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Main Authors: Fana, Hang, Lib, Mingxuan, Zhanga, Zuhan, Chengc, Long, Ye, Yujian, Liua, Dunnan
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.00531
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author Fana, Hang
Lib, Mingxuan
Zhanga, Zuhan
Chengc, Long
Ye, Yujian
Liua, Dunnan
author_facet Fana, Hang
Lib, Mingxuan
Zhanga, Zuhan
Chengc, Long
Ye, Yujian
Liua, Dunnan
contents The integration of wind energy into power grids necessitates accurate ultra-short-term wind power forecasting to ensure grid stability and optimize resource allocation. This study introduces M2WLLM, an innovative model that leverages the capabilities of Large Language Models (LLMs) for predicting wind power output at granular time intervals. M2WLLM overcomes the limitations of traditional and deep learning methods by seamlessly integrating textual information and temporal numerical data, significantly improving wind power forecasting accuracy through multi-modal data. Its architecture features a Prompt Embedder and a Data Embedder, enabling an effective fusion of textual prompts and numerical inputs within the LLMs framework. The Semantic Augmenter within the Data Embedder translates temporal data into a format that the LLMs can comprehend, enabling it to extract latent features and improve prediction accuracy. The empirical evaluations conducted on wind farm data from three Chinese provinces demonstrate that M2WLLM consistently outperforms existing methods, such as GPT4TS, across various datasets and prediction horizons. The results highlight LLMs' ability to enhance accuracy and robustness in ultra-short-term forecasting and showcase their strong few-shot learning capabilities.
format Preprint
id arxiv_https___arxiv_org_abs_2506_00531
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle M2WLLM: Multi-Modal Multi-Task Ultra-Short-term Wind Power Prediction Algorithm Based on Large Language Model
Fana, Hang
Lib, Mingxuan
Zhanga, Zuhan
Chengc, Long
Ye, Yujian
Liua, Dunnan
Machine Learning
Artificial Intelligence
The integration of wind energy into power grids necessitates accurate ultra-short-term wind power forecasting to ensure grid stability and optimize resource allocation. This study introduces M2WLLM, an innovative model that leverages the capabilities of Large Language Models (LLMs) for predicting wind power output at granular time intervals. M2WLLM overcomes the limitations of traditional and deep learning methods by seamlessly integrating textual information and temporal numerical data, significantly improving wind power forecasting accuracy through multi-modal data. Its architecture features a Prompt Embedder and a Data Embedder, enabling an effective fusion of textual prompts and numerical inputs within the LLMs framework. The Semantic Augmenter within the Data Embedder translates temporal data into a format that the LLMs can comprehend, enabling it to extract latent features and improve prediction accuracy. The empirical evaluations conducted on wind farm data from three Chinese provinces demonstrate that M2WLLM consistently outperforms existing methods, such as GPT4TS, across various datasets and prediction horizons. The results highlight LLMs' ability to enhance accuracy and robustness in ultra-short-term forecasting and showcase their strong few-shot learning capabilities.
title M2WLLM: Multi-Modal Multi-Task Ultra-Short-term Wind Power Prediction Algorithm Based on Large Language Model
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2506.00531