TY - JOUR
T1 - Non-intrusive load monitoring based on process-adaptive multi-target regression and transformer-enabled two-stream input network
AU - Sun, Xinwu
AU - Hu, Jiaxiang
AU - Hu, Weihao
AU - Cao, Di
AU - Chen, Zhe
AU - Blaabjerg, Frede
N1 - Publisher Copyright:
© 2025 Elsevier Ltd
PY - 2025/9/1
Y1 - 2025/9/1
N2 - In multiple appliance load monitoring, variations in learning difficulty and numerical scale across target appliances can create imbalances in network parameter optimization, resulting in degraded performance for certain appliances. To this end, a tailored dynamic multi-target loss function is designed to adaptively assign rational weights for target appliances at each epoch, mitigating model bias toward specific appliances. Specifically, a global percentage error metric is employed to evaluate each appliance's performance on a unified scale, allowing dynamic weight adjustment to balance parameter optimization across appliances. This enables the proposed method to build mapping relationships and learn correlations across multiple target appliances, even in the presence of substantial differences in their usage patterns. Furthermore, a transformer-structure monitor is designed to integrate multimodal signals, combining raw data series with multi-step differential signals. This improves the model's learning capability to capture pattern changes in target appliances while enhancing robustness against anomalies.
AB - In multiple appliance load monitoring, variations in learning difficulty and numerical scale across target appliances can create imbalances in network parameter optimization, resulting in degraded performance for certain appliances. To this end, a tailored dynamic multi-target loss function is designed to adaptively assign rational weights for target appliances at each epoch, mitigating model bias toward specific appliances. Specifically, a global percentage error metric is employed to evaluate each appliance's performance on a unified scale, allowing dynamic weight adjustment to balance parameter optimization across appliances. This enables the proposed method to build mapping relationships and learn correlations across multiple target appliances, even in the presence of substantial differences in their usage patterns. Furthermore, a transformer-structure monitor is designed to integrate multimodal signals, combining raw data series with multi-step differential signals. This improves the model's learning capability to capture pattern changes in target appliances while enhancing robustness against anomalies.
KW - Deep learning
KW - Global percentage error
KW - Multi-target loss
KW - Multiple appliance monitoring
KW - Non-intrusive load monitoring
UR - http://www.scopus.com/inward/record.url?scp=105004406436&partnerID=8YFLogxK
U2 - 10.1016/j.apenergy.2025.126046
DO - 10.1016/j.apenergy.2025.126046
M3 - Journal article
AN - SCOPUS:105004406436
SN - 0306-2619
VL - 393
JO - Applied Energy
JF - Applied Energy
M1 - 126046
ER -