Shiqing ZhangYouyao FuXiaoming ZhaoJiangxiong FangYadong LiuXiaoli WangBaochang ZhangJun Yu
Abstract Most of existing non-invasive load monitoring (NILM) methods usually ignore the complementarity between temporal and spatial characteristics of appliance power data. To tackle this problem, this paper proposes a spatio-temporal attention fusion network with a sequence-to-point learning scheme for load disaggregation. Initially, a temporal feature extraction module is designed to extract temporal features over a large temporal receptive field. Then, an asymmetric inception module is designed for a multi-scale spatial feature extraction. The extracted temporal features and spatial features are concatenated, and fed into a polarized self-attention module to perform a spatio-temporal attention fusion, followed by two dense layers for final NILM predictions. Extensive experiments on two public datasets such as REDD and UK-DALE show the validity of the proposed method, outperforming the other used methods on NILM tasks.
L.N. Sastry VaranasiSri Phani Krishna Karri
Ziyue JiaLinfeng YangZhenrong ZhangHui LiuFannie Kong
Huamin RenXiaomeng SuRobert JenssenJingyue LiStian Normann Anfinsen
Jack R. BarberHeriberto CuayáhuitlMingjun ZhongWenpeng Luan