移动机器人在障碍物定位攻击下的鲁棒运动规划

IF 1.9 4区 计算机科学 Q3 ROBOTICS
Robotica Pub Date : 2024-09-18 DOI:10.1017/s0263574724001115
Fenghua Wu, Wenbing Tang, Yuan Zhou, Shang-Wei Lin, Zuohua Ding, Yang Liu
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引用次数: 0

摘要

由于其实时计算效率高,深度强化学习(DRL)已被广泛应用于移动机器人的运动规划。在基于 DRL 的方法中,DRL 模型会根据机器人周围障碍物的状态,包括可能与之通信的其他机器人的状态,计算机器人的行动。这些方法总是假定环境是无攻击的,所获得的障碍物状态是可靠的。然而,在现实世界中,机器人可能会遭受障碍物定位攻击(OLAs),如传感器攻击、通信攻击和遥控攻击,从而导致机器人获取的周围障碍物位置不准确。在本文中,我们提出了一种鲁棒运动规划方法 ObsGAN-DRL,将生成式对抗网络(GAN)集成到 DRL 模型中,以减轻环境中的 OLAs。首先,ObsGAN-DRL 基于 GAN 模型学习生成器,以计算良性和攻击场景中障碍物准确位置的近似值。因此,ObsGAN-DRL 不需要探测器。其次,通过使用周围障碍物的近似位置,ObsGAN-DRL 可以利用最先进的 DRL 方法高效地计算无碰撞运动指令(如速度)。综合实验表明,ObsGAN-DRL 可以有效缓解 OLA,并保证安全性。我们还证明了 ObsGAN-DRL 的通用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust motion planning for mobile robots under attacks against obstacle localization
Thanks to its real-time computation efficiency, deep reinforcement learning (DRL) has been widely applied in motion planning for mobile robots. In DRL-based methods, a DRL model computes an action for a robot based on the states of its surrounding obstacles, including other robots that may communicate with it. These methods always assume that the environment is attack-free and the obtained obstacles’ states are reliable. However, in the real world, a robot may suffer from obstacle localization attacks (OLAs), such as sensor attacks, communication attacks, and remote-control attacks, which cause the robot to retrieve inaccurate positions of the surrounding obstacles. In this paper, we propose a robust motion planning method ObsGAN-DRL, integrating a generative adversarial network (GAN) into DRL models to mitigate OLAs in the environment. First, ObsGAN-DRL learns a generator based on the GAN model to compute the approximation of obstacles’ accurate positions in benign and attack scenarios. Therefore, no detectors are required for ObsGAN-DRL. Second, by using the approximation positions of the surrounding obstacles, ObsGAN-DRL can leverage the state-of-the-art DRL methods to compute collision-free motion commands (e.g., velocity) efficiently. Comprehensive experiments show that ObsGAN-DRL can mitigate OLAs effectively and guarantee safety. We also demonstrate the generalization of ObsGAN-DRL.
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来源期刊
Robotica
Robotica 工程技术-机器人学
CiteScore
4.50
自引率
22.20%
发文量
181
审稿时长
9.9 months
期刊介绍: Robotica is a forum for the multidisciplinary subject of robotics and encourages developments, applications and research in this important field of automation and robotics with regard to industry, health, education and economic and social aspects of relevance. Coverage includes activities in hostile environments, applications in the service and manufacturing industries, biological robotics, dynamics and kinematics involved in robot design and uses, on-line robots, robot task planning, rehabilitation robotics, sensory perception, software in the widest sense, particularly in respect of programming languages and links with CAD/CAM systems, telerobotics and various other areas. In addition, interest is focused on various Artificial Intelligence topics of theoretical and practical interest.
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