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A Comparative Study of Anomaly Detection Techniques for Smart City Wireless Sensor Networks

机译:智能城市无线传感器网络异常检测技术的比较研究

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In many countries around the world, smart cities are becoming a reality. These cities contribute to improving citizens’ quality of life by providing services that are normally based on data extracted from wireless sensor networks (WSN) and other elements of the Internet of Things. Additionally, public administration uses these smart city data to increase its efficiency, to reduce costs and to provide additional services. However, the information received at smart city data centers is not always accurate, because WSNs are sometimes prone to error and are exposed to physical and computer attacks. In this article, we use real data from the smart city of Barcelona to simulate WSNs and implement typical attacks. Then, we compare frequently used anomaly detection techniques to disclose these attacks. We evaluate the algorithms under different requirements on the available network status information. As a result of this study, we conclude that one-class Support Vector Machines is the most appropriate technique. We achieve a true positive rate at least 56% higher than the rates achieved with the other compared techniques in a scenario with a maximum false positive rate of 5% and a 26% higher in a scenario with a false positive rate of 15%.
机译:在世界上许多国家,智慧城市正在成为现实。这些城市通过提供通常基于从无线传感器网络(WSN)和物联网的其他元素提取的数据的服务,为改善市民的生活质量做出了贡献。此外,公共管理使用这些智能城市数据来提高其效率,降低成本并提供其他服务。但是,在智能城市数据中心接收的信息并不总是准确的,因为WSN有时容易出错并且容易受到物理和计算机攻击。在本文中,我们使用来自智能城市巴塞罗那的真实数据来模拟WSN并实施典型的攻击。然后,我们比较常用的异常检测技术来揭示这些攻击。我们在可用网络状态信息的不同要求下评估算法。这项研究的结果是,我们得出结论,一类支持向量机是最合适的技术。在最大假阳性率为5%的情况下,与其他比较技术相比,我们获得的真阳性率至少高出56%,在假阳性率为15%的情况下,我们达到了26%。

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