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Generative AI and LLM applications in renewable energy and smart grids: a systematic review for the sustainable energy transition

Abstract

The global energy transition toward decarbonization and digitalization requires advanced methods to manage decentralized, data-intensive cyber-physical energy systems. This systematic review analyzes 106 research studies on Generative Artificial Intelligence (GenAI) and Large Language Models (LLMs) in renewable energy and smart grids, organized into seven application clusters covering forecasting, system design, operation, reliability, data and cybersecurity, and energy markets. The review situates these applications within a Cyber-Physical-Social Systems (CPSS) framework. Results show that GANs dominate current applications (47.2%), followed by LLMs (10.4%) and VAEs (9.4%), with growing adoption of diffusion and score-based models (7.5% each). Selected studies report improved probabilistic forecasting and uncertainty calibration using diffusion and score-based approaches, subject to dataset and evaluation setup. GenAI supports system planning through synthetic scenario generation, enhances operational decision support and demand response coordination, and contributes to reliability, cybersecurity, and market analysis. LLMs primarily function as language-driven decision support and knowledge integration components across multiple application domains. Despite computational and data-related constraints, GenAI represents an important enabler of the sustainable digital transition by supporting resilience, adaptability, and governance in renewable energy systems.

Category

Academic article

Language

English

Author(s)

  • Umit Cali
  • Ugur Halden
  • Merlinda Andoni
  • Ferhat Ozgur Catak
  • Si Chen
  • Benoit Couraud
  • Emre Kantar
  • Samuel Knapper
  • Ibrahim Kucukdemiral
  • Huseyin Kusetogullari
  • Murat Kuzlu
  • Yashar Mousavi
  • Sonam Norbu
  • Taha Selim Ustun
  • David Flynn

Affiliation

  • SINTEF Energy Research / Electric Power Technology
  • Blekinge Institute of Technology
  • Estonia
  • Glasgow Caledonian University
  • University of Glasgow
  • University of York
  • Norwegian University of Science and Technology
  • University of Stavanger
  • American University of Sharjah
  • National Institute of Advanced Industrial Science and Technology
  • Old Dominion University

Date

07.04.2026

Year

2026

Published in

Artificial Intelligence Review

ISSN

0269-2821

View this publication at Norwegian Research Information Repository