Litcius/Paper detail

LEAD1.0

Manoj Gulati, Pandarasamy Arjunan

202219 citationsDOI

Abstract

Modern buildings are densely equipped with smart energy meters, which periodically generate a massive amount of time-series data yielding a few million data points every day. This data can be leveraged to discover the underlying load and infer their energy consumption patterns, inter-dependencies on environmental factors, and the building's operational properties. Furthermore, it allows us to simultaneously identify anomalies present in the electricity consumption profiles, which is a big step towards saving energy and achieving global sustainability. However, to date, the lack of large-scale annotated energy consumption datasets hinders the ongoing research in anomaly detection. We contribute to this effort by releasing a carefully annotated version of a publicly available ASHRAE Great Energy Predictor III data set containing 1,413 smart electricity meter time series spanning over one year. In addition, we benchmark the performance of eight state-of-the-art anomaly detection methods on our dataset and compare their performance.

Topics & Concepts

ASHRAE 90.1Computer scienceBenchmark (surveying)Anomaly detectionElectricityEnergy consumptionSmart meterBig dataTime seriesEnergy (signal processing)Set (abstract data type)Scale (ratio)Consumption (sociology)Data miningMachine learningEngineeringMeteorologyElectrical engineeringGeodesyStatisticsMathematicsProgramming languageQuantum mechanicsSociologyGeographyPhysicsSocial scienceSmart Grid Energy ManagementAnomaly Detection Techniques and ApplicationsData Stream Mining Techniques