Clustering of Complementary Electricity Consumers Based on Their Usage Patterns

In the electricity market, the real-time balance of electricity generation and consumption is a main task. In view of this, power providers usually sign contracts with their critical consumers (i.e., usually large-scale industrial companies) for managing their capacity demands. On the other hand, ag...

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Main Authors: Chen Sheng-Ta, Liu Chi-Lun, Lee Ming-Hung, Fung Min, Teng Wei-Guang
Format: Article
Language:English
Published: EDP Sciences 2018-01-01
Series:E3S Web of Conferences
Online Access:https://doi.org/10.1051/e3sconf/20187201006
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spelling doaj-9765c98ca6ac4f8f8a94ada341555d7d2021-03-02T10:27:05ZengEDP SciencesE3S Web of Conferences2267-12422018-01-01720100610.1051/e3sconf/20187201006e3sconf_ceege2018_01006Clustering of Complementary Electricity Consumers Based on Their Usage PatternsChen Sheng-TaLiu Chi-LunLee Ming-HungFung MinTeng Wei-GuangIn the electricity market, the real-time balance of electricity generation and consumption is a main task. In view of this, power providers usually sign contracts with their critical consumers (i.e., usually large-scale industrial companies) for managing their capacity demands. On the other hand, aggregators group commercial and residential consumers, and integrate their demands to negotiate with power providers. With a proper grouping of numerous electricity consumers, aggregators help to ensure stable electric supply, and reduce the burden of managing many consumers. In this work, we thus propose a novel data clustering approach to group complementary consumers based on their usage patterns (i.e., daily electricity consumption curves.) Furthermore, we incorporate the technique of discrete wavelet transform to speed up the clustering process. Specifically, approximations reconstructed from only a few wavelet coefficients may precisely capture the shape of original usage patterns. Experimental results based on a real dataset show that our approach is promising in practical applications.https://doi.org/10.1051/e3sconf/20187201006
collection DOAJ
language English
format Article
sources DOAJ
author Chen Sheng-Ta
Liu Chi-Lun
Lee Ming-Hung
Fung Min
Teng Wei-Guang
spellingShingle Chen Sheng-Ta
Liu Chi-Lun
Lee Ming-Hung
Fung Min
Teng Wei-Guang
Clustering of Complementary Electricity Consumers Based on Their Usage Patterns
E3S Web of Conferences
author_facet Chen Sheng-Ta
Liu Chi-Lun
Lee Ming-Hung
Fung Min
Teng Wei-Guang
author_sort Chen Sheng-Ta
title Clustering of Complementary Electricity Consumers Based on Their Usage Patterns
title_short Clustering of Complementary Electricity Consumers Based on Their Usage Patterns
title_full Clustering of Complementary Electricity Consumers Based on Their Usage Patterns
title_fullStr Clustering of Complementary Electricity Consumers Based on Their Usage Patterns
title_full_unstemmed Clustering of Complementary Electricity Consumers Based on Their Usage Patterns
title_sort clustering of complementary electricity consumers based on their usage patterns
publisher EDP Sciences
series E3S Web of Conferences
issn 2267-1242
publishDate 2018-01-01
description In the electricity market, the real-time balance of electricity generation and consumption is a main task. In view of this, power providers usually sign contracts with their critical consumers (i.e., usually large-scale industrial companies) for managing their capacity demands. On the other hand, aggregators group commercial and residential consumers, and integrate their demands to negotiate with power providers. With a proper grouping of numerous electricity consumers, aggregators help to ensure stable electric supply, and reduce the burden of managing many consumers. In this work, we thus propose a novel data clustering approach to group complementary consumers based on their usage patterns (i.e., daily electricity consumption curves.) Furthermore, we incorporate the technique of discrete wavelet transform to speed up the clustering process. Specifically, approximations reconstructed from only a few wavelet coefficients may precisely capture the shape of original usage patterns. Experimental results based on a real dataset show that our approach is promising in practical applications.
url https://doi.org/10.1051/e3sconf/20187201006
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AT fungmin clusteringofcomplementaryelectricityconsumersbasedontheirusagepatterns
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