基于雾的物联网卸载综述:架构、机器学习方法和开放问题

IF 3.2 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Kalimullah Lone , Shabir Ahmad Sofi
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引用次数: 1

摘要

智能设备的数量呈指数级增长,在处理这些巨大数据的同时,产生了有用的信息,并带来了严峻的挑战。根据任务的大小和性质,处理可以在雾级别或云级别进行。将数据卸载到雾或云中会增加延迟,雾中的延迟较少,云中的延迟较多。在雾级或云中处理数据和任务的方法大多是基于机器学习的。在本文中,我们将从架构的角度讨论这三个层面,从物联网到雾,从雾到云。具体来说,我们将描述基于机器学习的从物联网到雾和从雾到云的卸载。最后,我们将提出物联网-雾-云环境中的当前研究方向、问题和挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A review on offloading in fog-based Internet of Things: Architecture, machine learning approaches, and open issues

There is an exponential increase in the number of smart devices, generating helpful information and posing a serious challenge while processing this huge data. The processing is either done at fog level or cloud level depending on the size and nature of the task. Offloading data to fog or cloud adds latency, which is less in fog and more in the cloud. The methods of processing data and tasks at fog level or cloud are mostly machine learning based. In this paper, we will discuss all three levels in terms of architecture, starting from the internet of things to fog and fog to cloud. Specifically, we will describe machine learning-based offloading from the internet of things to fog and fog to cloud. Finally, we will come up with current research directions, issues, and challenges in the IoT–fog–cloud environment.

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