Energy efficiency optimisation in massive multiple-input, multiple-output network for 5G applications using new quantum genetic algorithm

IF 1.3 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS IET Networks Pub Date : 2023-11-14 DOI:10.1049/ntw2.12104
Abdulbasit M. A. Sabaawi, Mohammed R. Almasaoodi, Sara El Gaily, Sándor Imre
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Abstract

Devising efficient optimisation methods has been a subject of great research attention since current evolving trends in communication networks, machine learning, and other cutting-edge systems that need a fast and accurate optimised computational model. Classical computers became incapable of handling new optimisation problems posed by newly emerging trends. Quantum optimisation algorithms appear as alternative solutions. The existing bottleneck that restricts the use of the newly developed quantum strategies is the limited qubit size of the available quantum computers (the size of the most recent universal quantum computer is 433 qubits). A new quantum genetic algorithm (QGA) is proposed that handles the presented problem. A quantum extreme value searching algorithm and quantum blind computing framework are utilised to extend the search capabilities of the GA. The quantum genetic strategy is exploited to maximise energy efficiency at full spectral efficiency of massive multiple-input, multiple-output (M-MIMO) technology as a toy example for pointing out the efficiency of the presented quantum strategy. The authors run extensive simulations and prove how the presented quantum method outperforms the existing classical genetic algorithm.

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利用新型量子遗传算法优化 5G 应用中大规模多输入多输出网络的能效
由于当前通信网络、机器学习和其他尖端系统的发展趋势需要快速准确的优化计算模型,因此设计高效的优化方法一直是备受关注的研究课题。经典计算机已无法处理新趋势带来的新优化问题。量子优化算法作为替代解决方案出现了。现有量子计算机的量子比特大小有限(最新通用量子计算机的量子比特大小为 433 量子比特),这是限制使用新开发的量子策略的现有瓶颈。我们提出了一种新的量子遗传算法(QGA)来处理所提出的问题。量子极值搜索算法和量子盲计算框架被用来扩展遗传算法的搜索能力。量子遗传策略被用来在大规模多输入多输出(M-MIMO)技术的全频谱效率下实现能效最大化,以此作为一个玩具示例来说明所提出的量子策略的效率。作者进行了大量模拟,证明了所提出的量子方法如何优于现有的经典遗传算法。
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来源期刊
IET Networks
IET Networks COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
5.00
自引率
0.00%
发文量
41
审稿时长
33 weeks
期刊介绍: IET Networks covers the fundamental developments and advancing methodologies to achieve higher performance, optimized and dependable future networks. IET Networks is particularly interested in new ideas and superior solutions to the known and arising technological development bottlenecks at all levels of networking such as topologies, protocols, routing, relaying and resource-allocation for more efficient and more reliable provision of network services. Topics include, but are not limited to: Network Architecture, Design and Planning, Network Protocol, Software, Analysis, Simulation and Experiment, Network Technologies, Applications and Services, Network Security, Operation and Management.
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