Quantile Regression Model for Peak Load Demand Forecasting with Approximation by Triangular Distribution to Avoid Blackouts

<p dir="RTL" align="right">Peak load demand forecasting is a key exercise undertaken to avoid system failure and power blackouts. In this paper, the next day’s peak load demand is forecasted. The challenge is to estimate a model that is capable of preventing underprediction...

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Main Authors: Niematallah Elamin, Mototsugu Fukushige
Format: Article
Language:English
Published: EconJournals 2018-09-01
Series:International Journal of Energy Economics and Policy
Online Access:https://www.econjournals.com/index.php/ijeep/article/view/6742
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spelling doaj-39932a934d324accb3dfda8316336c852020-11-25T03:59:36ZengEconJournalsInternational Journal of Energy Economics and Policy2146-45532018-09-01851191243469Quantile Regression Model for Peak Load Demand Forecasting with Approximation by Triangular Distribution to Avoid BlackoutsNiematallah Elamin0Mototsugu Fukushige1University of Khartoum,Osaka University<p dir="RTL" align="right">Peak load demand forecasting is a key exercise undertaken to avoid system failure and power blackouts. In this paper, the next day’s peak load demand is forecasted. The challenge is to estimate a model that is capable of preventing underprediction of the peak load demand: in other words, a model that is competent in forecasting the upper bound of the peak demand to avoid the risk of power blackouts. First, quantile regression is performed to generate forecasts of the daily peak load demand. Then, peak demand forecasts are locally approximated by triangular distribution to generate the upper bound of the peak demand. The forecasted upper bounds are compared with the actual electricity demand. The proposed method succeeds in avoiding underprediction of the peak load demand and thus the risk of power blackouts.</p><p dir="RTL" align="right"><strong>Keywords</strong><strong>: </strong>Electricity peak demand, Quantile regression, Triangular distribution, Blackouts.<strong></strong></p><p dir="RTL" align="right"><strong>JEL Classifications</strong>: Q47, C21</p>https://www.econjournals.com/index.php/ijeep/article/view/6742
collection DOAJ
language English
format Article
sources DOAJ
author Niematallah Elamin
Mototsugu Fukushige
spellingShingle Niematallah Elamin
Mototsugu Fukushige
Quantile Regression Model for Peak Load Demand Forecasting with Approximation by Triangular Distribution to Avoid Blackouts
International Journal of Energy Economics and Policy
author_facet Niematallah Elamin
Mototsugu Fukushige
author_sort Niematallah Elamin
title Quantile Regression Model for Peak Load Demand Forecasting with Approximation by Triangular Distribution to Avoid Blackouts
title_short Quantile Regression Model for Peak Load Demand Forecasting with Approximation by Triangular Distribution to Avoid Blackouts
title_full Quantile Regression Model for Peak Load Demand Forecasting with Approximation by Triangular Distribution to Avoid Blackouts
title_fullStr Quantile Regression Model for Peak Load Demand Forecasting with Approximation by Triangular Distribution to Avoid Blackouts
title_full_unstemmed Quantile Regression Model for Peak Load Demand Forecasting with Approximation by Triangular Distribution to Avoid Blackouts
title_sort quantile regression model for peak load demand forecasting with approximation by triangular distribution to avoid blackouts
publisher EconJournals
series International Journal of Energy Economics and Policy
issn 2146-4553
publishDate 2018-09-01
description <p dir="RTL" align="right">Peak load demand forecasting is a key exercise undertaken to avoid system failure and power blackouts. In this paper, the next day’s peak load demand is forecasted. The challenge is to estimate a model that is capable of preventing underprediction of the peak load demand: in other words, a model that is competent in forecasting the upper bound of the peak demand to avoid the risk of power blackouts. First, quantile regression is performed to generate forecasts of the daily peak load demand. Then, peak demand forecasts are locally approximated by triangular distribution to generate the upper bound of the peak demand. The forecasted upper bounds are compared with the actual electricity demand. The proposed method succeeds in avoiding underprediction of the peak load demand and thus the risk of power blackouts.</p><p dir="RTL" align="right"><strong>Keywords</strong><strong>: </strong>Electricity peak demand, Quantile regression, Triangular distribution, Blackouts.<strong></strong></p><p dir="RTL" align="right"><strong>JEL Classifications</strong>: Q47, C21</p>
url https://www.econjournals.com/index.php/ijeep/article/view/6742
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