A Cable‐Actuated Soft Manipulator for Dexterous Grasping Based on Deep Reinforcement Learning

Author:

Zhou Kunyu12,Mao Baijin12,Zhang Yuzhu12,Chen Yaozhen12,Xiang Yuyaocen12,Yu Zhenping12,Hao Hongwei12,Tang Wei12,Li Yanwen3,Liu Houde14,Wang Xueqian1,Wang Xiaohao1,Qu Juntian12ORCID

Affiliation:

1. Shenzhen International Graduate School Tsinghua University Shenzhen 518055 China

2. Shenzhen Key Laboratory of Advanced Technology for Marine Ecology Tsinghua University Shenzhen 518055 China

3. Department of Health Sciences and Technology ETH Zurich Zurich 8092 Switzerland

4. Jianghuai Advance Technology Center Hefei 230051 China

Abstract

The growing interest in the flexibility and operational capabilities of soft manipulators in confined spaces emphasizes the need for precise modeling and accurate motion control. Conventional control methods encounter difficulties in modeling and involve intricate computations. This work introduces a novel deep reinforcement learning (DRL) control algorithm based on neural network modeling. Using the Whale Optimization Algorithm, an approximate dynamic model for the soft manipulator is established. The twin delayed deterministic policy gradient is employed for DRL control. Domain randomization is applied during pretraining in a simulated environment. The algorithm addresses issues related to dependency on measurement data quality and redundant mappings, outperforming other methods by 8–15 mm in control accuracy. The trained DRL controller achieves precise trajectory tracking within the soft manipulator's task space, enabling successful grasping tasks in various complex environments, including pipelines and other narrow spaces. Experimental results confirm the autonomy of our controller in performing these tasks without human intervention.

Funder

Natural Science Foundation of China

Shenzhen Peacock Plan

Shenzhen Science and Technology Innovation Program

Publisher

Wiley

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