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Improved Mitigation of Cyber Threats in IIoT for Smart Cities: A New-Era Approach and Scheme

机译:对智能城市IIOT中的网络威胁的改善:一种新的方法和方案

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摘要

Cybersecurity in Industrial Internet of Things (IIoT) has become critical as smart cities are becoming increasingly linked to industrial control systems (ICSs) used in critical infrastructure. Consequently, data-driven security systems for analyzing massive amounts of data generated by smart cities have become essential. A representative method for analyzing large-scale data is the game bot detection approach used in massively multiplayer online role-playing games. We reviewed the literature on bot detection methods to extend the anomaly detection approaches used in bot detection schemes to IIoT fields. Finally, we proposed a process wherein the data envelopment analysis (DEA) model was applied to identify features for efficiently detecting anomalous behavior in smart cities. Experimental results using random forest show that our extracted features based on a game bot can achieve an average F1-score of 0.99903 using 10-fold validation. We confirmed the applicability of the analyzed game-industry methodology to other fields and trained a random forest on the high-efficiency features identified by applying a DEA, obtaining an F1-score of 0.997 using the validation set approach. In this study, an anomaly detection method for analyzing massive smart city data based on a game industry methodology was presented and applied to the ICS dataset.
机译:随着智能城市与关键基础设施中使用的工业控制系统(ICSS)越来越多地联系起来,事物互联网上的网络安全变得至关重要。因此,用于分析智能城市生成的大量数据的数据驱动的安全系统已经成为必不可少的。用于分析大规模数据的代表性方法是在大型多人在线角色扮演游戏中使用的游戏机器人检测方法。我们在机器人检测方法上审查了文献,以扩展到IIOT田地的机器人检测方案中使用的异常检测方法。最后,我们提出了一种方法,其中应用数据包络分析(DEA)模型来识别智能城市中有效检测异常行为的特征。使用随机林的实验结果表明,我们使用10倍验证的基于游戏机器机BOT的提取特征可以实现0.99903的平均F1分数。我们确认分析的游戏行业方法对其他领域的适用性,并培训了通过应用DEA识别的高效特征的随机林,使用验证集方法获得0.997的F1分数。在本研究中,提出了一种基于游戏行业方法的基于游戏行业方法的大规模智能城数据的异常检测方法,并应用于ICS数据集。

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