Universal Adversarial Attack on Deep Learning Based Prognostics
Arghya Basak, Pradeep Rathore, Sri Harsha Nistala, Sagar Srinivas,, Venkataramana Runkana

TL;DR
This paper introduces universal adversarial perturbations that can reliably fool deep learning models for industrial RUL prediction, highlighting their threat to process control and maintenance systems.
Contribution
It is the first study to analyze the impact of universal adversarial perturbations on time series regression models in industrial settings.
Findings
Universal perturbations significantly increase prediction errors.
Model accuracy decreases as perturbation strength increases.
Perturbations can transfer across different models.
Abstract
Deep learning-based time series models are being extensively utilized in engineering and manufacturing industries for process control and optimization, asset monitoring, diagnostic and predictive maintenance. These models have shown great improvement in the prediction of the remaining useful life (RUL) of industrial equipment but suffer from inherent vulnerability to adversarial attacks. These attacks can be easily exploited and can lead to catastrophic failure of critical industrial equipment. In general, different adversarial perturbations are computed for each instance of the input data. This is, however, difficult for the attacker to achieve in real time due to higher computational requirement and lack of uninterrupted access to the input data. Hence, we present the concept of universal adversarial perturbation, a special imperceptible noise to fool regression based RUL prediction…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Bacillus and Francisella bacterial research
