Resource Allocation in Multi-access Edge Computing: Optimization and Machine Learning

Xian Liu
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引用次数: 2

Abstract

Multi-access edge computing (MEC) equipped with artificial intelligence is a promising technology in B5G wireless systems. Some refined investigations and analysis are needed to gain more insights. This paper addresses that the core concept could be stemmed from the wait-and-see model in stochastic programming and indicates the quasi-separable property. Moreover, both small-scale fading and pathloss issues are included in the investigations. Two aspects of this study are the optimization model itself, followed by the simulation with machine learning (ML). One of the main interests of using ML is in improving the computational efficiency. Simulations showed that the efficiency may be improved from 93% to 96%.
多访问边缘计算中的资源分配:优化和机器学习
配备人工智能的多址边缘计算(MEC)是B5G无线系统中很有前途的技术。需要一些精细的调查和分析来获得更多的见解。本文提出了随机规划的核心概念可以由随机规划中的观望模型衍生出来,并指出了随机规划的拟可分性。此外,研究还包括了小尺度衰落和路径损耗问题。本研究的两个方面是优化模型本身,其次是机器学习(ML)的模拟。使用机器学习的主要兴趣之一是提高计算效率。仿真结果表明,该方法可将效率从93%提高到96%。
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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