论文标题

一项关于具有传统优化和机器学习的联合云边缘雾系统中卸载的调查

A Survey on Offloading in Federated Cloud-Edge-Fog Systems with Traditional Optimization and Machine Learning

论文作者

Kar, Binayak, Yahya, Widhi, Lin, Ying-Dar, Ali, Asad

论文摘要

物联网(IoT)设备生成的大量数据需要云,边缘和雾计算范式提供的计算能力和存储容量。这些计算范式中的每一个都有其自己的利弊。云计算提供了增强的数据存储和计算能力,但会导致高通信延迟。 Edge和Fog计算提供了类似的服务,其潜伏期较低,但容量有限,能力和覆盖范围。单个计算范式无法满足物联网设备的所有要求,并且需要它们之间的联合会来扩展其能力,能力和服务。该联合会对订户和提供商都有益,也揭示了云,边缘和雾之间交通卸货方面的研究问题。传统上,优化已用于解决流量卸货问题。但是,在如此复杂的联​​邦系统中,传统优化无法跟上决策制定的严格延迟要求,从毫秒到下一步。因此,机器学习方法,尤其是强化学习,因此变得流行,因为它们可以快速解决具有大量未知信息的动态环境中的卸载问题。这项研究提供了云,边缘和雾之间的新型联邦分类,并为不同的联邦场景提供了全面的研究路线图。我们调查了有关解决此卸载问题的各种优化方法的相关文献,并比较其显着特征。然后,我们提供了一项有关通过机器学习方法和由于这些调查而获得的经验教训的联合系统中卸载的全面调查。最后,我们概述了未来研究和必须面对的挑战的几个方向,以实现这样的联邦。

The huge amount of data generated by the Internet of things (IoT) devices needs the computational power and storage capacity provided by cloud, edge, and fog computing paradigms. Each of these computing paradigms has its own pros and cons. Cloud computing provides enhanced data storage and computing power but causes high communication latency. Edge and fog computing provide similar services with lower latency but with limited capacity, capability, and coverage. A single computing paradigm cannot fulfil all the requirements of IoT devices and a federation between them is needed to extend their capacity, capability, and services. This federation is beneficial to both subscribers and providers and also reveals research issues in traffic offloading between clouds, edges, and fogs. Optimization has traditionally been used to solve the problem of traffic offloading. However, in such a complex federated system, traditional optimization cannot keep up with the strict latency requirements of decision making, ranging from milliseconds to sub-seconds. Machine learning approaches, especially reinforcement learning, are consequently becoming popular because they can quickly solve offloading problems in dynamic environments with large amounts of unknown information. This study provides a novel federal classification between cloud, edge, and fog and presents a comprehensive research roadmap on offloading for different federated scenarios. We survey the relevant literature on the various optimization approaches used to solve this offloading problem, and compare their salient features. We then provide a comprehensive survey on offloading in federated systems with machine learning approaches and the lessons learned as a result of these surveys. Finally, we outline several directions for future research and challenges that have to be faced in order to achieve such a federation.

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