AI Agents 相关度: 5/10

Day-Ahead Electricity Price Forecasting for Volatile Markets Using Foundation Models with Regularization Strategy

Kritchanat Ponyuenyong, Pengyu Tu, Jia Wei Tan, Wei Soon Cheong, Jamie Ng Suat Ling, Lianlian Jiang
arXiv: 2602.05430v1 发布: 2026-02-05 更新: 2026-02-05

AI 摘要

论文提出一种基于Spike正则化的时间序列基础模型,用于波动市场中电力价格预测,效果显著。

主要贡献

  • 评估时间序列基础模型在波动电力市场中的有效性
  • 提出一种spike正则化策略
  • 对比了多种TSFM与传统模型的性能

方法论

采用Spike正则化策略,并对比TTMs, MOIRAI, MOMENT, TimesFM等TSFM与ARIMA, LSTM, CNN-LSTM等模型。

原文摘要

Electricity price forecasting (EPF) is essential for energy markets stakeholders (e.g. grid operators, energy traders, policymakers) but remains challenging due to the inherent volatility and nonlinearity of price signals. Traditional statistical and deep learning (DL) models often struggle to capture complex temporal dependencies and integrate heterogeneous data effectively. While time series foundation models (TSFMs) have shown strong performance in general time series forecasting tasks, such as traffic forecasting and weather forecasting. However, their effectiveness in day-ahead EPF, particularly in volatile markets, remains underexplored. This paper presents a spike regularization strategy and evaluates a wide range of TSFMs, including Tiny Time Mixers (TTMs), MOIRAI, MOMENT, and TimesFM, against traditional statistical and DL models such as Autoregressive Integrated Moving Average (ARIMA), Long-short Term Memory (LSTM), and Convolutional Neural Network - LSTM (CNN-LSTM) using half-hourly wholesale market data with volatile trends in Singapore. Exogenous factors (e.g. weather and calendar variables) are also incorporated into models where applicable. Results demonstrate that TSFMs consistently outperform traditional approaches, achieving up to 37.4% improvement in MAPE across various evaluation settings. The findings offer practical guidance for improving forecast accuracy and decision-making in volatile electricity markets.

标签

电力价格预测 时间序列基础模型 正则化 波动市场

arXiv 分类

cs.AI cs.LG