AI for REAL-world NETwork operation

Digital, Industry & SpaceHORIZON-RIAID: 101119527
EC Contribution
€40,000
Consortium Size
17 orgs
Start Year
2023
Summary

The scope of AI4REALNET covers the perspective of AI-based solutions addressing critical systems (electricity, railway, and air traffic management) modelled by networks that can be simulated, and are traditionally operated by humans, and where AI systems complement and augment human abilities. It has two main strategic goals: 1) to develop the next generation of decision-making methods powered by supervised and reinforcement learning, which aim at trustworthiness in AI-assisted human control with augmented cognition, hybrid human-AI co-learning and autonomous AI, with the resilience, safety, and security of critical infrastructures as core requirements, and 2) to boost the development and validation of novel AI algorithms, by the consortium and AI community, through existing open-source digital environments capable of emulating realistic scenarios of physical systems operation and human decision-making.The core elements are: a) AI algorithms mainly composed by supervised and reinforcement learning, unifying the benefits of existing heuristics, physical modelling of these complex systems and learning methods, as well as, a set of complementary techniques to enhance transparency, safety, explainability and human acceptance; b) human-in-the-loop decision making for co-learning between AI and humans, considering integration of model uncertainty, human cognitive load and trust; c) autonomous AI systems relying on human supervision, embedded with human domain knowledge and safety rules.The AI4REALNET framework will be validated in 6 uses cases driven by industry requirements, across 3 network infrastructures with common properties. The use cases are focused on critical challenges and tasks of network operators, considering strategic long-term goals, such as decarbonisation, digitalisation, and resilience to disturbances, and are formulated in a unified sequential decision problem where many AI and non-AI algorithms can be applied and benchmarked.

Consortium (17)

Project Results (33)

Source: CORDIS, the EU research results database.

