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Sequence to Point Learning Based on an Attention Neural Network for Nonintrusive Load Decomposition

Mingzhi Yang, Xinchun Li, Yue Liu

2021Electronics27 citationsDOIOpen Access PDF

Abstract

Nonintrusive load monitoring (NILM) analyzes only the main circuit load information with an algorithm to decompose the load, which is an important way to help reduce energy usage. Recent research shows that deep learning has become popular for this problem. However, the ability of a neural network to extract load features depends on its structure. Therefore, more research is required to determine the best network architecture. This study proposed two deep neural networks based on the attention mechanism to improve the current sequence to point (s2p) learning model. The first model employs Bahdanau style attention and RNN layers, and the second model replaces the RNN layer with a self-attention layer. The two models are both based on a time embedding layer. Therefore, they can be better applied in NILM. To verify the effectiveness of the algorithms, we selected two open datasets and compared them with the original s2p model. The results show that attention mechanisms can effectively improve the model’s performance.

Topics & Concepts

Computer scienceArtificial neural networkLayer (electronics)Artificial intelligenceRecurrent neural networkSequence (biology)Deep learningEmbeddingPoint (geometry)DecompositionMachine learningEnergy (signal processing)GeneticsEcologyGeometryOrganic chemistryStatisticsMathematicsBiologyChemistrySmart Grid Energy ManagementEnergy Load and Power ForecastingMicrogrid Control and Optimization