物联网安全与未来应用的机器学习方法

Aqib Ali, Samreen Naeem, Sania Anam, M. Ahmed
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引用次数: 0

摘要

物联网(IoT)是目前发展迅速的技术之一。它是一项技术,使数十亿智能设备或事物(统称为“事物”)能够使用各种传感器收集有关自身及其所处环境的各种数据。然后,他们可以与被允许这样做的各方共享数据,以实现各种目标,例如管理和监控工业服务或扩展公司服务或运营。然而,目前与物联网相关的安全风险比以往任何时候都要多。机器学习(ML)领域最近经历了重大的技术进步,这导致了各种新的研究方向的开放,这些研究方向可用于解决与物联网相关的现有和即将出现的问题。然而,机器学习是一项强大的技术,可以识别智能设备和电网中的可疑危险和活动。本文作者对机器学习方法和物联网安全在各种潜在攻击背景下的重要性进行了广泛的文献综述。之后,他们比较了几种不同的ML算法,以检测攻击和异常。此外,许多基于机器学习的物联网保护系统已经被提出。
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Machine Learning Methods of IoT Security and Future Application
One of the technologies that are now expanding rapidly is called the Internet of Things (IoT). It is a technology that enables billions of smart devices or things, collectively referred to as “Things,” to collect a variety of data about themselves and the environment in which they are located using a variety of sensors. They can then share data with parties who have been permitted to do so for a variety of objectives, such as the management and monitoring of industrial services or the expansion of company services or operations. However, there are presently more security risks associated with the Internet of Things than ever. The field of machine learning (ML) has recently experienced significant advancement in technology, which has resulted in the opening of various new lines of inquiry that may be used to address existing and upcoming issues related to the Internet of Things. Nevertheless, machine learning is a robust technology that can recognize suspicious dangers and activities in smart devices and grids. The authors of this paper conducted an extensive literature review on Machine Learning methods and the significance of IoT security in the context of various types of potential attacks. After that, they compared several different ML algorithms regarding the detection of attacks and anomalies. Additionally, many machines learning-based Internet of Things protection systems have been presented.
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来源期刊
Proceedings of the Pakistan Academy of Sciences: Part A
Proceedings of the Pakistan Academy of Sciences: Part A Computer Science-Computer Science (all)
CiteScore
0.70
自引率
0.00%
发文量
15
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