基于卷积神经网络目标检测的空间机械臂离策略强化学习控制

IF 5.8 1区 工程技术 Q1 ENGINEERING, AEROSPACE
Hongji Zhuang , Wenlong Lu , Qiang Shen , Shufan Wu , Vladimir Yu. Razoumny , Yury N. Razoumny
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引用次数: 0

摘要

本文提出了一种基于视觉的控制框架,该框架将基于卷积神经网络的目标检测与非策略强化学习相结合,以解决空间机械臂操作中自主性、鲁棒性和高控制性能的工程需求,并填补了现有基于视觉的控制研究的空白。构造了由检测环和控制环组成的双环结构,采用组合变量方法简化了空间机械臂复杂的像空间动力学。在视觉方面,最先进的单级目标检测网络通过深度回归模块得到增强,以提供实时距离反馈。在控制端,采用非策略强化学习算法实现无模型最优控制。通过验证和对比仿真验证了所提出的基于视觉的综合控制策略,显示出优越的自主性、鲁棒性和控制性能,以及与其他具有代表性的基于视觉的控制方法相比的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Off-policy reinforcement learning control for space manipulators based on object detection via convolutional neural networks
This paper proposes a vision-based control framework that integrates convolutional neural network-based object detection with off-policy reinforcement learning to address the engineering demands of autonomy, robustness, and high control performance in space manipulator operations, as well as to fill gaps in existing vision-based control research. A two-loop architecture comprising a detection loop and a control loop is constructed, with a combined-variable approach employed to simplify the complex image-space dynamics of the space manipulator. On the vision side, a state-of-the-art single-stage object detection network is enhanced with a depth regression module to provide real-time distance feedback. On the control side, an off-policy reinforcement learning algorithm is adopted to achieve model-free optimal control. The proposed integrated vision-based control strategy is validated through both verification and comparative simulations, demonstrating superior autonomy, robustness, and control performance, as well as advantages over the other representative vision-based control method.
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来源期刊
Aerospace Science and Technology
Aerospace Science and Technology 工程技术-工程:宇航
CiteScore
10.30
自引率
28.60%
发文量
654
审稿时长
54 days
期刊介绍: Aerospace Science and Technology publishes articles of outstanding scientific quality. Each article is reviewed by two referees. The journal welcomes papers from a wide range of countries. This journal publishes original papers, review articles and short communications related to all fields of aerospace research, fundamental and applied, potential applications of which are clearly related to: • The design and the manufacture of aircraft, helicopters, missiles, launchers and satellites • The control of their environment • The study of various systems they are involved in, as supports or as targets. Authors are invited to submit papers on new advances in the following topics to aerospace applications: • Fluid dynamics • Energetics and propulsion • Materials and structures • Flight mechanics • Navigation, guidance and control • Acoustics • Optics • Electromagnetism and radar • Signal and image processing • Information processing • Data fusion • Decision aid • Human behaviour • Robotics and intelligent systems • Complex system engineering. Etc.
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