Household Electricity Load Forecasting Toward Demand Response Program Using Data Mining Techniques in A Traditional Power Grid

<p class="Abstract">At present, the continuous increase of household electricity demand is strategic and crucial in electricity demand management. Household electricity consumers can play an important role in this issue. The rationalization of electricity consumption might be achieve...

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Main Author: Maher AbuBaker
Format: Article
Language:English
Published: EconJournals 2021-06-01
Series:International Journal of Energy Economics and Policy
Online Access:https://econjournals.com/index.php/ijeep/article/view/11192
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spelling doaj-eefaf71394f448919df3bf82e37de2b92021-06-09T19:50:44ZengEconJournalsInternational Journal of Energy Economics and Policy2146-45532021-06-011141321485233Household Electricity Load Forecasting Toward Demand Response Program Using Data Mining Techniques in A Traditional Power GridMaher AbuBaker0An-Najah, National University, Nablus, Palestine<p class="Abstract">At present, the continuous increase of household electricity demand is strategic and crucial in electricity demand management. Household electricity consumers can play an important role in this issue. The rationalization of electricity consumption might be achieved by using an efficient Demand Response (DR) program. In this paper a new methodology is suggested using a combination of data mining techniques namely K-means clustering, K-Nearest Neighbors (K-NN) classification and ARIMA for electricity load forecasting using consumers’ electricity prepaid bills data set of an ordinary electricity grid with prepaid electricity meters. As a result of applying this methodology, various DR programs are recommended as an attempt to assist the management of electricity system to manage the electricity demand issues from demand-side in an efficient and effective manner, which can be put into practice. A case study has been carried out in Tulkarm District, Palestine. The performance of applying the suggested methodology is measured, and the results are considered very well.</p><p class="Keywords"><strong>Keywords</strong>: Demand Response (DR); K-means Clustering; K-Nearest Neighbor classification (K-NN); ARIMA model; Prepaid electricity meters</p><p class="Keywords"><strong>JEL Classifications</strong>: Q4, Q41, Q47, Q49</p><p class="Keywords">DOI: <a href="https://doi.org/10.32479/ijeep.11192">https://doi.org/10.32479/ijeep.11192</a></p>https://econjournals.com/index.php/ijeep/article/view/11192
collection DOAJ
language English
format Article
sources DOAJ
author Maher AbuBaker
spellingShingle Maher AbuBaker
Household Electricity Load Forecasting Toward Demand Response Program Using Data Mining Techniques in A Traditional Power Grid
International Journal of Energy Economics and Policy
author_facet Maher AbuBaker
author_sort Maher AbuBaker
title Household Electricity Load Forecasting Toward Demand Response Program Using Data Mining Techniques in A Traditional Power Grid
title_short Household Electricity Load Forecasting Toward Demand Response Program Using Data Mining Techniques in A Traditional Power Grid
title_full Household Electricity Load Forecasting Toward Demand Response Program Using Data Mining Techniques in A Traditional Power Grid
title_fullStr Household Electricity Load Forecasting Toward Demand Response Program Using Data Mining Techniques in A Traditional Power Grid
title_full_unstemmed Household Electricity Load Forecasting Toward Demand Response Program Using Data Mining Techniques in A Traditional Power Grid
title_sort household electricity load forecasting toward demand response program using data mining techniques in a traditional power grid
publisher EconJournals
series International Journal of Energy Economics and Policy
issn 2146-4553
publishDate 2021-06-01
description <p class="Abstract">At present, the continuous increase of household electricity demand is strategic and crucial in electricity demand management. Household electricity consumers can play an important role in this issue. The rationalization of electricity consumption might be achieved by using an efficient Demand Response (DR) program. In this paper a new methodology is suggested using a combination of data mining techniques namely K-means clustering, K-Nearest Neighbors (K-NN) classification and ARIMA for electricity load forecasting using consumers’ electricity prepaid bills data set of an ordinary electricity grid with prepaid electricity meters. As a result of applying this methodology, various DR programs are recommended as an attempt to assist the management of electricity system to manage the electricity demand issues from demand-side in an efficient and effective manner, which can be put into practice. A case study has been carried out in Tulkarm District, Palestine. The performance of applying the suggested methodology is measured, and the results are considered very well.</p><p class="Keywords"><strong>Keywords</strong>: Demand Response (DR); K-means Clustering; K-Nearest Neighbor classification (K-NN); ARIMA model; Prepaid electricity meters</p><p class="Keywords"><strong>JEL Classifications</strong>: Q4, Q41, Q47, Q49</p><p class="Keywords">DOI: <a href="https://doi.org/10.32479/ijeep.11192">https://doi.org/10.32479/ijeep.11192</a></p>
url https://econjournals.com/index.php/ijeep/article/view/11192
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