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Forecasting of peak electricity demand in Mauritius using the non-homogeneous Gompertz diffusion process

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  • Badurally Adam, N.R.
  • Elahee, M.K.
  • Dauhoo, M.Z.

Abstract

In this study, the non-homogeneous Gompertz diffusion process (NHGDP) is used to model the monthly peak electricity demand in Mauritius in order to predict the future values on the basis of a Genetic Algorithm (GA) approach. Our model is developed based a key economic indicator which is the gross domestic product (GDP) and the weather factors such as temperature, hours of sunshine and humidity. Genetic Algorithm then searches for the best coefficients by minimizing the root mean square error. Monthly data from January 2005 to December 2008 are considered to test the model. Finally, the Artificial Neural Network (ANN) is used to forecast each independent variable for the year 2009 and the NHGDP model is validated for that year. Our results show that the model provides an accurate and reliable prediction for the monthly peak electricity demand in Mauritius.

Suggested Citation

  • Badurally Adam, N.R. & Elahee, M.K. & Dauhoo, M.Z., 2011. "Forecasting of peak electricity demand in Mauritius using the non-homogeneous Gompertz diffusion process," Energy, Elsevier, vol. 36(12), pages 6763-6769.
  • Handle: RePEc:eee:energy:v:36:y:2011:i:12:p:6763-6769
    DOI: 10.1016/j.energy.2011.10.027
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    8. Trotter, Philipp A. & McManus, Marcelle C. & Maconachie, Roy, 2017. "Electricity planning and implementation in sub-Saharan Africa: A systematic review," Renewable and Sustainable Energy Reviews, Elsevier, vol. 74(C), pages 1189-1209.
    9. Mungur, Maheshsingh & Poorun, Yashna & Juggurnath, Diksha & Ruhomally, Yusra Bibi & Rughooputh, Reshma & Dauhoo, Muhammad Zaid & Khoodaruth, Abdel & Shamachurn, Heman & Gooroochurn, Mahendra & Boodia,, 2020. "A numerical and experimental investigation of the effectiveness of green roofs in tropical environments: The case study of Mauritius in mid and late winter," Energy, Elsevier, vol. 202(C).
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