Publication | Closed Access
Learning Systems for Electric Consumption of Buildings
113
Citations
9
References
2009
Year
Unknown Venue
Electric ConsumptionEngineeringMachine LearningEnergy EfficiencyGreen BuildingBuilding Energy ConservationEnergy MonitoringMonitoring TechnologyData ScienceData MiningPattern RecognitionSmart MeterInternet Of ThingsKnowledge DiscoveryComputer EngineeringComputer ScienceBuilding EnergyIndividual AppliancesEnergy PredictionSignal ProcessingSmart GridEnergy ManagementWire SpyAdvanced Metering InfrastructureElectricity ConsumptionIndustrial Informatics
Individual appliances' electricity consumption is automatically disaggregated from a single custom metering system on the main feed to an occupied residential building. A data acquisition system samples voltage and current at 100 kHz, then calculates real and reactive power, harmonics, and other features at 20Hz. A probabilistic eventdetector using the generalized likelihood ratio (GLR) matches human-labeled events to the time-series of features. Machine-learning classification was most successful with the 1-nearest-neighbor algorithm, correctly identifying 90% of the laboratory-generated training events and 79% of validation examples. The challenge of obtaining adequate training data for the real-world home leads to the development of the Wire Spy, a wirelessly-networked event detector with an inductive sensor which clamps to the cable of an appliance.
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