Improving Cellular IoT Security with Identity Federation and Anomaly Detection

Bernardo Santos, Bruno Dzogovic, Boning Feng, Niels Jacot, V. T. Do, T. V. Do
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引用次数: 4

Abstract

As we notice the increasing adoption of Cellular IoT solutions (smart-home, e-health, among others), there are still some security aspects that can be improved as these devices can suffer various types of attacks that can have a high-impact over our daily lives. In order to avoid this, we present a multi-front security solution that consists on a federated cross-layered authentication mechanism, as well as a machine learning platform with anomaly detection techniques for data traffic analysis as a way to study devices’ behavior so it can preemptively detect attacks and minimize their impact. In this paper, we also present a proof-of-concept to illustrate the proposed solution and showcase its feasibility, as well as the discussion of future iterations that will occur for this work.
通过身份联合和异常检测提高蜂窝物联网安全性
当我们注意到越来越多的采用蜂窝物联网解决方案(智能家居、电子医疗等)时,仍然有一些安全方面可以改进,因为这些设备可能遭受各种类型的攻击,这些攻击可能对我们的日常生活产生重大影响。为了避免这种情况,我们提出了一个多战线安全解决方案,该解决方案由联邦跨层身份验证机制组成,以及一个具有异常检测技术的机器学习平台,用于数据流量分析,作为研究设备行为的一种方式,因此它可以先发制人地检测攻击并将其影响降至最低。在本文中,我们还提供了一个概念证明,以说明所建议的解决方案并展示其可行性,以及对将在此工作中发生的未来迭代的讨论。
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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