首页|期刊导航|中国电机工程学报|基于差分编码嵌入的两阶段多通道电能质量扰动分类与时间定位网络

基于差分编码嵌入的两阶段多通道电能质量扰动分类与时间定位网络OA

Two-stage Multi-channel Power Quality Disturbance Classification and Timing Estimation Network Based on Differential Encoding and Embedding

中文摘要英文摘要

随着新能源的大规模利用,电力系统中的电能质量扰动(power quality disturbances,PQDs)呈现出复杂化、多样化的趋势.传统的方法难以同时实现多重复合扰动的类型识别和扰动发生时间定位.针对这一问题,提出一种基于差分编码嵌入的两阶段多通道网络.在第一阶段,以检测信号突变点为目标,提出一种差分多头自注意力机制(differential multi-head self-attention,DMHSA),用于扰动差分特征编码.在第二阶段,将原始信号与编码后的差分信号合并成多通道特征,然后设计一种用于通道特征提取的改进时间卷积网络TCN-SENet进行特征学习,实现PQDs扰动的点分类.基于上述两个模块构建的PQDs检测整体模型,能够同时实现高效准确的扰动识别和时间定位.在仿真实验中,所提模型对30dB信噪比下扰动数据的分类准确率领先于其他模型,平均时间定位误差小于1.3 ms.在硬件平台的实验中,所提模型表现出最好的泛化能力,在扰动类型识别准确率和平均时间定位误差上显著优于其他模型.

With the large-scale utilization of renewable energy sources,power quality disturbances(PQDs)in power systems are becoming increasingly complex and diverse.Traditional methods struggle to simultaneously achieve type identification of multiple composite disturbances and precise timing estimation of these disturbances.This paper proposes a two-stage multi-channel network based on differential encoding and embedding to address this issue.In the first stage,a differential multi-head self-attention(DMHSA)mechanism is proposed to detect signal mutation points,allowing for the encoding of disturbance differential features.In the second stage,the original signal is combined with the encoded differential signal to create multi-channel features,and an improved temporal convolutional network,TCN-SENet,is designed for channel feature extraction and feature learning to achieve point classification of PQDs.The PQDs detection model based on these two modules can achieve efficient and accurate disturbance identification and timing estimation.In simulation experiments,the proposed model outperforms others in classification accuracy for disturbance dataset at a 30 dB signal-to-noise ratio,with an average timing error of less than 1.3ms.In the hardware experiment,the proposed model shows the best generalization capability,significantly outperforming other models in disturbance identification accuracy and average timing error.

金涛;陈煌滨;郑熙东;黄钦瑜;刘宇龙

福州大学电气工程与自动化学院,福建省 福州市 350108福州大学电气工程与自动化学院,福建省 福州市 350108福州大学电气工程与自动化学院,福建省 福州市 350108福州大学电气工程与自动化学院,福建省 福州市 350108北京大学能源研究院,北京市海淀区 100871

信息技术与安全科学

电能质量扰动点分类任务时间卷积网络多头自注意力机制差分特征提取

power quality disturbancepoint classification tasktemporal convolutional networkmulti-head self-attention mechanismdifferential feature extraction

《中国电机工程学报》 2026 (5)

1914-1927,中插15,15

国家自然科学基金项目(52377088).Project Supported by National Natural Science Foundation of China(52377088).

10.13334/j.0258-8013.pcsee.242297

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