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Demand-Supply Forecasting based on Deep Learning for Electricity Balance in Cameroon

Author

Listed:
  • Wulfran Fendzi Mbasso

    (Laboratory of Technology and Applied Sciences, University Institute of Technology of Douala, University of Douala, Douala, Cameroon.)

  • Reagan Jean Jacques Molu

    (Laboratory of Technology and Applied Sciences, University Institute of Technology of Douala, University of Douala, Douala, Cameroon.)

  • Serge Raoul Dzonde Naoussi

    (Laboratory of Technology and Applied Sciences, University Institute of Technology of Douala, University of Douala, Douala, Cameroon.)

  • Saatong Kenfack

    (Laboratory of Technology and Applied Sciences, University Institute of Technology of Douala, University of Douala, Douala, Cameroon.)

Abstract

Electricity is becoming an important commodity in Cameroon. Within the years, its consumption and production have led to many studies. Hence, having an idea on its progression is one of research concerns. Thus, this paper aims to develop a model for forecasting electricity production and consumption in Cameroon based on Long Short-Term Memory (LSTM). Indeed, the LSTM approach, showing a good ability to grab the long-term dependencies between time steps of electricity production and consumption, allows a good prediction in 2030 of 7178GWh for consumption with 0.067 RMSE and 0.2965% MAPE and 8686GWh for production with 0.1631 RMSE and 0.4291%MAPE. Hence, the proposed model is more reliable, what makes possible to monitor the growth in electricity supply and demand, falling to the study of balance in Cameroon.

Suggested Citation

  • Wulfran Fendzi Mbasso & Reagan Jean Jacques Molu & Serge Raoul Dzonde Naoussi & Saatong Kenfack, 2022. "Demand-Supply Forecasting based on Deep Learning for Electricity Balance in Cameroon," International Journal of Energy Economics and Policy, Econjournals, vol. 12(4), pages 99-103, July.
  • Handle: RePEc:eco:journ2:2022-04-13
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    References listed on IDEAS

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    More about this item

    Keywords

    Forecasting; Long Short-term Memory; Electricity Production and Consumption;
    All these keywords.

    JEL classification:

    • Q4 - Agricultural and Natural Resource Economics; Environmental and Ecological Economics - - Energy

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