AIJan 14, 2025

Large Language Model Interface for Home Energy Management Systems

arXiv:2501.07919v110 citationsh-index: 5E-Energy
Originality Synthesis-oriented
AI Analysis

This work addresses usability issues in HEMSs for households, but it is incremental as it applies existing LLM techniques to a specific domain.

The paper tackles the difficulty non-technical users face in parameterizing Home Energy Management Systems (HEMSs) by proposing an LLM-based interface that interprets user inputs and outputs well-formatted parameters, achieving an average parameter retrieval accuracy of 88%.

Home Energy Management Systems (HEMSs) help households tailor their electricity usage based on power system signals such as energy prices. This technology helps to reduce energy bills and offers greater demand-side flexibility that supports the power system stability. However, residents who lack a technical background may find it difficult to use HEMSs effectively, because HEMSs require well-formatted parameterization that reflects the characteristics of the energy resources, houses, and users' needs. Recently, Large-Language Models (LLMs) have demonstrated an outstanding ability in language understanding. Motivated by this, we propose an LLM-based interface that interacts with users to understand and parameterize their ``badly-formatted answers'', and then outputs well-formatted parameters to implement an HEMS. We further use Reason and Act method (ReAct) and few-shot prompting to enhance the LLM performance. Evaluating the interface performance requires multiple user--LLM interactions. To avoid the efforts in finding volunteer users and reduce the evaluation time, we additionally propose a method that uses another LLM to simulate users with varying expertise, ranging from knowledgeable to non-technical. By comprehensive evaluation, the proposed LLM-based HEMS interface achieves an average parameter retrieval accuracy of 88\%, outperforming benchmark models without ReAct and/or few-shot prompting.

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