Publication | Closed Access
Semisupervised Multilabel Deep Learning Based Nonintrusive Load Monitoring in Smart Grids
129
Citations
35
References
2019
Year
EngineeringMachine LearningMultilabel Deep LearningEnergy MonitoringIntelligent Energy SystemData SciencePattern RecognitionEmbedded Machine LearningSmart EnergySmart MeterFeature LearningComputer EngineeringComputer ScienceSmart Grid SecurityDeep LearningSmart GridsSmart GridEnergy ManagementMultiple Active AppliancesNonintrusive Load Monitoring
Nonintrusive load monitoring (NILM) is a technique that infers appliance-level energy consumption patterns and operation state changes based on feeder power signals. With the availability of fine-grained electric load profiles, there has been increasing interest in using this approach for demand-side energy management in smart grids. NILM is a multilabel classification problem due to the simultaneous operation of multiple appliances. Recently, deep learning based techniques have been shown to be a promising approach to solving this problem, but annotating the huge volume of load profile data with multiple active appliances for learning is very challenging and impractical. In this article, a new semisupervised multilabel deep learning based framework is proposed to address this problem with the goal of mitigating the reliance on large labeled datasets. Specifically, a temporal convolutional neural network is used to automatically extract high-level load signatures for individual appliances. These signatures can be efficiently used to improve the feature representation capability of the framework. Case studies conducted on two open-access NILM datasets demonstrate the effectiveness and superiority of the proposed approach.
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