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User Association and Power Allocation Based on Q-Learning in Ultra Dense Heterogeneous Networks

机译:超密集异构网络中基于Q学习的用户关联和功率分配

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Ultra dense heterogeneous network (UDHN) has become one of the main frameworks of 5G. Traditional user association methods are difficult to satisfy this new scenario for load balancing. On the other hand, the concept of green communication requires the network to increase energy efficiency. Therefore, it is necessary to study power allocation and user association in UDHN. This paper focuses on load balancing and energy efficiency of UDHN. The joint user association and power allocation is modelled as an appropriate optimization problem. Then we introduce reinforcement learning and propose a multiagent Q-learning based algorithm for solving the optimization problem. According to analysis of simulation result, the convergence of the proposed scheme is verified and the proposed approach is effective on achieving load balancing and enhancing energy efficiency in UDHN.
机译:超密集异构网络(UDHN)已成为5G的主要框架之一。传统的用户关联方法很难满足这种新的负载平衡方案。另一方面,绿色通信的概念要求网络提高能效。因此,有必要研究UDHN中的功率分配和用户关联。本文着重于UDHN的负载平衡和能效。将联合用户关联和功率分配建模为适当的优化问题。然后,我们介绍了强化学习,并提出了一种基于多主体Q学习的算法来解决优化问题。通过对仿真结果的分析,验证了所提方案的收敛性,并有效地实现了UDHN中的负载均衡和提高能效。

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