Energies, Vol. 19, Pages 476: Artificial Intelligence in Local Energy Systems: A Perspective on Emerging Trends and Sustainable Innovation

Energies, Vol. 19, Pages 476: Artificial Intelligence in Local Energy Systems: A Perspective on Emerging Trends and Sustainable Innovation

Energies doi: 10.3390/en19020476

Authors:
Sára Ferenci
Florina-Ambrozia Coteț
Elena Simina Lakatos
Radu Adrian Munteanu
Loránd Szabó

Local energy systems (LESs) are becoming larger and more heterogeneous as distributed energy resources, electrified loads, and active prosumers proliferate, increasing the need for reliable coordination of operation, markets, and community governance. This Perspective synthesizes recent literature to map how artificial intelligence (AI) supports forecasting and situational awareness, optimization, and real-time control of distributed assets, and community-oriented markets and engagement, while arguing that adoption is limited by system-level credibility rather than model accuracy alone. The analysis highlights interlocking deployment barriers, such as governance-integrated explainability, distributional equity, privacy and data governance, robustness under non-stationarity, and the computational footprint of AI. Building on this diagnosis, the paper proposes principles-as-constraints for sustainable, trustworthy LES AI and a deployment-oriented validation and reporting framework. It recommends evaluating LES AI with deployment-ready evidence, including stress testing under shift and rare events, calibrated uncertainty, constraint-violation and safe-fallback behavior, distributional impact metrics, audit-ready documentation, edge feasibility, and transparent energy/carbon accounting. Progress should be judged by measurable system benefits delivered under verifiable safeguards.

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