A Survey of Advances in Optimization Methods for Wireless Communication System Design

Ya-Feng Liu, Tsung-Hui Chang, Mingyi Hong, Zheyu Wu, Anthony Man-Cho So, Eduard A. Jorswieck, Wei Yu
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Abstract

Mathematical optimization is now widely regarded as an indispensable modeling and solution tool for the design of wireless communications systems. While optimization has played a significant role in the revolutionary progress in wireless communication and networking technologies from 1G to 5G and onto the future 6G, the innovations in wireless technologies have also substantially transformed the nature of the underlying mathematical optimization problems upon which the system designs are based and have sparked significant innovations in the development of methodologies to understand, to analyze, and to solve those problems. In this paper, we provide a comprehensive survey of recent advances in mathematical optimization theory and algorithms for wireless communication system design. We begin by illustrating common features of mathematical optimization problems arising in wireless communication system design. We discuss various scenarios and use cases and their associated mathematical structures from an optimization perspective. We then provide an overview of recent advances in mathematical optimization theory and algorithms, from nonconvex optimization, global optimization, and integer programming, to distributed optimization and learning-based optimization. The key to successful solution of mathematical optimization problems is in carefully choosing and/or developing suitable optimization algorithms (or neural network architectures) that can exploit the underlying problem structure. We conclude the paper by identifying several open research challenges and outlining future research directions.
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无线通信系统设计优化方法进展概览
目前,数学优化已被广泛视为无线通信系统设计中不可或缺的建模和求解工具。从 1G 到 5G 再到未来的 6G,优化在无线通信和网络技术的革命性进步中发挥了重要作用,同时,无线技术的创新也极大地改变了系统设计所依据的数学优化问题的性质,并在理解、分析和解决这些问题的方法论发展方面引发了重大创新。在本文中,我们将对无线通信系统设计的数学优化理论和算法的最新进展进行全面介绍。我们首先说明了无线通信系统设计中出现的数学优化问题的共同特征。我们从优化的角度讨论了各种方案和用例及其相关的数学结构。然后,我们概述了数学优化理论和算法的最新进展,包括非凸优化、全局优化和整数编程,以及分布式优化和基于学习的优化。成功解决数学优化问题的关键在于精心选择和/或开发合适的优化算法(或神经网络架构),以利用潜在的问题结构。最后,我们指出了几个有待解决的研究难题,并概述了未来的研究方向。
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