物联网中雾计算的不确定性感知认证模型

Mohammad Heydari, Alexios Mylonas, Vasilios Katos, E. Balaguer-Ballester, V. H. Tafreshi, E. Benkhelifa
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引用次数: 12

摘要

自“雾计算”一词于2012年由思科系统公司(Cisco Systems)提出以来,这种有前途的模式的安全和隐私问题仍然是开放的挑战。在各种安全挑战中,访问控制是物联网时代所有云计算类系统(如雾计算、移动边缘计算)的关键问题。因此,在这样一个固有的可伸缩、异构和动态环境中分配精确的访问级别并不容易执行。这项工作定义了雾计算中访问控制的身份验证阶段的不确定性挑战,因为一方面雾具有许多放大身份验证不确定性的特征,另一方面应用传统的访问控制模型不能产生灵活和有弹性的解决方案。为此,我们提出了一种基于属性访问控制(ABAC)模型扩展的预测模型。我们的数据驱动模型能够处理身份验证中的不确定性。它还能够考虑移动边缘设备的移动性,以便处理身份验证。在此过程中,我们使用并比较了四种监督分类算法,即决策树、Naïve贝叶斯、逻辑回归和支持向量机,建立了我们的模型。我们的模型使用逻辑回归可以达到88.14%的认证准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncertainty-Aware Authentication Model for Fog Computing in IoT
Since the term “Fog Computing” has been coined by Cisco Systems in 2012, security and privacy issues of this promising paradigm are still open challenges. Among various security challenges, Access Control is a crucial concern for all cloud computing-like systems (e.g. Fog computing, Mobile edge computing) in the IoT era. Therefore, assigning the precise level of access in such an inherently scalable, heterogeneous and dynamic environment is not easy to perform. This work defines the uncertainty challenge for authentication phase of the access control in fog computing because on one hand fog has a number of characteristics that amplify uncertainty in authentication and on the other hand applying traditional access control models does not result in a flexible and resilient solution. Therefore, we have proposed a novel prediction model based on the extension of Attribute Based Access Control (ABAC) model. Our data-driven model is able to handle uncertainty in authentication. It is also able to consider the mobility of mobile edge devices in order to handle authentication. In doing so, we have built our model using and comparing four supervised classification algorithms namely as Decision Tree, Naïve Bayes, Logistic Regression and Support Vector Machine. Our model can achieve authentication performance with 88.14% accuracy using Logistic Regression.
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