:: Volume 15, Issue 62 (Fall 2019 2019) ::
QEER 2019, 15(62): 97-130 Back to browse issues page
Natural Gas Price Forecasting using Kriging Interpolation Technique and Neldar-Mead Optimization Algorithm
Ebrahim Mashreghi * 1, Reza Tehrani2 , Ezatolah Asgharizadeh2 , Ezatolah Abasiyan3
1- Khorasan Razavi Gas Company , ebrahim.mashreghi@yahoo.com
2- Faculty of Management, University of Tehran
3- Department Of Economics University Of Bu-Ali Sina
Abstract:   (2989 Views)
The prediction of economic series with high volatility and high uncertainty - such as natural gas prices - is always a challenge in econometric models, because the use of traditional linear modeling models does not allow us to predict complex and nonlinear time series. Regarding the prediction of natural gas prices,  findings point to superiority of the neural network compared to regression models. Nevertheless, the main challenge of this method - the possibility of overlapping and noise of data from the system - has kept the choice for an optimal method open.
In this study we use the Kriging interpolation  to predict the price of natural gas. For this purpose, after identifying the effective parameters, sampling and normalizing them, we created a Kriging predicting functions  and improved it with the Nelder-Mead optimization technique. ​The results of the study show that the Kriging metamodel provides a more accurate prediction than the artificial neural network prediction model.  Our research findings also suggest that the Neldar-Mead optimization algorithm has somewhat improved the predicted results. However, theextent of this improvement is not remarkable.
 
Keywords: Natural gas prices, Parameters affecting the price of natural gas, Analytic Hierarchy Process, Kriging interpolation Technique L95, C53, G17
Full-Text [PDF 943 kb]   (1136 Downloads)    
Type of Study: Thesis(PhD.) | Subject: قيمت گذاري
Received: 2018/11/3 | Accepted: 2019/11/26 | Published: 2019/12/1 | ePublished: 2019/12/1


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Volume 15, Issue 62 (Fall 2019 2019) Back to browse issues page