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Establishing and maintaining wireless communication coverage among multiple mobile robots using a radial basis network controller trained via reinforcement learning

机译:使用通过加固学习训练的径向基网络控制器在多个移动机器人之间建立和维护无线通信覆盖

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For a wirelessly-connected multi-robot system operating in a realistic environment, the wireless communication condition among mobile robots is generally unstable and fluctuating due to the signal loss, attenuation, multi-path fading and shadowing. This paper presents a decentralized control strategy, using the technique of reinforcement learning artificial neural network, to learn and approach a desired wireless communication coverage in a realistic environment for a team of collaborative mobile robots. A reinforcement learning neural network, based on the radial-basis function, is designed for each robot to learn the control law of maintaining the wireless link quality in a target environment and applied to the multi-robot deployment process to form communication coverage. The learning process of a robot is carried out through consecutive interactions between the controller and environment to establish the relationship between the wireless link quality and robot motion decision. In several environments simulated with the probabilistic log-distance path loss model, the simulation results show that the proposed reinforcement learning neural network based control approach leads to a desired and reliable multi-robot wireless communication coverage.
机译:对于在现实环境中操作的无线连接的多机器人系统,由于信号损耗,衰减,多路径衰落和阴影,移动机器人之间的无线通信条件通常是不稳定的并且波动。本文介绍了一种分散的控制策略,利用加强学习人工神经网络技术,学习和接近一个协作移动机器人团队的现实环境中的期望的无线通信覆盖。基于径向基函数的加强学习神经网络被设计用于每个机器人,以学习维持目标环境中的无线链路质量并应用于多机器人部署过程以形成通信覆盖的控制定律。机器人的学习过程通过控制器和环境之间的连续交互来实现,以建立无线链路质量和机器人运动决策之间的关系。在用概率的对数路径损耗模型模拟的几个环境中,仿真结果表明,所提出的加强学习神经网络的控制方法导致了期望可靠的多机器人无线通信覆盖。

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