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Multi-Robot Enhanced Intelligent Multi-User Millimeter-Wave MIMO Systems under Uncertain Environment

机译:不确定环境下的多机器人增强型智能多用户毫米波MIMO系统

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This paper investigates how to maximize the practical communication quality of multi-user millimeter-wave (mmWave) MIMO systems with uncertain environment through effectively using the mobility from multi-robots as dynamic relays and adopting machine learning techniques. mmWave MIMO has been considered as a promising wireless communication technology due to the high frequency usage efficiency from beamforming. However, the uncertain environment could seriously affect the effectiveness and practicality of beamforming since wireless channels may have a more complicated structure, and the coordination among multiple nodes could be more difficult. For instance, the uncertain distribution of mobile users could significantly affect the performance of wireless channels, and then significantly degrade practical communication quality. Therefore, this paper presents a novel Multi-Robot Enhanced Intelligent Multi-User Millimeter-Wave MIMO (MREI-MU-MIMO) system that adopt both dynamic codebook based beam training protocol and online reinforcement learning to supervise the mobility of multi-robot-relay as well as handle the serious effects form the uncertain environment. Firstly, a novel dynamic codebook development is presented that cannot only lower the complexity of existing beamforming codebooks and also handle the complicated channel structure under uncertainty during multi-user beam training. Then, a decentralized Deep Q-Network (DQN) rein-forcement learning algorithm has been developed to intelligently manage multi-robot mobility and further effectively assign the optimal MIMO to handle the uncertainty from environment. The effectiveness of the proposed design has been demonstrated through real-time simulation and experiment.
机译:本文研究如何通过有效地利用多机器人的移动性作为动态继电器并采用机器学习技术来最大化不确定环境下的多用户毫米波(mmWave)MIMO系统的实际通信质量。由于波束形成的高频使用效率,mmWave MIMO被认为是有前途的无线通信技术。但是,不确定的环境可能会严重影响波束成形的有效性和实用性,因为无线信道的结构可能更复杂,并且多个节点之间的协调可能会更加困难。例如,移动用户的不确定分布可能会严重影响无线信道的性能,进而严重降低实际通信质量。因此,本文提出了一种新颖的多机器人增强型智能多用户毫米波MIMO(MREI-MU-MIMO)系统,该系统同时采用基于动态码本的波束训练协议和在线强化学习来监督多机器人中继的移动性以及处理不确定环境中的严重后果。首先,提出了一种新颖的动态码本开发方法,它不仅可以降低现有波束成形码本的复杂度,而且可以在多用户波束训练过程中处理不确定性下的复杂信道结构。然后,开发了一种分散式深度Q网络(DQN)强化学习算法,以智能地管理多机器人移动性,并进一步有效分配最佳MIMO来处理来自环境的不确定性。通过实时仿真和实验证明了所提出设计的有效性。

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