Volume 19, Issue 1 (2012)                   EIJH 2012, 19(1): 1-13 | Back to browse issues page

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kazemi A. A Hierarchical Artificial Neural Network for Gasoline Demand Forecast of Iran. EIJH 2012; 19 (1) :1-13
URL: http://eijh.modares.ac.ir/article-27-1228-en.html
phD. student
Abstract:   (3388 Views)
Abstract This paper presents a neuro-based approach for annual gasoline demand forecast in Iran by taking into account several socio-economic indicators. To analyze the influence of economic and social indicators on the gasoline demand, gross domestic product (GDP), population and the total number of vehicles are selected. This approach is structured as a hierarchical artificial neural network (ANN) based on supervised multi-layer perceptron (MLP), trained with back-propagation (BP) algorithm. This hierarchical ANN is designed properly. The input variables are GDP, population, total number of vehicles and the gasoline demand in the last one year. The output variable is the gasoline demand. The paper proposes a hierarchical network by which the inputs to the ending level are obtained as outputs of the starting levels. Actual Iranian data between 1967 and 2008 were used to test the hierarchical ANN hence; it illustrated the capability of the approach. Comparison of the model predictions with validation data shows validity of the model. Furthermore, the demand for the period between 2011 and 2030 is estimated. It is noticeable that if there will not be any price shock or efficiency improvement in the transportation sector, the gasoline consumption may achieve a threatening level of about 54 billion liters by 2030 in Iran.
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Received: 2009/05/2 | Accepted: 2011/04/17 | Published: 2012/03/3

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