Joint Mode Selection And Power Allocation for NOMA Systems With D2D Communication

Rui Tang, Ruizhi Zhang, Yuanman Xia, Yihong Zhao, Jinpu He, Yu Long
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引用次数: 2

Abstract

In this paper, we study the integration of device-to-device communication into a non-orthogonal multiple access system. To deal with the complex co-channel interference resulting from the dense spectral reuse, we aim to maximize the sum proportional bit rate by jointly optimizing mode selection (MS) and power allocation (PA). Considering the high complexity of the original problem and the dynamics of the wireless environment, we propose an online mechanism with a double-layer structure by efficiently combining machine learning with optimization theory. In particular, when the MS scheme is given, the remaining nonconvex PA problem can be equivalently transformed into a convex one under certain manipulations. Based on the above optimum, a deep reinforcement learning-based online mechanism is designed and it constantly refines the output MS scheme generated from a deep neural network by utilizing the recent historical experiences via reinforcement learning. Finally, simulations are conducted to validate the superiority of the proposed mechanism in balancing the fundamental tradeoff between performance and online computational time.
基于D2D通信的NOMA系统联合模式选择与功率分配
本文研究了将设备间通信集成到一个非正交多址系统中。为了解决密集频谱复用带来的复杂同信道干扰,我们通过联合优化模式选择(MS)和功率分配(PA)来实现和比例比特率的最大化。考虑到原始问题的高复杂性和无线环境的动态性,我们将机器学习与优化理论有效地结合起来,提出了一种双层结构的在线机制。特别地,当给定MS格式时,在一定的操作下,剩余的非凸PA问题可以等效地转化为凸问题。基于上述优化,设计了一种基于深度强化学习的在线机制,通过强化学习,利用最近的历史经验,不断细化由深度神经网络生成的输出MS方案。最后,进行了仿真,验证了所提出的机制在平衡性能和在线计算时间之间的基本权衡方面的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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