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Reinforcement Learning for Resource Allocation in Multiuser OFDM Systems

机译:多用户的资源分配加固学习

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In cellular mobile communications the subcarriers are repeatedly used for best utilizing the assigned frequency spectrum. The assignment of channels for users is complex and involves high computation time. Wong et al proposed a heuristic algorithm to achieve the suboptimal solution for sub-carrier assignment. This proposal was based on constructive assignment in real time situation with prosperous results. However, the algorithm involves computational complexity. In this paper we proposes reinforcement learning algorithm for sub-carrier assignment to the users in a way that the total transmit power is minimized. Reinforcement learning algorithms are frequently used for optimization problems and are related to dynamic programming algorithms. Simulation results show that proposed reinforcement learning is robust and outperforms the heuristic algorithm proposed by Wong et al.
机译:在蜂窝移动通信中,子载波重复使用分配的频谱最佳使用。用户频道的分配是复杂的并且涉及高计算时间。 Wong等人提出了一种启发式算法,可以实现子载波分配的子优化解决方案。该提案基于具有繁荣效果的实时情况的建设性转让。但是,该算法涉及计算复杂性。在本文中,我们提出了对用户的分配给用户的增强学习算法,以至于总发射功率最小化。增强学习算法经常用于优化问题,与动态编程算法有关。仿真结果表明,建议的增强学习是强大的,优于Wong等人提出的启发式算法。

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