RE-LLM: Integrating Large Language Models into Renewable Energy Systems
Ali Forootani, Mohammad Sadr, Danial Esmaeili Aliabadi, Daniela Thraen

TL;DR
RE-LLM introduces a hybrid framework integrating large language models into energy system modeling to improve interpretability, accelerate simulations, and facilitate stakeholder engagement in renewable energy planning.
Contribution
This paper presents RE-LLM, a novel hybrid approach combining optimization, machine learning surrogates, and LLMs to enhance energy system modeling's speed, interpretability, and stakeholder communication.
Findings
Reduces computational time for energy simulations.
Improves clarity of complex modeling results for non-experts.
Enables real-time, multilingual explanations of energy scenarios.
Abstract
Energy system models are increasingly employed to guide long-term planning in multi-sectoral environments where decisions span electricity, heat, transport, land use, and industry. While these models provide rigorous quantitative insights, their outputs are often highly technical, making them difficult to interpret for non-expert stakeholders such as policymakers, planners, and the public. This communication gap limits the accessibility and practical impact of scenario-based modeling, particularly as energy transitions grow more complex with rising shares of renewables, sectoral integration, and deep uncertainties. To address this challenge, we propose the Renewable Energy Large Language Model (RE-LLM), a hybrid framework that integrates Large Language Models (LLMs) directly into the energy system modeling workflow. RE-LLM combines three core elements: (i) optimization-based scenario…
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Taxonomy
TopicsIntegrated Energy Systems Optimization · Energy Load and Power Forecasting · Hybrid Renewable Energy Systems
