A Novel Power Load Identification Strategy Based on CEEMD-PCA-AE-Shapelet Dictionary Learning Algorithm

Authors

  • Junxiong Ge Shenzhen China Gridcom Technology Communication Co., Ltd
  • Mingmin Yuan State Grid Beijing Electric Power Company
  • Zhu Tang State Grid Beijing Electric Power Company
  • Quancheng Pan State Grid Beijing Electric Power Company
  • Congsu Jin State Grid Beijing Electric Power Company
  • Haimin Hong Shenzhen China Gridcom Technology Communication Co., Ltd

DOI:

https://doi.org/10.4108/ew.11913

Keywords:

power data, energy internet, load identification, data detection, learning algorithm

Abstract

The development of the Energy Internet under the China 'dual-carbon' strategy has bring new challenges in load identification and anomaly detection, particularly in industrial applications. Traditional methods often struggle with the sparse, noisy nature of industrial load data, limiting their generalization ability and accuracy. This paper proposes a novel load identification method based on the CEEMD-PCA-AE-Shapelet dictionary learning algorithm, which addresses these challenges by combining an improved unsupervised anomaly detection model (CEEMD-PCA-AE) with the Shapelet dictionary learning algorithm. Firstly, CEEMD-PCA-AE enhances the model’s ability to handle non-linear and noisy data, significantly improving the generalization and accuracy of industrial load anomaly detection. Secondly, the Shapelet dictionary learning algorithm reduces computational complexity and improves model performance by incorporating dictionary learning into time-series classification. The proposed method outperforms traditional models, as demonstrated by numerical experiments, offering enhanced load identification accuracy, and improved detection of anomalies. This method has significant potential for optimizing the efficiency of energy management in industrial settings and can be applied globally, as shown by its effectiveness on real-world data from Liaoning Province, China.

 

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References

[1] Manzoor A, Akram W, Judge M A, et al. Efficient economic energy scheduling in smart cities using distributed energy resources[J]. Science and Technology for Energy Transition, 2024, 79: 29.

[2] Adeleye S A, Adebanji B, Awogbemi O. Renewable energy sources acceptability for decentralized energy system in Nigeria: Issues, challenges and prospects[J]. Science and Technology for Energy Transition, 2024, 79: 44.

[3] Aziz M S, Ahmed S, Saleem U, et al. Wind-hybrid power generation systems using renewable energy sources-A review[J]. International Journal of Renewable Energy Research, 2017, 7(1): 111-127.

[4] Wang S, Dang Q, Gao Z, et al. An innovative square root-untraced Kalman filtering strategy with full-parameter online identification for state of power evaluation of lithium-ion batteries[J]. Journal of Energy Storage, 2024, 104: 114555.

[5] Wang S, Gao H, Takyi-Aninakwa P, et al. Improved multiple feature-electrochemical thermal coupling modeling of lithium-ion batteries at low-temperature with real-time coefficient correction[J]. Protection and Control of Modern Power Systems, 2024, 9(3): 157-173.

[6] Williamson S S, Rimmalapudi S C, Emadi A. Electrical modeling of renewable energy sources and energy storage devices[J]. Journal of Power Electronics, 2004, 4(2): 117-126.

[7] Guo Z, Zhou K, Zhang C, et al. Residential electricity consumption behavior: Influencing factors, related theories and intervention strategies[J]. Renewable and Sustainable Energy Reviews, 2018, 81: 399-412.

[8] Dong M, Sun M, Song D, et al. Real-time detection of wind power abnormal data based on semi-supervised learning Robust Random Cut Forest[J]. Energy, 2022, 257: 124761.

[9] Wang X, Yao Z, Papaefthymiou M. A real-time electrical load forecasting and unsupervised anomaly detection framework[J]. Applied Energy, 2023, 330: 120279.

[10] Chou J S, Telaga A S. Real-time detection of anomalous power consumption[J]. Renewable and Sustainable Energy Reviews, 2014, 33: 400-411.

[11] Zhou K, Yang S. Understanding household energy consumption behavior: The contribution of energy big data analytics[J]. Renewable and Sustainable Energy Reviews, 2016, 56: 810-819.

[12] Wang X, Ahn S H. Real-time prediction and anomaly detection of electrical load in a residential community[J]. Applied Energy, 2020, 259: 114145.

[13] Cui M, Wang J, Yue M. Machine learning-based anomaly detection for load forecasting under cyberattacks[J]. IEEE Transactions on Smart Grid, 2019, 10(5): 5724-5734.

[14] Rajabi A, Eskandari M, Ghadi M J, et al. A comparative study of clustering techniques for electrical load pattern segmentation[J]. Renewable and Sustainable Energy Reviews, 2020, 120: 109628.

[15] Lei Y, Lin J, He Z, et al. A review on empirical mode decomposition in fault diagnosis of rotating machinery[J]. Mechanical systems and signal processing, 2013, 35(1-2): 108-126.

[16] Wang S, Zhang S, Wen S, et al. An accurate state-of-charge estimation of lithium-ion batteries based on improved particle swarm optimization-adaptive square root cubature kalman filter[J]. Journal of power sources, 2024, 624: 235594.

[17] Tanoni G, Principi E, Squartini S. Non-Intrusive Load Monitoring in industrial settings: A systematic review[J]. Renewable and Sustainable Energy Reviews, 2024, 202: 114703.

[18] Ding Y, Chen Z, Zhang H, et al. A short-term wind power prediction model based on CEEMD and WOA-KELM[J]. Renewable Energy, 2022, 189: 188-198.

[19] Yeh J R, Shieh J S, Huang N E. Complementary ensemble empirical mode decomposition: A novel noise enhanced data analysis method[J]. Advances in adaptive data analysis, 2010, 2(02): 135-156.

[20] Hotelling H. Analysis of a complex of statistical variables into principal components[J]. Journal of educational psychology, 1933, 24(6): 417.

[21] Rumellhart D E. Learning internal representations by error propagation[J]. Parallel distributed processing: explorations in the microstructure of cognition, 1986, 1: 319-362.

[22] Rakotomamonjy A. Direct optimization of the dictionary learning problem[J]. IEEE Transactions on Signal Processing, 2013, 61(22): 5495-5506.

[23] Agarwal S, Chowdary C R. A-Stacking and A-Bagging: Adaptive versions of ensemble learning algorithms for spoof fingerprint detection[J]. Expert Systems with Applications, 2020, 146: 113160.

[24] Belgiu M, Drăguţ L. Random forest in remote sensing: A review of applications and future directions[J]. ISPRS journal of photogrammetry and remote sensing, 2016, 114: 24-31.

[25] Sagi O, Rokach L. Approximating XGBoost with an interpretable decision tree[J]. Information sciences, 2021, 572: 522-542.

[26] Nguyen D C, Salamak M, Katunin A, et al. Vibration-based SHM of railway steel arch bridge with orbit-shaped image and wavelet-integrated CNN classification[J]. Engineering Structures, 2024, 315: 118431.

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Published

31-03-2026

How to Cite

1.
Ge J, Yuan M, Tang Z, Pan Q, Jin C, Hong H. A Novel Power Load Identification Strategy Based on CEEMD-PCA-AE-Shapelet Dictionary Learning Algorithm. EAI Endorsed Trans Energy Web [Internet]. 2026 Mar. 31 [cited 2026 Apr. 1];12. Available from: https://publications.eai.eu/index.php/ew/article/view/11913

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