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Unsupervised Learning-Inspired Power Control Methods for Energy-Efficient Wireless Networks Over Fading Channels

Hao Huang, Miao Liu, Guan Gui, Haris Gacanin, Hikmet Sari, Fumiyuki Adachi

2022IEEE Transactions on Wireless Communications27 citationsDOI

Abstract

Energy-efficiency (EE) is a critical metric within wireless optimization. Power control over fading channels is considered as a promising EE-improving technique, but requires optimization of a series of fractional functional optimization problems which are hard to handle by existing optimization techniques. In this paper, we propose a novel EE power control method with unsupervised learning. Firstly, the original fractional problems are decomposed into sub-problems by Dinkelbach and quadratic transformations. Then, these sub-problems are reformulated into unconstrained forms through Lagrange dual formulation. Furthermore, unsupervised primal-dual learning method is applied to handle these unconstrained problems with strong duality. Finally, The unsupervised primal-dual learning is implemented by the deep neural network (DNN) with low computational complexity. Simulation results verify the effectiveness of the proposed approach on a number of typical wireless optimizing scenarios. It is shown that compared to conventional algorithms our method achieves better performance in cognitive radio networks, interference networks, and OFDM networks.

Topics & Concepts

Computer scienceFadingPower controlWireless networkMathematical optimizationOptimization problemArtificial neural networkOrthogonal frequency-division multiplexingWirelessArtificial intelligencePower (physics)AlgorithmMathematicsChannel (broadcasting)TelecommunicationsPhysicsQuantum mechanicsDecoding methodsAdvanced Wireless Communication TechnologiesAdvanced MIMO Systems OptimizationCooperative Communication and Network Coding