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Main Authors: Hu, Yuhui, Zhou, Dong, Ouyang, Kaihong, Yu, Zhongliang, Lv, Jianfeng, Shao, Xiangyu
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.25362
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author Hu, Yuhui
Zhou, Dong
Ouyang, Kaihong
Yu, Zhongliang
Lv, Jianfeng
Shao, Xiangyu
author_facet Hu, Yuhui
Zhou, Dong
Ouyang, Kaihong
Yu, Zhongliang
Lv, Jianfeng
Shao, Xiangyu
contents The strong dynamic coupling between the manipulator and the base poses a significant challenge to maintaining spacecraft attitude stability, potentially compromising mission safety. In this paper, we propose a Dual-Agent Coordinated Manipulation Planning (DACMP) framework that simultaneously achieves high-precision end-effector pose reaching for a 6-DoF space manipulator and attitude stabilization of the base spacecraft. To enhance learning efficiency, we present a prior policy-guided Deep Reinforcement Learning algorithm incorporating the Timestep-level Expert Switching Guidance (TESG) mechanism, thereby promoting global convergence and improving task success rates. Extensive experiments demonstrate that DACMP significantly outperforms baseline DRL algorithms in terms of task success rate and control precision. Furthermore, the robustness of DACMP is validated under various challenging scenarios, including system constraints, environmental disturbances, and perception uncertainties. The code and simulation configurations are available on GitHub: https://github.com/HIT-YuhuiHu/DACMP.
format Preprint
id arxiv_https___arxiv_org_abs_2605_25362
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Prior Policy Guided Dual-Agent Coordinated Manipulation Planning of Spacecraft-Manipulator System
Hu, Yuhui
Zhou, Dong
Ouyang, Kaihong
Yu, Zhongliang
Lv, Jianfeng
Shao, Xiangyu
Robotics
The strong dynamic coupling between the manipulator and the base poses a significant challenge to maintaining spacecraft attitude stability, potentially compromising mission safety. In this paper, we propose a Dual-Agent Coordinated Manipulation Planning (DACMP) framework that simultaneously achieves high-precision end-effector pose reaching for a 6-DoF space manipulator and attitude stabilization of the base spacecraft. To enhance learning efficiency, we present a prior policy-guided Deep Reinforcement Learning algorithm incorporating the Timestep-level Expert Switching Guidance (TESG) mechanism, thereby promoting global convergence and improving task success rates. Extensive experiments demonstrate that DACMP significantly outperforms baseline DRL algorithms in terms of task success rate and control precision. Furthermore, the robustness of DACMP is validated under various challenging scenarios, including system constraints, environmental disturbances, and perception uncertainties. The code and simulation configurations are available on GitHub: https://github.com/HIT-YuhuiHu/DACMP.
title Prior Policy Guided Dual-Agent Coordinated Manipulation Planning of Spacecraft-Manipulator System
topic Robotics
url https://arxiv.org/abs/2605.25362