在移动边缘计算中使用机器学习的资源管理:调查

Marwa Zamzam, T. Elshabrawy, M. Ashour
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引用次数: 15

摘要

移动边缘计算(MEC)旨在克服与在移动终端上运行应用程序相关的有限的终端电池和处理能力,以及将这些应用程序卸载到云端所带来的高延迟。它扩展了蜂窝网络边缘的云计算资源,使其更接近移动用户。移动边缘计算中的资源管理是近年来许多研究者研究的主要问题之一。它包括资源分配和计算卸载。资源分配涉及管理和调度资源,以完成用户的请求。这取决于资源的可用性和容量。根据每个请求任务的截止日期,服务提供者将为每个用户分配足够的资源。计算卸载是将任务转移到外部平台(边缘或云服务器)上执行。这取决于设备的处理能力和存储容量。在动态系统中,由于用户任务的随机变化和用户的移动性,很难为资源管理提供最优解决方案,因此提出了机器学习技术来解决这一优化问题。在本文中,我们为使用机器学习优化移动边缘计算中的资源管理提供了最先进的技术。我们将研究分为四类:1)最小化成本,2)最小化能耗,3)最小化延迟,4)最小化延迟和能耗。然后,我们对系统模型、约束和在每个优化问题中使用的机器学习技术类型进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resource Management using Machine Learning in Mobile Edge Computing: A Survey
Mobile Edge Computing (MEC) aims to overcome the limited terminal battery and processing capabilities associated with running applications in the mobile terminal and the high latency introduced by offloading these applications to the cloud. It extends the computing resources of the cloud at the edge of the cellular network closer to the mobile user. Resource management in mobile edge computing is one of the main issues that are studied recently by many researchers. It consists of resource allocation and computation offloading. Allocation of resources involves managing and scheduling the resources to accomplish the requests of the users. It depends on the availability and the capacity of the resources. According to the deadline of each requested task, the service provider will assign each user the sufficient resources. Computation offloading is the transfer of the tasks to be executed at an external platform (edge or cloud server). It depends on the processing capability and the storage capacity of the device. It is difficult to provide an optimal solution for resource management in a dynamic system due to the random variations of tasks required by the users and the mobility of these users, thus machine learning techniques are proposed to solve this optimization problem. In this paper we provide the state-of-the-art for using machine learning to optimize resource management in mobile edge computing. We divide the research into four categories: 1) minimizing the cost, 2) minimizing the energy consumption, 3) minimizing the latency and 4) minimizing both latency and energy consumption. We then classify the system model, the constraints and the types of machine learning techniques that are used in each optimization problem.
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