LGAICRJan 28, 2021

Adversarial Machine Learning Attacks on Condition-Based Maintenance Capabilities

arXiv:2101.12097v13 citations
Originality Synthesis-oriented
AI Analysis

This addresses security risks in industrial maintenance systems, but it is incremental as it applies known adversarial techniques to a new domain.

The paper tackles the vulnerability of condition-based maintenance (CBM) systems to adversarial machine learning attacks, showing that such attacks can deceive models and degrade performance, with results indicating CBM systems are susceptible and require defense strategies.

Condition-based maintenance (CBM) strategies exploit machine learning models to assess the health status of systems based on the collected data from the physical environment, while machine learning models are vulnerable to adversarial attacks. A malicious adversary can manipulate the collected data to deceive the machine learning model and affect the CBM system's performance. Adversarial machine learning techniques introduced in the computer vision domain can be used to make stealthy attacks on CBM systems by adding perturbation to data to confuse trained models. The stealthy nature causes difficulty and delay in detection of the attacks. In this paper, adversarial machine learning in the domain of CBM is introduced. A case study shows how adversarial machine learning can be used to attack CBM capabilities. Adversarial samples are crafted using the Fast Gradient Sign method, and the performance of a CBM system under attack is investigated. The obtained results reveal that CBM systems are vulnerable to adversarial machine learning attacks and defense strategies need to be considered.

Foundations

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