Online Energy-Efficient Power Control in Wireless Networks by Deep Neural Networks

A. Zappone, M. Debbah, Z. Altman
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引用次数: 34

Abstract

The work describes how deep learning by artificial neural networks (ANNs) enables online power allocation for energy efficiency maximization in wireless interference networks. A deep ANN architecture is proposed and trained to take as input the network communication channels and to output suitable power allocations. It is shown that this approach requires a much lower computational complexity compared to traditional optimization-oriented approaches, dispensing with the need of solving the optimization problem anew in each channel coherence time. Despite the lower complexity, numerical results show that a properly trained ANN achieves similar performance as more traditional optimization-oriented methods.
基于深度神经网络的无线网络在线节能功率控制
该研究描述了人工神经网络(ann)的深度学习如何在无线干扰网络中实现在线功率分配,以实现能效最大化。提出并训练了一种深度神经网络结构,以网络通信信道作为输入,输出合适的功率分配。结果表明,与传统的面向优化的方法相比,该方法的计算复杂度要低得多,并且无需在每个通道相干时间内重新求解优化问题。尽管复杂度较低,但数值结果表明,经过适当训练的人工神经网络的性能与传统的面向优化的方法相似。
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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