LGSPMLNov 19, 2019

Attack on Grid Event Cause Analysis: An Adversarial Machine Learning Approach

arXiv:1911.08011v230 citations
Originality Synthesis-oriented
AI Analysis

This addresses vulnerabilities in power grid data analysis, which is critical for system reliability, but is incremental as it builds on existing adversarial machine learning methods applied to a specific domain.

The paper investigates adversarial attacks on convolutional neural network-based event cause analysis in power grids, showing that adversaries can successfully misclassify events through stealthy data manipulations, and proposes a defense mechanism to robustify performance.

With the ever-increasing reliance on data for data-driven applications in power grids, such as event cause analysis, the authenticity of data streams has become crucially important. The data can be prone to adversarial stealthy attacks aiming to manipulate the data such that residual-based bad data detectors cannot detect them, and the perception of system operators or event classifiers changes about the actual event. This paper investigates the impact of adversarial attacks on convolutional neural network-based event cause analysis frameworks. We have successfully verified the ability of adversaries to maliciously misclassify events through stealthy data manipulations. The vulnerability assessment is studied with respect to the number of compromised measurements. Furthermore, a defense mechanism to robustify the performance of the event cause analysis is proposed. The effectiveness of adversarial attacks on changing the output of the framework is studied using the data generated by real-time digital simulator (RTDS) under different scenarios such as type of attacks and level of access to data.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes