2015
DOI: 10.3390/en81112337
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Sanitation and Analysis of Operation Data in Energy Systems

Abstract: Abstract:We present a workflow for data sanitation and analysis of operation data with the goal of increasing energy efficiency and reliability in the operation of building-related energy systems. The workflow makes use of machine learning algorithms and innovative visualizations. The environment, in which monitoring data for energy systems are created, requires low configuration effort for data analysis. Therefore the focus lies on methods that operate automatically and require little or no configuration. As … Show more

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Cited by 8 publications
(1 citation statement)
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“…There are various methods available for outlier detection in data (Habib, Hayat, & Zucker, 2016;Habib, Zucker, Blochle, Judex, & Haase, 2015;Zucker, Habib, Blochle, Judex, & Leber, 2015). The combination of both Outlier Detection Algorithm (ODA) and J48 classifier gives quite accurate results (Devi & Devi, 2016).…”
Section: Malignant Cells Detection and Classificationsmentioning
confidence: 99%
“…There are various methods available for outlier detection in data (Habib, Hayat, & Zucker, 2016;Habib, Zucker, Blochle, Judex, & Haase, 2015;Zucker, Habib, Blochle, Judex, & Leber, 2015). The combination of both Outlier Detection Algorithm (ODA) and J48 classifier gives quite accurate results (Devi & Devi, 2016).…”
Section: Malignant Cells Detection and Classificationsmentioning
confidence: 99%