Clustering-based forecasting method for individual consumers electricity load using time series representations

This paper presents a new method for forecasting a load of individual electricity consumers using smart grid data and clustering. The data from all consumers are used for clustering to create more suitable training sets to forecasting methods. Before clustering, time series are efficiently preproces...

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Main Authors: Laurinec Peter, Lucká Mária
Format: Article
Language:English
Published: De Gruyter 2018-07-01
Series:Open Computer Science
Subjects:
Online Access:https://doi.org/10.1515/comp-2018-0006
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spelling doaj-394b61ac73ed453ca2d807e70db8788f2021-09-06T19:19:42ZengDe GruyterOpen Computer Science2299-10932018-07-0181385010.1515/comp-2018-0006comp-2018-0006Clustering-based forecasting method for individual consumers electricity load using time series representationsLaurinec Peter0Lucká Mária1Faculty of Informatics and Information Technologies, Slovak University of Technology in Bratislava, Ilkovičova 2, Bratislava, Slovak RepublicFaculty of Informatics and Information Technologies, Slovak University of Technology in Bratislava, Ilkovičova 2, Bratislava, Slovak RepublicThis paper presents a new method for forecasting a load of individual electricity consumers using smart grid data and clustering. The data from all consumers are used for clustering to create more suitable training sets to forecasting methods. Before clustering, time series are efficiently preprocessed by normalisation and the computation of various model-based time series representation methods. Final centroid-based forecasts are scaled by saved normalisation parameters to create the forecast for every consumer. Our method is compared with the approach that creates forecasts for every consumer separately. Evaluation and experiments were conducted on three smart meter datasets from residences of Ireland and Australia, and factories of Slovakia. The achieved results proved that our clustering-based method improves forecasting accuracy mainly for residential consumers.We can also proclaim that it can be found such time series representation and clustering setting that will our forecasting method perform more accurately than fully disaggregated approach. Our method is also more scalable since it is necessary to train the model only on clusters and not for every consumer separatelyhttps://doi.org/10.1515/comp-2018-0006clusteringtime series data miningelectricity load forecastingsmart grid
collection DOAJ
language English
format Article
sources DOAJ
author Laurinec Peter
Lucká Mária
spellingShingle Laurinec Peter
Lucká Mária
Clustering-based forecasting method for individual consumers electricity load using time series representations
Open Computer Science
clustering
time series data mining
electricity load forecasting
smart grid
author_facet Laurinec Peter
Lucká Mária
author_sort Laurinec Peter
title Clustering-based forecasting method for individual consumers electricity load using time series representations
title_short Clustering-based forecasting method for individual consumers electricity load using time series representations
title_full Clustering-based forecasting method for individual consumers electricity load using time series representations
title_fullStr Clustering-based forecasting method for individual consumers electricity load using time series representations
title_full_unstemmed Clustering-based forecasting method for individual consumers electricity load using time series representations
title_sort clustering-based forecasting method for individual consumers electricity load using time series representations
publisher De Gruyter
series Open Computer Science
issn 2299-1093
publishDate 2018-07-01
description This paper presents a new method for forecasting a load of individual electricity consumers using smart grid data and clustering. The data from all consumers are used for clustering to create more suitable training sets to forecasting methods. Before clustering, time series are efficiently preprocessed by normalisation and the computation of various model-based time series representation methods. Final centroid-based forecasts are scaled by saved normalisation parameters to create the forecast for every consumer. Our method is compared with the approach that creates forecasts for every consumer separately. Evaluation and experiments were conducted on three smart meter datasets from residences of Ireland and Australia, and factories of Slovakia. The achieved results proved that our clustering-based method improves forecasting accuracy mainly for residential consumers.We can also proclaim that it can be found such time series representation and clustering setting that will our forecasting method perform more accurately than fully disaggregated approach. Our method is also more scalable since it is necessary to train the model only on clusters and not for every consumer separately
topic clustering
time series data mining
electricity load forecasting
smart grid
url https://doi.org/10.1515/comp-2018-0006
work_keys_str_mv AT laurinecpeter clusteringbasedforecastingmethodforindividualconsumerselectricityloadusingtimeseriesrepresentations
AT luckamaria clusteringbasedforecastingmethodforindividualconsumerselectricityloadusingtimeseriesrepresentations
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