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Channel Assignment in Uplink Wireless Communication Using Machine Learning Approach

Guangyu Jia, Zhaohui Yang, Hak‐Keung Lam, Jianfeng Shi, Mohammad Shikh‐Bahaei

2020IEEE Communications Letters21 citationsDOIOpen Access PDF

Abstract

This letter investigates a channel assignment problem in uplink wireless communication systems. Our goal is to maximize the sum rate of all users subject to integer channel assignment constraints. A convex optimization based algorithm is provided to obtain the optimal channel assignment, where the closed-form solution is obtained in each step. Due to high computational complexity in the convex optimization based algorithm, machine learning approaches are employed to obtain computational efficient solutions. More specifically, the data are generated by using convex optimization based algorithm and the original problem is converted to a regression problem which is addressed by the integration of convolutional neural networks (CNNs), feed-forward neural networks (FNNs), random forest and gated recurrent unit networks (GRUs). The results demonstrate that the machine learning method largely reduces the computation time with slightly compromising of prediction accuracy.

Topics & Concepts

Computer scienceTelecommunications linkOptimization problemConvex optimizationChannel (broadcasting)Mathematical optimizationAssignment problemWirelessGeneralized assignment problemComputational complexity theoryWeapon target assignment problemAlgorithmArtificial intelligenceRegular polygonMathematicsComputer networkGeometryTelecommunicationsAdvanced MIMO Systems OptimizationCooperative Communication and Network CodingAdvanced Wireless Network Optimization