TY - UNPB
T1 - A Conceptual Framework for AI-based Decision Systems in Critical Infrastructures
AU - Leyli-abadi, Milad
AU - Bessa, Ricardo J.
AU - Viebahn, Jan
AU - Boos, Daniel
AU - Borst, Clark
AU - Castagna, Alberto
AU - Chavarriaga, Ricardo
AU - Hassouna, Mohamed
AU - Lemetayer, Bruno
AU - Leto, Giulia
AU - Marot, Antoine
AU - Meddeb, Maroua
AU - Meyer, Manuel
AU - Schiaffonati, Viola
AU - Schneider, Manuel
AU - Waefler, Toni
PY - 2025
Y1 - 2025
N2 - The interaction between humans and AI in safety-critical systems presents a unique set of challenges that remain partially addressed by existing frameworks. These challenges stem from the complex interplay of requirements for transparency, trust, and explainability, coupled with the necessity for robust and safe decision-making. A framework that holistically integrates human and AI capabilities while addressing these concerns is notably required, bridging the critical gaps in designing, deploying, and maintaining safe and effective systems. This paper proposes a holistic conceptual framework for critical infrastructures by adopting an interdisciplinary approach. It integrates traditionally distinct fields such as mathematics, decision theory, computer science, philosophy, psychology, and cognitive engineering and draws on specialized engineering domains, particularly energy, mobility, and aeronautics. Its flexibility is further demonstrated through a case study on power grid management.
AB - The interaction between humans and AI in safety-critical systems presents a unique set of challenges that remain partially addressed by existing frameworks. These challenges stem from the complex interplay of requirements for transparency, trust, and explainability, coupled with the necessity for robust and safe decision-making. A framework that holistically integrates human and AI capabilities while addressing these concerns is notably required, bridging the critical gaps in designing, deploying, and maintaining safe and effective systems. This paper proposes a holistic conceptual framework for critical infrastructures by adopting an interdisciplinary approach. It integrates traditionally distinct fields such as mathematics, decision theory, computer science, philosophy, psychology, and cognitive engineering and draws on specialized engineering domains, particularly energy, mobility, and aeronautics. Its flexibility is further demonstrated through a case study on power grid management.
UR - https://arxiv.org/abs/2504.16133
U2 - 10.48550/ARXIV.2504.16133
DO - 10.48550/ARXIV.2504.16133
M3 - Preprint
BT - A Conceptual Framework for AI-based Decision Systems in Critical Infrastructures
ER -