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Quantum Learning-Enabled Green Communication for Next-Generation Wireless Systems

机译:支持的Quantum Leature Learning的绿色通信,用于下一代无线系统

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Next generation wireless systems have witnessed significant R&D attention from academia and industries to enable wide range of applications for connected environment around us. The technical design of next generation wireless systems in terms of relay and transmit power control is very critical due to the ever-reducing size of these sensor enabled systems. The growing demand of computation capability in these systems for smart decision making further diversified the significance of relay and transmit power control. Towards harnessing the benefits of Quantum Reinforcement Leaning (QRL) in the design of next generation wireless systems, this article presents a framework for joint optimal Relay and transmit Power Selection (QRL-RPS). In QRL-RPS, each sensor node learns using its present and past local state's knowledge to take optimal decision in relay and transmit power selection. Firstly, RPS problem is modelled as a Markov Decision Process (MDP), and then QRL optimization aspect of the MDP problem is formulated focusing on joint optimization of energy consumption and throughput as network utility. Secondly, a QRL-RPS algorithm is developed based on Grover's iteration to solve the MDP problem. The comparative performance evaluation attests the benefit of the proposed framework as compared to the state-of-the-art techniques.
机译:下一代无线系统从学术界和行业目睹了显着的研发关注,以便为我们周围的连接环境提供广泛的应用。由于这些传感器的系统的尺寸减少了尺寸,下一代无线系统在继电器和传输功率控制方面的技术设计非常关键。用于智能决策的这些系统中的计算能力的需求越来越多,进一步多样化继电器和发射功率控制的重要性。在下一代无线系统设计中利用量子强化倾斜(QRL)的益处,本文介绍了关节最佳继电器和传输功率选择(QRL-RPS)的框架。在QRL-RPS中,每个传感器节点使用其存在的信息和过去的本地状态的知识来在继电器和传输功率选择中采取最佳决策。首先,RPS问题被建模为马尔可夫决策过程(MDP),然后将MDP问题的QRL优化方面配制着聚焦能耗和吞吐量的关节优化作为网络实用程序。其次,基于格罗弗的迭代开发了QRL-RPS算法以解决MDP问题。与最先进的技术相比,比较绩效评估证明了拟议的框架的利益。

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