Forecasting of printing and writing paper consumption in Iran using artificial neural network and classical methods

The objective of the research is to forecast the trend of the printing and writing paper consumption in Iran for a five-year period using both modern and classical methods. In order to do the forecasting, predictability of time series was primarily studied using Durbin-Watson and Runs tests. Then, a...

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Main Authors: Amir Tavakkoli, Amir Hooman Hemmasi, Mohammad Talaeipour, Behzad Bazyar, Ajang Tajdini
Format: Article
Language:fas
Published: Regional Information Center for Science and Technology (RICeST) 2015-12-01
Series:تحقیقات علوم چوب و کاغذ ایران
Subjects:
Online Access:http://ijwpr.areeo.ac.ir/article_101476_16b232317ac9bea70d7aaa5b526f327f.pdf
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spelling doaj-ba5ae395e05c4538a30ed7206f331d122020-11-25T00:36:41ZfasRegional Information Center for Science and Technology (RICeST) تحقیقات علوم چوب و کاغذ ایران1735-09132383-112X2015-12-0130463265210.22092/ijwpr.2015.101476101476Forecasting of printing and writing paper consumption in Iran using artificial neural network and classical methodsAmir Tavakkoli0Amir Hooman Hemmasi1Mohammad Talaeipour2Behzad Bazyar3Ajang Tajdini4Ph.D. Graduate Student., Department of Wood and Paper Science, Tehran Science and Research Branch, Islamic Azad University, Tehran, IranAssociate Prof., Department of Wood and Paper Science, Tehran Science and Research Branch, Islamic Azad University, Tehran, IranAssociate Prof., Department of Wood and Paper Science, Tehran Science and Research Branch, Islamic Azad University, Tehran, IranAssistant Prof., Department of Wood and Paper Science, Tehran Science and Research Branch, Islamic Azad University, Tehran, IranAssociate Prof., Department of Wood and Paper Science, Karaj Branch, Islamic Azad University, Karaj, IranThe objective of the research is to forecast the trend of the printing and writing paper consumption in Iran for a five-year period using both modern and classical methods. In order to do the forecasting, predictability of time series was primarily studied using Durbin-Watson and Runs tests. Then, artificial neural network model (multilayer perceptrons (MLP)) and univariate and multivariate classical forecasting models such as univariate single exponential smoothing (SES), double exponential smoothing (DES), holt-winters exponential smoothing (HWES) and Box- Jenkins (ARIMA) models, and multivariate econometric model all together were compared in terms of the standard statistical measures. Finally, the consumption of printing and writing paper in Iran was forecasted up to the year 2017 using the most appropriate model. The results of both the parametric test of Durbin-Watson and non-parametric test of Runs show that, the printing and writing consumption series is non-random and predictable. The results of comparing different forecast methods showed that the artificial neural network model has higher forecasting accuracy than the classical models and it is more appropriate for the five-year forecast period. Also, the results of forecasting by using neural network model (MLP), revealed that the printing and writing paper consumption in Iran is forecasted to increase by 5.3%, from around 375 thousand tons in 2012 to 420 thousand tons in 2013, but it falls over the five-year forecast period, from 5.3% in 2013 to 0.07% in 2017.http://ijwpr.areeo.ac.ir/article_101476_16b232317ac9bea70d7aaa5b526f327f.pdfPrinting and writing paper consumptionforecastingmultivariate econometricexponential smoothingARIMAmultilayer perceptrons neural network
collection DOAJ
language fas
format Article
sources DOAJ
author Amir Tavakkoli
Amir Hooman Hemmasi
Mohammad Talaeipour
Behzad Bazyar
Ajang Tajdini
spellingShingle Amir Tavakkoli
Amir Hooman Hemmasi
Mohammad Talaeipour
Behzad Bazyar
Ajang Tajdini
Forecasting of printing and writing paper consumption in Iran using artificial neural network and classical methods
تحقیقات علوم چوب و کاغذ ایران
Printing and writing paper consumption
forecasting
multivariate econometric
exponential smoothing
ARIMA
multilayer perceptrons neural network
author_facet Amir Tavakkoli
Amir Hooman Hemmasi
Mohammad Talaeipour
Behzad Bazyar
Ajang Tajdini
author_sort Amir Tavakkoli
title Forecasting of printing and writing paper consumption in Iran using artificial neural network and classical methods
title_short Forecasting of printing and writing paper consumption in Iran using artificial neural network and classical methods
title_full Forecasting of printing and writing paper consumption in Iran using artificial neural network and classical methods
title_fullStr Forecasting of printing and writing paper consumption in Iran using artificial neural network and classical methods
title_full_unstemmed Forecasting of printing and writing paper consumption in Iran using artificial neural network and classical methods
title_sort forecasting of printing and writing paper consumption in iran using artificial neural network and classical methods
publisher Regional Information Center for Science and Technology (RICeST)
series تحقیقات علوم چوب و کاغذ ایران
issn 1735-0913
2383-112X
publishDate 2015-12-01
description The objective of the research is to forecast the trend of the printing and writing paper consumption in Iran for a five-year period using both modern and classical methods. In order to do the forecasting, predictability of time series was primarily studied using Durbin-Watson and Runs tests. Then, artificial neural network model (multilayer perceptrons (MLP)) and univariate and multivariate classical forecasting models such as univariate single exponential smoothing (SES), double exponential smoothing (DES), holt-winters exponential smoothing (HWES) and Box- Jenkins (ARIMA) models, and multivariate econometric model all together were compared in terms of the standard statistical measures. Finally, the consumption of printing and writing paper in Iran was forecasted up to the year 2017 using the most appropriate model. The results of both the parametric test of Durbin-Watson and non-parametric test of Runs show that, the printing and writing consumption series is non-random and predictable. The results of comparing different forecast methods showed that the artificial neural network model has higher forecasting accuracy than the classical models and it is more appropriate for the five-year forecast period. Also, the results of forecasting by using neural network model (MLP), revealed that the printing and writing paper consumption in Iran is forecasted to increase by 5.3%, from around 375 thousand tons in 2012 to 420 thousand tons in 2013, but it falls over the five-year forecast period, from 5.3% in 2013 to 0.07% in 2017.
topic Printing and writing paper consumption
forecasting
multivariate econometric
exponential smoothing
ARIMA
multilayer perceptrons neural network
url http://ijwpr.areeo.ac.ir/article_101476_16b232317ac9bea70d7aaa5b526f327f.pdf
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