Xianghua Chu,Yongsheng Pang,Yue Ma,Shuxiang Li,Yuanju Qu,Yangpeng Wang
出处
期刊:IEEE Transactions on Consumer Electronics [Institute of Electrical and Electronics Engineers] 日期:2023-07-13卷期号:70 (1): 3562-3572
标识
DOI:10.1109/tce.2023.3295083
摘要
Smart meters with Non-Intrusive Load Monitoring (NILM) technology is explored as a means of reducing energy consumption and minimizing emissions in residential settings. Various NILM disaggregation algorithms have been proposed, but their effectiveness varies across different scenarios. To address this issue, a method called Data-driven Recommendation Model (DRM) based on meta-learning is proposed in this paper. DRM recommends the appropriate algorithms for various problems using the existing knowledge repository. Besides, a novel metafeature extractor named Meta-Learning Encoder-Decoder is designed to efficiently process the deep meta-features from a more significant number of training samples, which can be implemented to various meta-learners. Experimental results indicate that the proposed DRM exhibits strong learning and generalization capabilities in terms of the efficiency of load disaggregation for datasets with different characteristics.