Skip to main content
Top

Optimizing Feature Selection for Load Forecasting Using Multi-Head Attention Mechanism

  • 2025
  • OriginalPaper
  • Chapter
Published in:

Activate our intelligent search to find suitable subject content or patents.

search-config
loading …

Abstract

This chapter delves into the optimization of feature selection for load forecasting using a Multi-Head Attention (MHA) mechanism integrated with Convolutional Neural Network (CNN) and Gated Recurrent Unit (GRU) models. The study focuses on the critical role of MHA in distinguishing between important and less relevant features, significantly enhancing prediction accuracy. Key topics include the evaluation of meteorological and historical load data as input features, the impact of different temporal feature combinations on prediction performance, and the superior accuracy achieved by the CNN-GRU-MHA model compared to traditional methods. The research concludes that the CNN-GRU-MHA model achieves a 25.51% reduction in both RMSE and CV-RMSE, highlighting the effectiveness of MHA in feature selection and improving overall forecasting performance. The analysis of attention weights further confirms the importance of recent and weekly periodic load data, providing valuable insights into the temporal dependencies in load forecasting.

Not a customer yet? Then find out more about our access models now:

Individual Access

Start your personal individual access now. Get instant access to more than 164,000 books and 540 journals – including PDF downloads and new releases.

Starting from 54,00 € per month!    

Get access

Access for Businesses

Utilise Springer Professional in your company and provide your employees with sound specialist knowledge. Request information about corporate access now.

Find out how Springer Professional can uplift your work!

Contact us now
Title
Optimizing Feature Selection for Load Forecasting Using Multi-Head Attention Mechanism
Authors
Shuqin Chen
Jianan Qian
Jiayi Luo
Wangxi Gu
Binqing Wei
Shuiquan Ye
Yueqin Liu
Copyright Year
2025
Publisher
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-95-3249-0_38
This content is only visible if you are logged in and have the appropriate permissions.