Decision Fusion-Based Non-Intrusive Load Identification Involving Adaptive Threshold Event Detection
Author
Huang, Yaqian
Zhu, Yanqing
Pan, Jingyi
Gao, Yunpeng
Peng, Fenghua
Sun, Yichuang
Attention
2299/27976
Abstract
Nonintrusive load monitoring (NILM) is an important measure to improve the intelligence level of the power demand side. The existing NILM methods have poor performance in identifying low-power devices with similar power, with the increasing diversity of household loads and the wide range of load fluctuations. This article proposes a fusion-based load identification method for residential loads, considering the electrical characteristics of different load types. In the first stage, the adaptive threshold cumulative sum (CUSUM) algorithm is innovatively adopted to reduce the misjudgment of local high-power device switching fluctuations and the missed events of local low-power load operation in the global threshold. In the second stage, the minimum Bayesian decision fusion loss function is used to calculate the cost function of voltage current (UI) trajectory, power, and total harmonic distortion (THD), which are input into the Softmax multiclassification regression model in parallel. The category corresponding to the prediction made by the minimum loss function is considered as the final output. Finally, the effectiveness of the proposed method in identifying multiple types of household loads was verified through experiments on the plug-level appliance identification dataset (PLAID) dataset.