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A neuro-fuzzy regression approach for estimation and optimisation of gasoline consumption

Author

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  • Ali Azadeh
  • S. Mohammad Hasan Manzour Alajdad
  • Tahereh Aliheidari Bioki

Abstract

The purpose of the present study is to forecast the gasoline consumption of Iran. To this end, the economic indicators used in this paper are population, gross domestic production (GDP), natural income (NI), gasoline price, number of light vehicle, and production of gasoline in Iran. Various fuzzy regression (FR) models and also multiple train and transfer functions for estimating with artificial neural network (ANN), were used in this study and finally, linear regression for estimation of gasoline consumption was used. Five factors for comparing efficiency of fuzzy regression models were considered in the current case study. Furthermore, mean absolute percentage error (MAPE) for comparing efficiency of fuzzy regression, ANN and linear regression was selected. The FR, ANN, and linear regression models have been tuned for all their parameters according to the train data, following which the best coefficients and weights are identified. Three popular defuzzification methods for defuzzifying outputs are applied. For determining the rate of error of FR models estimations, the rate of defuzzified output of each model is compared with its actual rate consumption in test data and MAPE is calculated. The superiority and advantage of this study over previous studies is also presented.

Suggested Citation

  • Ali Azadeh & S. Mohammad Hasan Manzour Alajdad & Tahereh Aliheidari Bioki, 2014. "A neuro-fuzzy regression approach for estimation and optimisation of gasoline consumption," International Journal of Services and Operations Management, Inderscience Enterprises Ltd, vol. 17(2), pages 221-256.
  • Handle: RePEc:ids:ijsoma:v:17:y:2014:i:2:p:221-256
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    Cited by:

    1. Shafaei Bajestani, Narges & Vahidian Kamyad, Ali & Nasli Esfahani, Ensieh & Zare, Assef, 2018. "Prediction of retinopathy in diabetic patients using type-2 fuzzy regression model," European Journal of Operational Research, Elsevier, vol. 264(3), pages 859-869.

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