Detection of False Data Injection in Smart Water Metering Infrastructure

Ayanfeoluwa Oluyomi, Shameek Bhattacharjee, Sajal Kumar Das
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Abstract

Smart water metering (SWM) infrastructure collects real-time water usage data that is useful for automated billing, leak detection, and forecasting of peak periods. Cyber/physical attacks can lead to data falsification on water usage data. This paper proposes a learning approach that converts smart water meter data into a Pythagorean mean-based invariant that is highly stable under normal conditions but deviates under attacks. We show how adversaries can launch deductive or camouflage attacks in the SWM infrastructure to gain benefits and impact the water distribution utility. Then, we apply a two-tier approach of stateless and stateful detection, reducing false alarms without significantly sacrificing the attack detection rate. We validate our approach using real-world water usage data of 92 households in Alicante, Spain for varying attack scales and strengths and prove that our method limits the impact of undetected attacks and expected time between consecutive false alarms. Our results show that even for low-strength, low-scale deductive attacks, the model limits the impact of an undetected attack to only C0.2199375 and for high-strength, low-scale camouflage attack, the impact of an undetected attack was limited to C1.434375
智能水表基础设施中虚假数据注入检测
智能水表(SWM)基础设施收集实时用水数据,这些数据对自动计费、泄漏检测和高峰时段预测非常有用。网络/物理攻击可能导致用水数据的数据伪造。本文提出了一种学习方法,将智能水表数据转换为在正常条件下高度稳定但在攻击下偏离的基于毕达哥拉斯均值的不变量。我们展示了对手如何在SWM基础设施中发起演绎或伪装攻击,以获得利益并影响供水公用事业。然后,我们采用无状态和有状态两层检测方法,在不显著牺牲攻击检测率的情况下减少假警报。我们使用西班牙阿利坎特的92个家庭的真实用水数据验证了我们的方法,用于不同的攻击规模和强度,并证明我们的方法限制了未被发现的攻击的影响和连续假警报之间的预期时间。我们的研究结果表明,即使对于低强度、低规模的演绎攻击,该模型也将未被发现的攻击的影响限制在C0.2199375,对于高强度、低规模的伪装攻击,未被发现的攻击的影响限制在C1.434375
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