Applications of explainable artificial intelligence in renewable energy research

Jordan Perr-Sauer
,
Juliette Ugirumurera
,
Jamil Gafur
,
Erik A Bensen
,
Truc Nguyen
,
Shuva Paul
,
Joseph Severino
,
Ambarish Nag
,
Sanjana Vijayshankar
,
Paul Gasper
,
Donal P Finegan
,
Jacob Holden
,
Juliane Mueller
,
Peter Graf
,
Charles Tripp
,
Hilary Egan
Published on Dec 1, 2025 in Energy Reports
DOI
Abstract
Researchers in renewable energy are applying deep learning (DL) to a variety of problems from diverse renewable energy domains, such as biofuels, wind, solar, power systems, buildings, vehicles, and transportation systems. Improvements in accuracy may be demonstrated using DL in laboratory settings. However, the lack of interpretability of DL models poses a practical limitation to their utility in advancing scientific knowledge and in the deployment of DL models in safety-critical energy systems. In this article, we discuss explainable artificial intelligence (XAI) as one pathway toward more interpretable DL models. We explore a brief timeline of U.S. national laboratory interest in XAI, an overview and taxonomy of methods in the field of XAI, and a selection of applications across renewable energy research domains. We conclude by highlighting pivotal areas where XAI can accelerate innovation in artificial intelligence for renewable energy research and other essential future directions.