Noninvasive load monitoring (NILM) aims to extract the power consumption of individual appliances from a smart meter that measures the total power consumption of all appliances. At present, deep learning… Click to show full abstract
Noninvasive load monitoring (NILM) aims to extract the power consumption of individual appliances from a smart meter that measures the total power consumption of all appliances. At present, deep learning methods have achieved leading results. However, the need for a large number of training data and the poor generalization ability of models limit the further development of NILM. To break through these limitations, this article proposes an adaptive fusion feature transfer learning method. First, to provide rich features for feature transfer, multiple feature extraction branches are used to extract temporal and spatial features from different perspectives. These features are fused for adaptive adjustment. Second, the attention mechanism is used to adapt the features extracted from the model of the source task so that they are more conducive to the model of the target task. Finally, abundant simulation experiments are performed for appliance transfer (AT) and house transfer (HT), respectively. It is verified that the proposed method can achieve better results than the existing method using only a small amount of training data and retraining a part of the new model.
               
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