DocumentCode
36107
Title
Subgroup Discovery in Smart Electricity Meter Data
Author
Nanlin Jin ; Flach, P. ; Wilcox, Tom ; Sellman, Royston ; Thumim, Joshua ; Knobbe, Arno
Author_Institution
Dept. of Comput. Sci., Univ. of Bristol, Bristol, UK
Volume
10
Issue
2
fYear
2014
fDate
May-14
Firstpage
1327
Lastpage
1336
Abstract
This work presents data mining methods for discovering unusual consumption patterns and their associated descriptive models from smart electricity meter data. At present, data mining and knowledge discovery in electricity meter data suffer from three notable weaknesses: 1) insufficient focus on intelligent data analysis of subgroups (subsets) whose patterns vary significantly from aggregate patterns embodied in an entire dataset; 2) a lack of effort towards generating intuitively understandable and practically applicable knowledge for industrial practitioners to identify such subgroups; and 3) limited knowledge regarding the link between unusual consumption patterns and household consumers´ socio-demographic characteristics. This paper addresses these practically important but technically challenging issues by applying subgroup discovery algorithms to a real smart electricity meter dataset. Subgroups whose patterns are unusual and whose sizes are large enough are discovered, and their descriptive and predictive models are generated. Furthermore, to enrich subgroup discovery algorithms, three new-quality measures for real-valued targets are proposed. The comparative studies empirically evaluate the effectiveness and usefulness of subgroup discovery on classification accuracy, predictive power, and computational resources. The methodologies and algorithms presented are generic, and therefore applicable to a wider range of data mining problems.
Keywords
data mining; demography; pattern classification; power engineering computing; power meters; smart meters; associated descriptive models; classification accuracy; computational resources; data mining methods; intelligent data analysis; knowledge discovery; new-quality measures; predictive model; predictive power; smart electricity meter data; socio-demographic characteristics; subgroup discovery algorithms; unusual consumption pattern discovery; Accuracy; Computer science; Data analysis; Data mining; Educational institutions; Electricity; Informatics; Data mining; knowledge discovery; time series analysis;
fLanguage
English
Journal_Title
Industrial Informatics, IEEE Transactions on
Publisher
ieee
ISSN
1551-3203
Type
jour
DOI
10.1109/TII.2014.2311968
Filename
6767110
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