LGCRJul 19, 2024

Data Poisoning: An Overlooked Threat to Power Grid Resilience

arXiv:2407.14684v13 citationsh-index: 7
Originality Synthesis-oriented
AI Analysis

This addresses a cybersecurity vulnerability for power grid operators, but it is incremental as it builds on existing adversarial disruption research.

The paper identifies a research gap in data poisoning attacks on power grids, highlighting that current work focuses on evasion attacks while assuming secure training, and demonstrates that poisoning interventions can threaten grid resilience.

As the complexities of Dynamic Data Driven Applications Systems increase, preserving their resilience becomes more challenging. For instance, maintaining power grid resilience is becoming increasingly complicated due to the growing number of stochastic variables (such as renewable outputs) and extreme weather events that add uncertainty to the grid. Current optimization methods have struggled to accommodate this rise in complexity. This has fueled the growing interest in data-driven methods used to operate the grid, leading to more vulnerability to cyberattacks. One such disruption that is commonly discussed is the adversarial disruption, where the intruder attempts to add a small perturbation to input data in order to "manipulate" the system operation. During the last few years, work on adversarial training and disruptions on the power system has gained popularity. In this paper, we will first review these applications, specifically on the most common types of adversarial disruptions: evasion and poisoning disruptions. Through this review, we highlight the gap between poisoning and evasion research when applied to the power grid. This is due to the underlying assumption that model training is secure, leading to evasion disruptions being the primary type of studied disruption. Finally, we will examine the impacts of data poisoning interventions and showcase how they can endanger power grid resilience.

Foundations

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