Publications (20)
A Conceptual Framework for AI-based Decision Systems in Critical Infrastructures
IEEE SMC 2025· 2025DOI
Milad Leyli-abadi, Ricardo J Bessa, Jan Viebahn, Daniel Boos, Clark Borst, Alberto Castagna, Ricardo Chavarriaga, Mohamed Hassouna, Bruno Lemetayer, Giulia Leto, Antoine Marot, Maroua Meddeb, Manuel Meyer, Viola Schiaffonati, Manuel Schneider, Toni Waefle
Applying Job Design Criteria for Effective Human-AI Collaboration
AHFE International, Human Interaction and Emerging Technologies (IHIET 2025)· 2025DOI
Samira Hamouche, Nerissa Dettling, Toni Waefler
Centrally Coordinated Multi-Agent Reinforcement Learning for Power Grid Topology Control
ACM e-Energy 2025· 2025
Barbera de Mol, Davide Barbieri, Jan Viebahn, Davide Grossi
Continuous Assessment Driven Requirements Elicitation For Trustworthy AI Systems
ECML PKDD AI-SCI 2025 workshop· 2025DOI
Wolfgang, Stefani; Heitz, Christoph; Chavarriaga, Ricardo
Generation of Power Network Operating Scenarios for an AI-friendly Digital Environment
IEEE PowerTech 2025 Conference· 2025DOI
Jose Paulos, Pedro R. Silva, Ricardo J. Bessa, Antoine Marot, Jerome Dejaegher, Benjamin Donnot
Human-AI interaction in safety-critical network infrastructures
iScience· 2025DOI
Marco Mussi, Alberto Maria Metelli, Marcello Restelli, Gianvito Losapio, Ricardo J. Bessa, Daniel Boos, Clark Borst, Giulia Leto, Alberto Castagna, Ricardo Chavarriaga, Duarte Dias, Adrian Egli, Andrina Eisenegger, Yassine El Manyari, Anton Fuxjäger, Joaquim Geraldes, Samira Hamouche, Mohamed Hassouna, Bruno Lemetayer, Milad Leyli-Abadi, Roman Liessner, Jonas Lundberg, Antoine Marot, Maroua Meddeb, Viola Schiaffonati, Manuel Schneider, Thilo Stadelmann, Julia Usher, Herke Van Hoof, Jan Viebahn, Toni Waefler, Giacomo Zanotti
Learning Topology Actions for Power Grid Control: A Graph-Based Soft-Label Imitation Learning Approach
ECML PKDD 2025· 2025DOI
Mohamed Hassouna, Clara Holzhüter, Malte Lehna, Matthijs de Jong, Jan Viebahn, Bernhard Sick, Christoph Scholz
Multi-Objective Reinforcement Learning for Power Grid Topology Control
Power Tech 2025· 2025DOI
Thomas Lautenbacher, Ali Rajaei, Davide Barbieri, Jan Viebahn, Jochen L. Cremer
Power Grid Control with Graph-Based Distributed Reinforcement Learning
ECML PKDD 2025 ML4SPS workshop· 2025DOI
Carlo Fabrizio, Gianvito Losapio, Marco Mussi, Alberto Maria Metelli, Marcello Restelli
Study Design and Demystification of Physics Informed Neural Networks for Power Flow Simulation
ECML PKDD ML4SPS 2025 workshop· 2025DOI
Milad Leyli-abadi , Antoine Marot , Jérôme Picault
The Supportive AI Framework: From Recommending to Supporting
Lecture Notes in Computer Science, Augmented Cognition· 2025DOI
Toni Waefler, Samira Hamouche, Andrina Eisenegger
User experience evaluation of an AI-based decision-support tool for power grid congestion management
AHFE International, Human Interaction and Emerging Technologies (IHIET 2025)· 2025DOI
Jan Viebahn, Abdullah Ayedh, Jonas Lundberg, Magnus Bång, Jeroen Keijzers
Fault Detection for agents on power grid topology optimization: A Comprehensive analysis
European Conference of Machine Learning 2024· 2024
Malte Lehna, Mohamed Hassouna, Dmitry Degtyar, Sven Tomforde, Christoph Scholz
How does Inverse RL Scale to Large State Spaces? A Provably Efficient Approach
Neural Information Processing Systems (NeurIPS) 2024· 2024DOI
Filippo Lazzati, Mirco Mutti, Alberto Maria Metelli
Imitation Learning for Intra-Day Power Grid Operation through Topology Actions
European Conference of Machine Learning 2024· 2024DOI
Matthijs de Jong, Jan Viebahn, Yuliya Shapovalova
Last-Iterate Global Convergence of Policy Gradients for Constrained Reinforcement Learning
Neural Information Processing Systems (NeurIPS) 2024· 2024DOI
Alessandro Montenegro, Marco Mussi, Matteo Papini, Alberto Maria Metelli
On the Definition of Robustness and Resilience of AI Agents for Real-time Congestion Management
IEEE Power Tech 2025· 2024DOI
Timothy Tjhay, Ricardo J. Bessa, Jose Paulos
Pioneering roadmap for ML-driven algorithmic advancements in electrical networks
IEEE ISGT Europe 2024· 2024DOI
Jochen L. Cremer, Adrian Kelly, Ricardo J. Bessa, Milos Subasic, Panagiotis N. Papadopoulos, Samuel Young, Amar Sagar, Antoine Marot
State and Action Factorization in Power Grids
European Conference of Machine Learning 2024 · 2024DOI
Gianvito Losapio, Davide Beretta, Marco Mussi, Alberto Maria Metelli, Marcello Restelli
Sub-optimal Experts mitigate Ambiguity in Inverse Reinforcement Learning
Neural Information Processing Systems (NeurIPS) 2024· 2024DOI
Riccardo Poiani, Curti Gabriele, Alberto Maria Metelli, Marcello Restelli
Deliverables (12)
Other Results (1)
Periodic Reporting for period 1 - AI4REALNET (AI for REAL-world NETwork operation)