PrismNet: Viewing Time Series Through a Multi-Modal Prism for Interpretable Power Load Forecasting
Abstract
Load forecasting plays a pivotal role in the safe and stable operation of power systems. Conventional deep learning methods often struggle to adapt to few-shot scenarios frequently encountered in industrial applications. Existing multi-modal approaches typically overlook domain-specific cross-modal semantic alignment and lack sufficient mechanism interpretability. To address these challenges, this study proposes PrismNet, an interpretable multi-modal framework for power load forecasting. First, a multi-modal augment module integrates text and image modalities to strengthen load time series representations, empowering the model with few-shot learning capabilities. Subsequently, we design a Partial Information Decomposition (PID) guided multi-modal contrastive learning (CL) mechanism to achieve domain-specific cross-modal semantic alignment. This process elucidates the intrinsic interactions among modalities and offers a new lens for interpretability. Extensive experiments on real-world public datasets demonstrate that PrismNet outperforms strong deep learning and multi-modal baselines, particularly in few-shot settings, while providing a trustworthy and interpretable solution for safety-critical electric load scenarios. Our code is available at https://anonymous.4open.science/r/PrismNet-9DFC.
Cite
@article{arxiv.2605.08668,
title = {PrismNet: Viewing Time Series Through a Multi-Modal Prism for Interpretable Power Load Forecasting},
author = {Yuxuan Chen and Shuo Dai and Ruoyi Xu and Haipeng Xie},
journal= {arXiv preprint arXiv:2605.08668},
year = {2026}
}