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Autori principali: Tjhay, Timothy, Bessa, Ricardo J., Paulos, Jose
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2504.13314
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author Tjhay, Timothy
Bessa, Ricardo J.
Paulos, Jose
author_facet Tjhay, Timothy
Bessa, Ricardo J.
Paulos, Jose
contents The European Union's Artificial Intelligence (AI) Act defines robustness, resilience, and security requirements for high-risk sectors but lacks detailed methodologies for assessment. This paper introduces a novel framework for quantitatively evaluating the robustness and resilience of reinforcement learning agents in congestion management. Using the AI-friendly digital environment Grid2Op, perturbation agents simulate natural and adversarial disruptions by perturbing the input of AI systems without altering the actual state of the environment, enabling the assessment of AI performance under various scenarios. Robustness is measured through stability and reward impact metrics, while resilience quantifies recovery from performance degradation. The results demonstrate the framework's effectiveness in identifying vulnerabilities and improving AI robustness and resilience for critical applications.
format Preprint
id arxiv_https___arxiv_org_abs_2504_13314
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle On the Definition of Robustness and Resilience of AI Agents for Real-time Congestion Management
Tjhay, Timothy
Bessa, Ricardo J.
Paulos, Jose
Artificial Intelligence
The European Union's Artificial Intelligence (AI) Act defines robustness, resilience, and security requirements for high-risk sectors but lacks detailed methodologies for assessment. This paper introduces a novel framework for quantitatively evaluating the robustness and resilience of reinforcement learning agents in congestion management. Using the AI-friendly digital environment Grid2Op, perturbation agents simulate natural and adversarial disruptions by perturbing the input of AI systems without altering the actual state of the environment, enabling the assessment of AI performance under various scenarios. Robustness is measured through stability and reward impact metrics, while resilience quantifies recovery from performance degradation. The results demonstrate the framework's effectiveness in identifying vulnerabilities and improving AI robustness and resilience for critical applications.
title On the Definition of Robustness and Resilience of AI Agents for Real-time Congestion Management
topic Artificial Intelligence
url https://arxiv.org/abs/2504.13314