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Main Authors: Hu, Jinwei, Tang, Zezhi, Jin, Xin, Zhang, Benyuan, Dong, Yi, Huang, Xiaowei
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.04100
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author Hu, Jinwei
Tang, Zezhi
Jin, Xin
Zhang, Benyuan
Dong, Yi
Huang, Xiaowei
author_facet Hu, Jinwei
Tang, Zezhi
Jin, Xin
Zhang, Benyuan
Dong, Yi
Huang, Xiaowei
contents This paper presents HERO (Hierarchical Testing with Rabbit Optimization), a novel black-box adversarial testing framework for evaluating the robustness of deep learning-based Prognostics and Health Management systems in Industrial Cyber-Physical Systems. Leveraging Artificial Rabbit Optimization, HERO generates physically constrained adversarial examples that align with real-world data distributions via global and local perspective. Its generalizability ensures applicability across diverse ICPS scenarios. This study specifically focuses on the Proton Exchange Membrane Fuel Cell system, chosen for its highly dynamic operational conditions, complex degradation mechanisms, and increasing integration into ICPS as a sustainable and efficient energy solution. Experimental results highlight HERO's ability to uncover vulnerabilities in even state-of-the-art PHM models, underscoring the critical need for enhanced robustness in real-world applications. By addressing these challenges, HERO demonstrates its potential to advance more resilient PHM systems across a wide range of ICPS domains.
format Preprint
id arxiv_https___arxiv_org_abs_2507_04100
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Hierarchical Testing with Rabbit Optimization for Industrial Cyber-Physical Systems
Hu, Jinwei
Tang, Zezhi
Jin, Xin
Zhang, Benyuan
Dong, Yi
Huang, Xiaowei
Machine Learning
Artificial Intelligence
Systems and Control
This paper presents HERO (Hierarchical Testing with Rabbit Optimization), a novel black-box adversarial testing framework for evaluating the robustness of deep learning-based Prognostics and Health Management systems in Industrial Cyber-Physical Systems. Leveraging Artificial Rabbit Optimization, HERO generates physically constrained adversarial examples that align with real-world data distributions via global and local perspective. Its generalizability ensures applicability across diverse ICPS scenarios. This study specifically focuses on the Proton Exchange Membrane Fuel Cell system, chosen for its highly dynamic operational conditions, complex degradation mechanisms, and increasing integration into ICPS as a sustainable and efficient energy solution. Experimental results highlight HERO's ability to uncover vulnerabilities in even state-of-the-art PHM models, underscoring the critical need for enhanced robustness in real-world applications. By addressing these challenges, HERO demonstrates its potential to advance more resilient PHM systems across a wide range of ICPS domains.
title Hierarchical Testing with Rabbit Optimization for Industrial Cyber-Physical Systems
topic Machine Learning
Artificial Intelligence
Systems and Control
url https://arxiv.org/abs/2507.04100