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Deep Learning-Based Probabilistic Autoencoder for Residential Energy Disaggregation: An Adversarial Approach
31
Citations
28
References
2022
Year
Energy DisaggregationMachine LearningData ScienceEnergy EfficiencyEnergy ManagementResidential Energy DisaggregationEngineeringAutoencodersGeneralization CapacityGenerative ModelsGenerative ModelComputer ScienceAdversarial ApproachDeep LearningEnergy PredictionStatisticsGenerative SystemTotal Energy Consumption
Energy disaggregation is the process of disaggregating a household's total energy consumption into its appliance-level components. One of the limitations of energy disaggregation is its generalization capacity, which can be defined as the ability of the model to analyze new households. In this article, a new energy disaggregation approach based on adversarial autoencoder (AAE) is proposed to create a generative model and enhance the generalization capacity. The proposed method has a probabilistic structure to handle uncertainties in the unseen data. By transforming the latent space from a deterministic structure to a Gaussian prior distribution, AAEs decoder transforms into a generative model. The proposed approach is validated through experimental tests using two different datasets. The experimental results exhibit a 55% MAE performance increase compared to deterministic models and 7% compared to probabilistic models. In addition, considering the predictions made when the appliances are <sc xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">on</small> , the AAE improves the performance by 16% for UKDALE and 36% for REDD dataset compared to the state-of-art models. Moreover, the online analysis performance of AAE is examined in detail, and the disadvantages of instant predictions and the possible solutions are extensively discussed.
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