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Max-Plus Approach Based Intelligent Coordinated Transmission for Robot Swarms

机译:最大加上机器人群的基于智能协调传输

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Communication is vital to complete tasks coordinately for robot swarms. In this paper, we investigate massive MIMO enabled robot swarms. Specifically, for the robot swarms, the transceiver beamforming not only needs to maximize the rate, but also has to restrict the interference on other receivers. Therefore, the transceiver design of robots is critical to optimize the sum-rate performance under the restriction of the interference on the a specific robot. Currently, only exhaustive search is able to provide the optimal solution for the problem, whereas its complexity is unacceptable. In this paper, to address the intractable issue, based on the max-plus approach, we consider each transmitter or receiver as an independent decision agent, and all robots coordinately choose the optimal joint beam combination by max-plus algorithm. In the multi-agent framework, each agent learns the policy of choosing analog beam by reinforcement learning (RL). Furthermore, to improve the learning efficiency of RL and reduce the transmission latency, we exploit the efficient ELM network to replace the deep network of deep RL, and propose a ELM-based RL method to conduct the transmission between robots in robot swarm. Analysis and simulation results reveal that, the proposed method is able to achieve a near-optimal sum-rate performance, while the complexity is acceptable.
机译:通信对于为机器人群体协调协调方面是至关重要的。在本文中,我们调查了大规模的MIMO支持的机器人群。具体而言,对于机器人群,收发器波束形成不仅需要最大化速率,而且还必须限制对其他接收器的干扰。因此,机器人的收发器设计对于优化在特定机器人的干扰的限制下优化的和速率性能至关重要。目前,只有详尽的搜索都能够为问题提供最佳解决方案,而其复杂性是不可接受的。在本文中,为了解决难以解决的问题,基于MAX-Plus方法,我们将每个发射器或接收器视为独立的决策代理,并且所有机器人通过MAX-Plus算法协调最佳关节光束组合。在多代理框架中,每个代理通过加固学习(RL)学习选择模拟光束的策略。此外,为了提高RL的学习效率并降低传输延迟,我们利用高效的ELM网络来取代深度RL的深网络,并提出基于ELM的RL方法来在机器人群中的机器人之间传输。分析和仿真结果表明,所提出的方法能够实现近乎最佳的总和性能,而复杂性是可接受的。

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