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Improving electricity demand forecasting accuracy: a novel grey-genetic programming approach using GMC(1,N) and residual sign estimation

Flavian Emmanuel Sapnken (Laboratory of Technologies and Applied Science, University Institute of Technology, Douala, Cameroon)
Benjamin Salomon Diboma (Higher Institute of Transport, Logistics and Commerce, Ambam, Cameroon)
Ali Khalili Tazehkandgheshlagh (Faculty of Agricultural Engineering, University of Tehran, Tehran, Cameroon)
Mohammed Hamaidi (Department of Maths, Faculty of Science and Technology, Ziane Achour University of Djelfa, Djelfa, Algeria)
Prosper Gopdjim Noumo (Laboratory of Technologies and Applied Sciences, Douala, Cameroon)
Yong Wang (School of Sciences, Southwest Petroleum University, Chengdu, China)
Jean Gaston Tamba (Laboratory of Technologies and Applied Science, University Institute of Technology, University of Douala, Douala, Cameroon)

Grey Systems: Theory and Application

ISSN: 2043-9377

Article publication date: 30 May 2024

Issue publication date: 24 September 2024

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Abstract

Purpose

This paper addresses the challenges associated with forecasting electricity consumption using limited data without making prior assumptions on normality. The study aims to enhance the predictive performance of grey models by proposing a novel grey multivariate convolution model incorporating residual modification and residual genetic programming sign estimation.

Design/methodology/approach

The research begins by constructing a novel grey multivariate convolution model and demonstrates the utilization of genetic programming to enhance prediction accuracy by exploiting the signs of forecast residuals. Various statistical criteria are employed to assess the predictive performance of the proposed model. The validation process involves applying the model to real datasets spanning from 2001 to 2019 for forecasting annual electricity consumption in Cameroon.

Findings

The novel hybrid model outperforms both grey and non-grey models in forecasting annual electricity consumption. The model's performance is evaluated using MAE, MSD, RMSE, and R2, yielding values of 0.014, 101.01, 10.05, and 99% respectively. Results from validation cases and real-world scenarios demonstrate the feasibility and effectiveness of the proposed model. The combination of genetic programming and grey convolution model offers a significant improvement over competing models. Notably, the dynamic adaptability of genetic programming enhances the model's accuracy by mimicking expert systems' knowledge and decision-making, allowing for the identification of subtle changes in electricity demand patterns.

Originality/value

This paper introduces a novel grey multivariate convolution model that incorporates residual modification and genetic programming sign estimation. The application of genetic programming to enhance prediction accuracy by leveraging forecast residuals represents a unique approach. The study showcases the superiority of the proposed model over existing grey and non-grey models, emphasizing its adaptability and expert-like ability to learn and refine forecasting rules dynamically. The potential extension of the model to other forecasting fields is also highlighted, indicating its versatility and applicability beyond electricity consumption prediction in Cameroon.

Keywords

Acknowledgements

We are particularly grateful to Mr David Horgan for his help in troubleshooting the algorithm implemented in Section 3. His expertise in Python/Matlab programming was crucial in resolving the performance issues and ensuring reliable results.

This work was supported by the Natural Science Foundation of Sichuan Province (No. 2023NSFSC0428), the Central Government Funds of Guiding Local Scientific and Technological Development (No. 2023ZYD0004), the Sichuan National Applied Mathematics Center open fund (No. 2024-KFJJ-01–01), and the Chengdu Science and Technology Project (No. 2024-YF05-00323-SN).

Citation

Sapnken, F.E., Diboma, B.S., Khalili Tazehkandgheshlagh, A., Hamaidi, M., Noumo, P.G., Wang, Y. and Tamba, J.G. (2024), "Improving electricity demand forecasting accuracy: a novel grey-genetic programming approach using GMC(1,N) and residual sign estimation", Grey Systems: Theory and Application, Vol. 14 No. 4, pp. 708-732. https://doi.org/10.1108/GS-01-2024-0011

Publisher

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Emerald Publishing Limited

Copyright © 2024, Emerald Publishing Limited

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