Micro-Spatial Electricity Load Forecasting Clustering Technique

Low growth of electricity load forecast eliminates cost opportunity of electricity sale due to unserviceable load demands. Meanwhile, if it is exorbitant, it will cause over-investment and incriminate investment cost. Existing method of sector load is simplified and easy to implement. However, the a...

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Main Authors: Widyastuti Christine, Senen Adri, Handayani Oktaria
Format: Article
Language:English
Published: EDP Sciences 2020-01-01
Series:E3S Web of Conferences
Subjects:
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/62/e3sconf_icenis2020_11005.pdf
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spelling doaj-89878c62797b44d39d95ab14e437f73e2021-04-02T16:58:03ZengEDP SciencesE3S Web of Conferences2267-12422020-01-012021100510.1051/e3sconf/202020211005e3sconf_icenis2020_11005Micro-Spatial Electricity Load Forecasting Clustering TechniqueWidyastuti ChristineSenen AdriHandayani OktariaLow growth of electricity load forecast eliminates cost opportunity of electricity sale due to unserviceable load demands. Meanwhile, if it is exorbitant, it will cause over-investment and incriminate investment cost. Existing method of sector load is simplified and easy to implement. However, the accuracy tends to bias over one area of which data is limited and dynamic service area. Besides, the results of its forecast is macro-based, which means it is unable to show load centres in micro grids and failed to locate the distribution station. Therefore, we need micro-spatial load forecasting. By using micro-spatial load forecast, the extrapolated areas are grouped into grids. Clustering analysis is used for grouping the grids. It generates similarity matrix of similar data group. Clustering involves factors causing load growth at each grid; geography, demography, socio-economic, and electricity load per sector. Results of every cluster consist of different regional characteristics, which later the load growth is projected as to obtain more accurate forecast..https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/62/e3sconf_icenis2020_11005.pdfforecastmicro-spatialgridcluster
collection DOAJ
language English
format Article
sources DOAJ
author Widyastuti Christine
Senen Adri
Handayani Oktaria
spellingShingle Widyastuti Christine
Senen Adri
Handayani Oktaria
Micro-Spatial Electricity Load Forecasting Clustering Technique
E3S Web of Conferences
forecast
micro-spatial
grid
cluster
author_facet Widyastuti Christine
Senen Adri
Handayani Oktaria
author_sort Widyastuti Christine
title Micro-Spatial Electricity Load Forecasting Clustering Technique
title_short Micro-Spatial Electricity Load Forecasting Clustering Technique
title_full Micro-Spatial Electricity Load Forecasting Clustering Technique
title_fullStr Micro-Spatial Electricity Load Forecasting Clustering Technique
title_full_unstemmed Micro-Spatial Electricity Load Forecasting Clustering Technique
title_sort micro-spatial electricity load forecasting clustering technique
publisher EDP Sciences
series E3S Web of Conferences
issn 2267-1242
publishDate 2020-01-01
description Low growth of electricity load forecast eliminates cost opportunity of electricity sale due to unserviceable load demands. Meanwhile, if it is exorbitant, it will cause over-investment and incriminate investment cost. Existing method of sector load is simplified and easy to implement. However, the accuracy tends to bias over one area of which data is limited and dynamic service area. Besides, the results of its forecast is macro-based, which means it is unable to show load centres in micro grids and failed to locate the distribution station. Therefore, we need micro-spatial load forecasting. By using micro-spatial load forecast, the extrapolated areas are grouped into grids. Clustering analysis is used for grouping the grids. It generates similarity matrix of similar data group. Clustering involves factors causing load growth at each grid; geography, demography, socio-economic, and electricity load per sector. Results of every cluster consist of different regional characteristics, which later the load growth is projected as to obtain more accurate forecast..
topic forecast
micro-spatial
grid
cluster
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/62/e3sconf_icenis2020_11005.pdf
work_keys_str_mv AT widyastutichristine microspatialelectricityloadforecastingclusteringtechnique
AT senenadri microspatialelectricityloadforecastingclusteringtechnique
AT handayanioktaria microspatialelectricityloadforecastingclusteringtechnique
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