Towards Adaptive Cybersecurity for Green IoT

Talal Halabi, Martine Bellaïche, B. Fung
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引用次数: 2

Abstract

The Internet of Things (IoT) paradigm has led to an explosion in the number of IoT devices and an exponential rise in carbon footprint incurred by overburdened IoT networks and pervasive cloud/edge communications. Hence, there is a growing interest in industry and academia to enable the efficient use of computing infrastructures by optimizing the management of data center and IoT resources (hardware, software, network, and data) and reducing operational costs to slash greenhouse gas emissions and create healthy environments. Cybersecurity has also been considered in such efforts as a contributor to these environmental issues. Nonetheless, most green security approaches focus on designing low-overhead encryption schemes and do not emphasize energy-efficient security from architectural and deployment viewpoints. This paper sheds light on the emerging paradigm of adaptive cybersecurity as one of the research directions to support sustainable computing in green IoT. It presents three potential research directions and their associated methods for designing and deploying adaptive security in green computing and resource-constrained IoT environments to save on energy consumption. Such efforts will transform the development of data-driven IoT security solutions to be greener and more environment-friendly.
物联网(IoT)范式导致了物联网设备数量的爆炸式增长,以及负担过重的物联网网络和无处不在的云/边缘通信导致的碳足迹呈指数级增长。因此,工业界和学术界越来越有兴趣通过优化数据中心和物联网资源(硬件、软件、网络和数据)的管理以及降低运营成本来减少温室气体排放和创造健康的环境,从而有效利用计算基础设施。在这些努力中,网络安全也被认为是造成这些环境问题的一个因素。尽管如此,大多数绿色安全方法侧重于设计低开销的加密方案,而不是从体系结构和部署的角度强调节能安全性。本文阐明了自适应网络安全作为支持绿色物联网可持续计算的研究方向之一的新兴范式。提出了在绿色计算和资源受限的物联网环境中设计和部署自适应安全以节省能源消耗的三个潜在研究方向及其相关方法。这些努力将使数据驱动的物联网安全解决方案的发展变得更绿色、更环保。
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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