NUMERICAL COMPUTATION AND PREDICTION OF ELECTRICITY CONSUMPTION IN TOBACCO INDUSTRY

Electricity is a key energy source in each country and an important condition for economic development. It is necessary to use modern methods and tools to predict energy consumption for different types of systems and weather conditions. In every industrial plant, electricity consumption presents one...

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Main Authors: Mirjana Laković, Ivan Pavlović, Miloš Banjac, Milica Jović, Marko Mančić
Format: Article
Language:English
Published: University of Niš 2017-12-01
Series:Facta Universitatis. Series: Mechanical Engineering
Online Access:http://casopisi.junis.ni.ac.rs/index.php/FUMechEng/article/view/3350
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spelling doaj-7fae5cb688e840678775699914e67eaa2020-11-25T02:11:21ZengUniversity of NišFacta Universitatis. Series: Mechanical Engineering0354-20252335-01642017-12-0115345746510.22190/FUME170927025L1535NUMERICAL COMPUTATION AND PREDICTION OF ELECTRICITY CONSUMPTION IN TOBACCO INDUSTRYMirjana Laković0Ivan Pavlović1Miloš Banjac2Milica Jović3Marko Mančić4Faculty of Mechanical Engineering, University of Niš, SerbiaFaculty of Mechanical Engineering, University of Niš, SerbiaFaculty of Mechanical Engineering, University of Belgrade, SerbiaFaculty of Mechanical Engineering, University of Niš, SerbiaFaculty of Mechanical Engineering, University of Niš, SerbiaElectricity is a key energy source in each country and an important condition for economic development. It is necessary to use modern methods and tools to predict energy consumption for different types of systems and weather conditions. In every industrial plant, electricity consumption presents one of the greatest operating costs. Monitoring and forecasting of this parameter provide the opportunity to rationalize the use of electricity and thus significantly reduce the costs. The paper proposes the prediction of energy consumption by a new time-series model. This involves time series models using a set of previously collected data to predict the future load. The most commonly used linear time series models are the AR (Autoregressive Model), MA (Moving Average) and ARMA (Autoregressive Moving Average Model). The AR model is used in this paper. Using the AR (Autoregressive Model) model, the Monte Carlo simulation method is utilized for predicting and analyzing the energy consumption change in the considered tobacco industrial plant. One of the main parts of the AR model is a seasonal pattern that takes into account the climatic conditions for a given geographical area. This part of the model was delineated by the Fourier transform and was used with the aim of avoiding the model complexity. As an example, the numerical results were performed for tobacco production in one industrial plant. A probabilistic range of input values is used to determine the future probabilistic level of energy consumption.http://casopisi.junis.ni.ac.rs/index.php/FUMechEng/article/view/3350
collection DOAJ
language English
format Article
sources DOAJ
author Mirjana Laković
Ivan Pavlović
Miloš Banjac
Milica Jović
Marko Mančić
spellingShingle Mirjana Laković
Ivan Pavlović
Miloš Banjac
Milica Jović
Marko Mančić
NUMERICAL COMPUTATION AND PREDICTION OF ELECTRICITY CONSUMPTION IN TOBACCO INDUSTRY
Facta Universitatis. Series: Mechanical Engineering
author_facet Mirjana Laković
Ivan Pavlović
Miloš Banjac
Milica Jović
Marko Mančić
author_sort Mirjana Laković
title NUMERICAL COMPUTATION AND PREDICTION OF ELECTRICITY CONSUMPTION IN TOBACCO INDUSTRY
title_short NUMERICAL COMPUTATION AND PREDICTION OF ELECTRICITY CONSUMPTION IN TOBACCO INDUSTRY
title_full NUMERICAL COMPUTATION AND PREDICTION OF ELECTRICITY CONSUMPTION IN TOBACCO INDUSTRY
title_fullStr NUMERICAL COMPUTATION AND PREDICTION OF ELECTRICITY CONSUMPTION IN TOBACCO INDUSTRY
title_full_unstemmed NUMERICAL COMPUTATION AND PREDICTION OF ELECTRICITY CONSUMPTION IN TOBACCO INDUSTRY
title_sort numerical computation and prediction of electricity consumption in tobacco industry
publisher University of Niš
series Facta Universitatis. Series: Mechanical Engineering
issn 0354-2025
2335-0164
publishDate 2017-12-01
description Electricity is a key energy source in each country and an important condition for economic development. It is necessary to use modern methods and tools to predict energy consumption for different types of systems and weather conditions. In every industrial plant, electricity consumption presents one of the greatest operating costs. Monitoring and forecasting of this parameter provide the opportunity to rationalize the use of electricity and thus significantly reduce the costs. The paper proposes the prediction of energy consumption by a new time-series model. This involves time series models using a set of previously collected data to predict the future load. The most commonly used linear time series models are the AR (Autoregressive Model), MA (Moving Average) and ARMA (Autoregressive Moving Average Model). The AR model is used in this paper. Using the AR (Autoregressive Model) model, the Monte Carlo simulation method is utilized for predicting and analyzing the energy consumption change in the considered tobacco industrial plant. One of the main parts of the AR model is a seasonal pattern that takes into account the climatic conditions for a given geographical area. This part of the model was delineated by the Fourier transform and was used with the aim of avoiding the model complexity. As an example, the numerical results were performed for tobacco production in one industrial plant. A probabilistic range of input values is used to determine the future probabilistic level of energy consumption.
url http://casopisi.junis.ni.ac.rs/index.php/FUMechEng/article/view/3350
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AT milicajovic numericalcomputationandpredictionofelectricityconsumptionintobaccoindustry
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