Intelligent security on the edge of the cloud

Dimitrios Zissis
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引用次数: 20

Abstract

Edge or Fog computing is a relatively new architectural deployment model, ideally fit for the unique requirements of the Internet of Things. This paper presents a novel solution, which leverages the architectural characteristics of edge computing for security reasons. Machine learning models (specifically Support Vector Machines) are employed on the edge of the cloud, to perform low footprint unsupervised learning and analysis of sensor data for anomaly detection purposes. To this end, a proof of concept system is developed, capable of detecting anomalies in real world vessel sensor streams (big data) in a smart port environment. We report on early results, that validate the potential of the solution. The quality and performance of the model is investigated in real world conditions.
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云边缘的智能安全
边缘或雾计算是一种相对较新的架构部署模型,非常适合物联网的独特需求。本文提出了一种新颖的解决方案,它利用边缘计算的体系结构特征来考虑安全问题。机器学习模型(特别是支持向量机)被用于云的边缘,以执行低占用的无监督学习和分析传感器数据,用于异常检测目的。为此,开发了一个概念验证系统,能够在智能港口环境中检测真实船舶传感器流(大数据)中的异常情况。我们报告早期的结果,这些结果验证了解决方案的潜力。在实际条件下对模型的质量和性能进行了研究。
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