Publication | Closed Access
Classification of Energy Consumption in Buildings With Outlier Detection
206
Citations
20
References
2009
Year
EngineeringEnergy EfficiencyCanonical Variate AnalysisGreen BuildingEnergy MonitoringSocial SciencesBuilt EnvironmentData SciencePattern RecognitionEnergy AssessmentStatisticsEnergy ConsumptionSmart BuildingPredictive AnalyticsOutlier DetectionDaily Electricity ConsumptionForecastingBuilding EnergyEnergy PredictionSmart GridEnergy ManagementReal Time
In this paper, we propose an intelligent data-analysis method for modeling and prediction of daily electricity consumption in buildings. The objective is to enable a building-management system to be used for forecasting and detection of abnormal energy use. First, an outlier-detection method is proposed to identify abnormally high or low energy use in a building. Then a canonical variate analysis is employed to describe latent variables of daily electricity-consumption profiles, which can be used to group the data sets into different clusters. Finally, a simple classifier is used to predict the daily electricity-consumption profiles. A case study, based on a mixed-use environment, was studied. The results demonstrate that the method proposed in this paper can be used in conjunction with a building-management system to identify abnormal utility consumption and notify building operators in real time.
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