引用本文:韩林池,高放,赵子巍,郭苏杭,李想,张冬冬,武新章.基于多尺度卷积与Informer混合模型的非侵入式负荷监测方法[J].电力自动化设备,2024,44(3):134-141
HAN Linchi,GAO Fang,ZHAO Ziwei,GUO Suhang,LI Xiang,ZHANG Dongdong,WU Xinzhang.Non-intrusive load monitoring method based on multi-scale convolution and Informer hybrid model[J].Electric Power Automation Equipment,2024,44(3):134-141
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基于多尺度卷积与Informer混合模型的非侵入式负荷监测方法
韩林池1, 高放1, 赵子巍1, 郭苏杭1, 李想1, 张冬冬1, 武新章1,2
1.广西大学 电气工程学院,广西 南宁 530004;2.广西大学 计算机与电子信息学院,广西 南宁 530004
摘要:
针对现有非侵入式负荷监测方法存在的负荷分解准确率低、模型泛化性能差的问题,提出一种多尺度卷积与Informer网络相结合的非侵入式负荷监测方法。采用数据分段优化方法对功率信号进行分段,利用多尺度卷积核获取不同时间尺度的特征序列以及自适应提取多维度功率特征,从而形成特征矩阵;基于Informer网络中的概率稀疏自注意力机制在高维空间中充分捕获特性序列的长期依赖关系,从而提高预测准确率;利用分解值修正方法消除功率分解值中的“虚假”激活状态,以进一步提高分解精度。算例结果验证了所提方法的可行性。
关键词:  非侵入式负荷监测  多尺度卷积  Informer网络  分解值修正  数据分段优化
DOI:10.16081/j.epae.202306017
分类号:TM744
基金项目:国家自然科学基金资助项目(52107083);广西科技基地人才专项(2021AC191,29021AC1120);广西重大专项(2021AA1100)
Non-intrusive load monitoring method based on multi-scale convolution and Informer hybrid model
HAN Linchi1, GAO Fang1, ZHAO Ziwei1, GUO Suhang1, LI Xiang1, ZHANG Dongdong1, WU Xinzhang1,2
1.School of Electrical Engineering, Guangxi University, Nanning 530004, China;2.School of Computer, Electronics and Information, Guangxi University, Nanning 530004, China
Abstract:
Aiming at the problems of low load decomposition accuracy and poor model generalization performance existing in the current non-intrusive load monitoring methods, a non-intrusive load monitoring method combining multi-scale convolution and Informer network is proposed. The data segmentation optimization method is adopted to segment the power signal, a multi-scale convolution kernel is used to obtain the feature sequences of different time scales and adaptively extract multi-dimensional power features, thus a feature matrix is formed. The long-term dependence relation of feature sequences in high-dimensional space is captured based on the probability sparse self-attention mechanism in Informer network, thus the prediction accuracy is improved. The decomposition value correction method is used to eliminate the “spurious” activation states in the power decomposition values for further improving the decomposition accuracy. The feasibility of the proposed method is verified by the example results.
Key words:  non-intrusive load monitoring  multi-scale convolution  Informer network  correction of decomposition value  data segmentation optimization

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