Online Anomaly Energy Consumption Detection Using Lambda Architecture

Publication: Research - peer-reviewArticle in proceedings – Annual report year: 2016

DOI

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With the widely use of smart meters in the energy sector, anomaly detection becomes a crucial mean to study the unusual consumption behaviors of customers, and to discover unexpected events of using energy promptly. Detecting consumption anomalies is, essentially, a real-time big data analytics problem, which does data mining on a large amount of parallel data streams from smart meters. In this paper, we propose a supervised learning and statistical-based anomaly detection method, and implement a Lambda system using the in-memory distributed computing framework, Spark and its extension Spark Streaming. The system supports not only iterative refreshing the detection models from scalable data sets, but also real-time anomaly detection on scalable live data streams. This paper empirically evaluates the system and the detection algorithm, and the results show the effectiveness and the scalability of the lambda detection system.
Original languageEnglish
Title of host publication18th International Conference on Big Data Analytics and Knowledge Discovery, DaWaK 2016
EditorsS. Madria, T. Hara
Number of pages17
PublisherSpringer
Publication date2016
Pages193-209
DOIs
StatePublished - 2016
Event18th International Conference on Big Data Analytics and Knowledge Discovery (DaWaK 2016) - Porto, Portugal

Conference

Conference18th International Conference on Big Data Analytics and Knowledge Discovery (DaWaK 2016)
Number18
CountryPortugal
CityPorto
Period05/09/201608/09/2016
Internet address
SeriesLecture Notes in Computer Science
Volume9829
ISSN0302-9743
CitationsWeb of Science® Times Cited: 0

    Keywords

  • Anomaly detection, Real-time, Lambda architecture, Data mining

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