Identification and characterization of irregular consumptions of load data
The historical information of loadings on substation helps in evaluation of size of photovoltaic (PV) generation and energy storages for peak shaving and distribution system upgrade deferral. A method, based on consumption data, is proposed to separate the unusual consumption and to form the cluster...
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doaj-d20892e2226b4864863668e1085a01e12021-04-23T16:13:51ZengIEEEJournal of Modern Power Systems and Clean Energy2196-54202017-01-015346547710.1007/s40565-017-0268-18940953Identification and characterization of irregular consumptions of load dataDesh Deepak Sharma0S. N. Singh1Jeremy Lin2Elham Foruzan3Indian Institute of Technology, Kanpur,Kanpur,IndiaPJM Interconnection,Audubon,PA,USAPJM Interconnection,Audubon,PA,USAUniversity of Nebraska-Lincoln,Department of Electrical Engineering,Lincoln,NE,USAThe historical information of loadings on substation helps in evaluation of size of photovoltaic (PV) generation and energy storages for peak shaving and distribution system upgrade deferral. A method, based on consumption data, is proposed to separate the unusual consumption and to form the clusters of similar regular consumption. The method does optimal partition of the load pattern data into core points and border points, high and less dense regions, respectively. The local outlier factor, which does not require fixed probability distribution of data and statistical measures, ranks the unusual consumptions on only the border points, which are a few percent of the complete data. The suggested method finds the optimal or close to optimal number of clusters of similar shape of load patterns to detect regular peak and valley load demands on different days. Furthermore, identification and characterization of features pertaining to unusual consumptions in load pattern data have been done on border points only. The effectiveness of the proposed method and characterization is tested on two practical distribution systems.https://ieeexplore.ieee.org/document/8940953/Density based clusteringIrregular consumptionLocal outlier factorPeak demandValley demand |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Desh Deepak Sharma S. N. Singh Jeremy Lin Elham Foruzan |
spellingShingle |
Desh Deepak Sharma S. N. Singh Jeremy Lin Elham Foruzan Identification and characterization of irregular consumptions of load data Journal of Modern Power Systems and Clean Energy Density based clustering Irregular consumption Local outlier factor Peak demand Valley demand |
author_facet |
Desh Deepak Sharma S. N. Singh Jeremy Lin Elham Foruzan |
author_sort |
Desh Deepak Sharma |
title |
Identification and characterization of irregular consumptions of load data |
title_short |
Identification and characterization of irregular consumptions of load data |
title_full |
Identification and characterization of irregular consumptions of load data |
title_fullStr |
Identification and characterization of irregular consumptions of load data |
title_full_unstemmed |
Identification and characterization of irregular consumptions of load data |
title_sort |
identification and characterization of irregular consumptions of load data |
publisher |
IEEE |
series |
Journal of Modern Power Systems and Clean Energy |
issn |
2196-5420 |
publishDate |
2017-01-01 |
description |
The historical information of loadings on substation helps in evaluation of size of photovoltaic (PV) generation and energy storages for peak shaving and distribution system upgrade deferral. A method, based on consumption data, is proposed to separate the unusual consumption and to form the clusters of similar regular consumption. The method does optimal partition of the load pattern data into core points and border points, high and less dense regions, respectively. The local outlier factor, which does not require fixed probability distribution of data and statistical measures, ranks the unusual consumptions on only the border points, which are a few percent of the complete data. The suggested method finds the optimal or close to optimal number of clusters of similar shape of load patterns to detect regular peak and valley load demands on different days. Furthermore, identification and characterization of features pertaining to unusual consumptions in load pattern data have been done on border points only. The effectiveness of the proposed method and characterization is tested on two practical distribution systems. |
topic |
Density based clustering Irregular consumption Local outlier factor Peak demand Valley demand |
url |
https://ieeexplore.ieee.org/document/8940953/ |
work_keys_str_mv |
AT deshdeepaksharma identificationandcharacterizationofirregularconsumptionsofloaddata AT snsingh identificationandcharacterizationofirregularconsumptionsofloaddata AT jeremylin identificationandcharacterizationofirregularconsumptionsofloaddata AT elhamforuzan identificationandcharacterizationofirregularconsumptionsofloaddata |
_version_ |
1721512467551485952 |