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首页> 外文期刊>International Journal of Vehicle Autonomous Systems >Multi-robot concurrent learning of cooperative behaviours for the tracking of multiple moving targets
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Multi-robot concurrent learning of cooperative behaviours for the tracking of multiple moving targets

机译:多机器人并发学习协作行为以跟踪多个移动目标

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摘要

Reinforcement learning has been extensively studied and applied for generating cooperative behaviours in multi-robot systems. However, traditional reinforcement learning algorithms assume discrete state and action spaces with finite number of elements. This limits the learning to discrete behaviours and cannot be applied to most real multi-robot systems that inherently require appropriate combinations of different elementary behaviours. To address this problem, we design a distributed learning controller that integrates reinforcement learning with behaviour-based control networks. This learning controller can enable the robots to generate appropriate control policy without the need for human design or hardcoding. Furthermore, to address the problems in concurrent learning, we propose a distributed learning control algorithm to coordinate the concurrent learning processes. The distributed learning controller and learning control algorithm are applied to multi-robot tracking of multiple moving targets. The efficacy of our proposed scheme is shown through simulations.
机译:强化学习已被广​​泛研究并应用于多机器人系统中的协作行为的产生。但是,传统的强化学习算法假定具有有限数量元素的离散状态和动作空间。这将学习限制为离散的行为,并且不能应用于本质上需要不同基本行为适当组合的大多数实际多机器人系统。为了解决这个问题,我们设计了一种分布式学习控制器,该控制器将强化学习与基于行为的控制网络集成在一起。该学习控制器可使机器人无需人工设计或硬编码即可生成适当的控制策略。此外,为了解决并发学习中的问题,我们提出了一种分布式学习控制算法来协调并发学习过程。分布式学习控制器和学习控制算法被应用于多个运动目标的多机器人跟踪。通过仿真显示了我们提出的方案的有效性。

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