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sis 25(5):

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Deep Learning Based Power Load Prediction in Smart Grid Networks

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  • @ARTICLE{10.4108/eetsis.9591,
        author={Yifan Tian and Xiaoyi Chen and Yuanyuan Dai and Jiajia Shao and Jiankai Ma and Xiaoyu Yan and Zan Huang and Qi Wang and Lijun Wu and Zhijing Zhang and Shiyun Huang},
        title={Deep Learning Based Power Load Prediction in Smart Grid Networks},
        journal={EAI Endorsed Transactions on Scalable Information Systems},
        volume={12},
        number={5},
        publisher={EAI},
        journal_a={SIS},
        year={2025},
        month={10},
        keywords={Deep learning, power load prediction, smart grid networks, performance evaluation},
        doi={10.4108/eetsis.9591}
    }
    
  • Yifan Tian
    Xiaoyi Chen
    Yuanyuan Dai
    Jiajia Shao
    Jiankai Ma
    Xiaoyu Yan
    Zan Huang
    Qi Wang
    Lijun Wu
    Zhijing Zhang
    Shiyun Huang
    Year: 2025
    Deep Learning Based Power Load Prediction in Smart Grid Networks
    SIS
    EAI
    DOI: 10.4108/eetsis.9591
Yifan Tian1,*, Xiaoyi Chen1, Yuanyuan Dai1, Jiajia Shao1, Jiankai Ma1, Xiaoyu Yan1, Zan Huang1, Qi Wang1, Lijun Wu1, Zhijing Zhang1, Shiyun Huang1
  • 1: Shanghai Pudong Electric Power Supply Company of State Grid Corporation of China
*Contact email: yifantian.eecs@hotmail.com

Abstract

This paper presents a novel deep learning scheme for power load prediction in smart grid networks, combining temporal modeling with adaptive feature integration to tackle the complex dynamics of electricity consumption. The proposed scheme features a hybrid architecture that merges recurrent neural networks with attention mechanisms, enabling simultaneous capture of long-term load patterns and dynamic weighting of external influences like weather conditions and temporal features. Moreover, the model incorporates specialized preprocessing to decompose load data into periodic and volatile components while employing robust normalization techniques to handle non-stationary behavior. Then, a dual-objective loss function is used to enhance both prediction accuracy and resilience to outliers, supported by adaptive optimization with regularization. Simulation results are provided to demonstrate the proposed scheme’s superior performance, achieving 96.1% prediction accuracy with 5 hidden layers. The attention mechanism proves particularly effective, reducing weather-related prediction errors by 22% while maintaining faster convergence rates than conventional methods. This comprehensive solution offers grid operators a reliable tool for demand-side management, renewable integration, and operational planning in modern power systems.

Keywords
Deep learning, power load prediction, smart grid networks, performance evaluation
Received
2025-06-21
Accepted
2025-10-09
Published
2025-10-24
Publisher
EAI
http://dx.doi.org/10.4108/eetsis.9591

Copyright © 2025 Yifan Tian et al., licensed to EAI. This is an open access article distributed under the terms of the Creative Commons Attribution license, which permits unlimited use, distribution and reproduction in any medium so long as the original work is properly cited.

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