2022
DOI: 10.3390/en15134832
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Detection of Random False Data Injection Cyberattacks in Smart Water Systems Using Optimized Deep Neural Networks

Abstract: A cyberattack detection model based on supervised deep neural network is proposed to identify random false data injection (FDI) on the tank’s level measurements of a water distribution system. The architecture of the neural network, as well as various hyper-parameters, is modified and tuned to acquire the highest detection performance using the smallest size of training data set. The efficacy of the proposed detection model against various activation functions including sigmoid, rectified linear unit, and soft… Show more

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Cited by 5 publications
(1 citation statement)
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“…Several techniques ranging from fast Independent Component Analysis (Brentan et al., 2021), support vector machines (Nader et al., 2016), hidden Markov chains (Zohrevand et al., 2016), to information theory (Ahmed et al., 2016) have been introduced for this task. The realm of data‐driven anomaly detection remains a fertile ground for further research (Moazeni & Khazaei, 2022). Yet, it’s worth noting that many of these investigations are anchored in contexts like water distribution systems (Taormina et al., 2017).…”
Section: Discussionmentioning
confidence: 99%
“…Several techniques ranging from fast Independent Component Analysis (Brentan et al., 2021), support vector machines (Nader et al., 2016), hidden Markov chains (Zohrevand et al., 2016), to information theory (Ahmed et al., 2016) have been introduced for this task. The realm of data‐driven anomaly detection remains a fertile ground for further research (Moazeni & Khazaei, 2022). Yet, it’s worth noting that many of these investigations are anchored in contexts like water distribution systems (Taormina et al., 2017).…”
Section: Discussionmentioning
confidence: 99%