兰名扬, 刘宇龙, 金涛, 龚正, 刘梓强. 基于可视化轨迹圆和ResNet18的复合电能质量扰动类型识别[J]. 中国电机工程学报, 2022, 42(17): 6274-6285. DOI: 10.13334/j.0258-8013.pcsee.211203
引用本文: 兰名扬, 刘宇龙, 金涛, 龚正, 刘梓强. 基于可视化轨迹圆和ResNet18的复合电能质量扰动类型识别[J]. 中国电机工程学报, 2022, 42(17): 6274-6285. DOI: 10.13334/j.0258-8013.pcsee.211203
LAN Mingyang, LIU Yulong, JIN Tao, GONG Zheng, LIU Ziqiang. An Improved Recognition Method Based on Visual Trajectory Circle and ResnetN18 for Complex Power Quality Disturbances[J]. Proceedings of the CSEE, 2022, 42(17): 6274-6285. DOI: 10.13334/j.0258-8013.pcsee.211203
Citation: LAN Mingyang, LIU Yulong, JIN Tao, GONG Zheng, LIU Ziqiang. An Improved Recognition Method Based on Visual Trajectory Circle and ResnetN18 for Complex Power Quality Disturbances[J]. Proceedings of the CSEE, 2022, 42(17): 6274-6285. DOI: 10.13334/j.0258-8013.pcsee.211203

基于可视化轨迹圆和ResNet18的复合电能质量扰动类型识别

An Improved Recognition Method Based on Visual Trajectory Circle and ResnetN18 for Complex Power Quality Disturbances

  • 摘要: 为逐步实现新型电力系统,大量电力电子元器件被投入电网使用。由此引起的电能质量问题愈发严重,主要表现为电能质量扰动类型复合化,并造成传统识别算法适用性降低。针对这一问题,该文采用可视化轨迹圆技术,将一维扰动信号转换为具有明显形状特征的二维轨迹圆,并输入到深度残差网络进行自主的特征学习并分类识别。首先,对复合电能质量扰动信号进行希尔伯特变换得到基于采样时间的包络线序列;然后,以瞬时幅值为极径,以瞬时相位为对应极角,在极坐标上得到轨迹圆图像;最终将轨迹圆输入到ResNet18中训练学习并通过最优网络模型实现分类识别。为验证该算法的有效性,该文同时利用仿真和实验进行扰动信号分类,结果表明该方法能有效克服传统方法特征选择主观性强、抗噪性能差等缺点,可以更好地提取复合电能质量扰动特征信息,对复合电能质量扰动识别率高。

     

    Abstract: In order to gradually realize the new power system, a large number of power electronic components have been put into use in the power grid. As a result, the power quality problem becomes more and more serious, which is mainly manifested in the compound of power quality disturbances (PQDs) and the decrease in the applicability of traditional identification algorithms. To solve this problem, the visual trajectory circle technology was proposed, which could transform the one-dimensional disturbance signals into the two-dimensional trajectory circle images with obvious shape characteristics. These images were input to the depth residual network (ResNet) for autonomous feature learning and classification. Firstly, Hilbert transform (HT) was applied to the complex power quality disturbances to get the envelope sequence based on sampling time. Then, taking the amplitude as the polar diameter and the instantaneous phase corresponding to the polar angle, the trajectory circle images were obtained in polar coordinates. At last, they were input to the optimal model of the ResNet18 to learn how to classify PQDs. In order to verify the effectiveness of the proposed algorithm, the classifications of PQDs were conducted through in the simulation and experiment in this paper. The results show that the proposed method cannot only better extract the complex PQDs feature, but also effectively overcome the shortcomings of traditional methods, such as difficulties in poor anti-noise performance and etc. The purpose of high precision PQDs classification can be achieved.

     

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