/s.
自然界中的软体生物一直是软臂设计的灵感来源,本文从章鱼触手汲取灵感,旨在设计一款能在三维空间灵活移动的软体机器人。文中结合章鱼触手的特点,设计并制作了一种缆索驱动的软臂,其能在三维空间灵活运动。基于TensorFlow框架建立了数据驱动模型,并采用深度强化学习策略对该数据驱动模型进行训练,以实现单个软臂的姿态控制。最后,将两个训练好的软臂组装成一个受章鱼启发的双足行走机器人,该机器人能够前进和转弯。实验分析表明,该机器人平均速度可达7.78厘米/秒,最大瞬时速度能达到12.8厘米/秒。