2021
DOI: 10.1109/tsg.2021.3062722
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Stealthy Black-Box Attacks on Deep Learning Non-Intrusive Load Monitoring Models

Abstract: With the advent of the advanced metering infrastructure, electricity usage data is being continuously generated at large volumes by smart meters vastly deployed across the modern power grid. Electric power utility companies and third party entities such as smart home management solution providers gain significant insights into these datasets via machine learning (ML) models. These are then utilized to perform active/passive power demand management that fosters economical and sustainable electricity usage. Alth… Show more

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Cited by 37 publications
(12 citation statements)
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“…The connection weight parameter w and the threshold h of the model are preset and cannot be changed. The connection weight parameter w and the threshold h of the perceptron can be automatically corrected by training [ 14 ]. Although the perceptron has the ability to learn, it cannot solve the simple linear inseparable distribution problem in the two-dimensional plane.…”
Section: Deep Learning Algorithm For the Layout Of Urban Social Facil...mentioning
confidence: 99%
“…The connection weight parameter w and the threshold h of the model are preset and cannot be changed. The connection weight parameter w and the threshold h of the perceptron can be automatically corrected by training [ 14 ]. Although the perceptron has the ability to learn, it cannot solve the simple linear inseparable distribution problem in the two-dimensional plane.…”
Section: Deep Learning Algorithm For the Layout Of Urban Social Facil...mentioning
confidence: 99%
“…Yang et al analyzed the construction project cost risk management theory [5]. Wang and Srikantha used quantitative evaluation methods to construct a fuzzy comprehensive evaluation model of engineering project cost risk, thereby, quantitatively assessing the impact of risk factors on the cost of highway engineering projects [6]. Wang et al used Monte Carlo simulation and crystal ball software to analyze the risk level of engineering project cost [7].…”
Section: Literature Reviewmentioning
confidence: 99%
“…Deep learning is a complex machine learning algorithm that has achieved far more results in speech and image recognition than previous related technologies [3]. Deep learning has achieved a lot in search technology, data mining, machine learning, machine translation, natural language processing, multimedia learning, voice, recommendation and personalization technologies, and other related elds [4]. Deep learning makes machines imitate human activities such as audio-visual and thinking, and solves many complex pattern recognition problems, which makes great progress in artificial intelligence.…”
Section: Introductionmentioning
confidence: 99%