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Adversarial Dynamic Load-Altering Cyberattacks Against Peak Shaving Using Residential Electric Water Heaters

El-Nasser S. Youssef, Fabrice Labeau, Marthe Kassouf

2023IEEE Transactions on Smart Grid15 citationsDOI

Abstract

Innovative smart grid technologies such as demand-side management (DSM) and smart home systems promise more optimal energy consumption; however, they expose the grid to load-altering cyberattacks wherein adversaries take control of customers’ connected high-wattage appliances and consequently induce harmful load fluctuations. In this article, we present a novel adversarial machine learning algorithm powered by black-box optimization to synthesize stealthy dynamic load-altering attacks aiming at evading existing intrusion detection measures while maximizing the damage inflicted on the grid. The proposed algorithm is applied on a case study involving peak shaving using direct load control of residential electric water heaters. It is capable of designing stealthy attacks that can increase the detectors’ misclassification probability by up to 44%. It can also be adapted to other load-altering attacks involving different DSM programs or other classes of loads. The algorithm can be used by electric power utilities to evaluate and harden the robustness of their cybersecurity solutions.

Topics & Concepts

Peaking power plantSmart gridLoad regulationGridComputer scienceDemand responseRobustness (evolution)Peak demandLoad managementLoad balancing (electrical power)BlackoutElectric power systemReal-time computingEngineeringElectricityPower (physics)Electrical engineeringDistributed generationRenewable energyPhysicsBiochemistryGeometryVoltageGeneChemistryQuantum mechanicsMathematicsSmart Grid Security and ResilienceAdversarial Robustness in Machine LearningAdvanced Malware Detection Techniques
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