Publication | Closed Access
Low-power appliance monitoring using Factorial Hidden Markov Models
93
Citations
9
References
2013
Year
Unknown Venue
EngineeringEnergy EfficiencyEnergy UtilizationEnergy MonitoringData ScienceHidden Markov ModelSystems EngineeringInternet Of ThingsPower-aware SoftwareLow-power Appliance MonitoringPower-aware ComputingEnergy ProfilingComputer EngineeringComputer SciencePower ConsumptionSignal ProcessingSmart GridEnergy ManagementProcess ControlIndustrial InformaticsFactorial Hmm
To optimize the energy utilization, intelligent energy management solutions require appliance-specific consumption statistics. One can obtain such information by deploying smart power outlets on every device of interest, however it incurs extra hardware cost and installation complexity. Alternatively, a single sensor can be used to measure total electricity consumption and thereafter disaggregation algorithms can be applied to obtain appliance specific usage information. In such a case, it is quite challenging to discern low-power appliances in the presence of high-power loads. To improve the recognition of low-power appliance states, we propose a solution that makes use of circuit-level power measurements. We examine the use of a specialized variant of Hidden Markov Model (HMM) known as Factorial HMM (FHMM) to recognize appliance specific load patterns from the aggregated power measurements. Further, we demonstrate that feature concatenation can improve the disaggregation performance of the model allowing it to identify device states with an accuracy of 90% for binary and 80% for multi-state appliances. Through experimental evaluations, we show that our solution performs better than the traditional event based approach. In addition, we develop a prototype system that allows real-time monitoring of appliance states.
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