董懿飞, 王晓杰, 王仁书, 许军, 舒胜文, 陶贻青. 基于一维残差网络的复合绝缘子发热缺陷检测[J]. 红外技术, 2023, 45(6): 663-670.
引用本文: 董懿飞, 王晓杰, 王仁书, 许军, 舒胜文, 陶贻青. 基于一维残差网络的复合绝缘子发热缺陷检测[J]. 红外技术, 2023, 45(6): 663-670.
DONG Yifei, WANG Xiaojie, WANG Renshu, XU Jun, SHU Shengwen, TAO Yiqing. Thermal Defect Detection of Composite Insulator Based on One-dimensional Residual Network[J]. Infrared Technology , 2023, 45(6): 663-670.
Citation: DONG Yifei, WANG Xiaojie, WANG Renshu, XU Jun, SHU Shengwen, TAO Yiqing. Thermal Defect Detection of Composite Insulator Based on One-dimensional Residual Network[J]. Infrared Technology , 2023, 45(6): 663-670.

基于一维残差网络的复合绝缘子发热缺陷检测

Thermal Defect Detection of Composite Insulator Based on One-dimensional Residual Network

  • 摘要: 复合绝缘子在不同缺陷类型下表现出不同的发热特征,基于复合绝缘子中心轴温度数据,提出了一种基于一维残差网络的复合绝缘子发热缺陷检测方法。首先,统计分析复合绝缘子不同缺陷类型下的异常温升范围及位置信息,得到各缺陷类型下的复合绝缘子中心轴温度数据样本集;然后,建立一维残差网络模型,在残差块中引入空洞卷积来扩大感受野,并加入有效通道注意力机制模块(efficient channel attention network, ECA_Net),提升与缺陷类别相关性较高的特征权重;最后,进行了算例验证及模型对比,同时采用t分布随机紧邻嵌入(t-distributed stochastic neighbor embedding, t-SNE)可视化方法,反映模型特征提取的效果。结果表明:该模型能够有效捕捉中心轴线温度数据的空间维度信息,自适应提取类别区分度较大的特征,相较于普通卷积、自编码器(auto encoder, AE)和支持向量机(support vector machine, SVM),其识别准确率得到了提升,具有较好的鲁棒性和泛化能力,实现了端到端的复合绝缘子发热缺陷检测。

     

    Abstract: A composite insulator exhibits different heating characteristics under different defect types. In this study, a thermal defect detection method for composite insulators based on one-dimensional residual network and the central axis temperature data of composite insulators is proposed. First, the abnormal temperature rise range and position information of composite insulators under different defect types were statistically analyzed, and a sample set of composite insulator central axis temperature data under different defect types was obtained. Next, a one-dimensional residual network model was established. The dilated convolution was introduced into the residual block to expand the receptive field, and the efficient channel attention network (ECA_Net) was added to improve the feature weight with a high correlation with the defect category. Finally, numerical examples were verified and compared. Simultaneously, the t-distributed stochastic neighbor embedding (t-SNE) visualization method was used to reflect the effect of feature extraction on the model. The results showed that the model effectively captured the spatial dimension information of the central axis temperature data and adaptively extracted the features with high classification discrimination. Compared with ordinary convolution, auto encoder (AE), and support vector machine(SVM), the proposed model has improved recognition accuracy, good robustness and generalization ability. Thus, end-to-end composite insulator heating defect detection was realized.

     

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