Aerial identification of flashed over faulty insulator using binary image classification

IF 0.6 Q3 ENGINEERING, MULTIDISCIPLINARY
S. Jiskani, Tanweer Hussain, A. A. Sahito, Faheemullah Shaikh, Ali Akbar Shah
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引用次数: 0

Abstract

Flashed over insulator faults are the most significant faults in high voltage line insulators. They are complicated to identify using traditional methods due to their labor-intensive nature. This study proposes a deep learning-based algorithm for detecting flashed over insulator faults in the real time. The algorithm is based on the Resnet 50 architecture, which has been shown to be effective for image classification tasks in the previous studies regarding image analysis. The algorithm is fast, robust and efficient, making it suitable for real-time applications. The algorithm is trained on a dataset of images of flashed over and non-flashed over insulators. This dataset was collected from various transmission lines and National Center of Robotics and Automation, which are located in Pakistan. For validating the effectiveness of the Resnet 50 algorithm, it was compared with the results obtained from the two other widely popular deep learning algorithms, Densenet 121 and VGG 16 (trained and validated on the same dataset). The results showed that the Resnet 50 was able to detect flashed over insulator faults with an accuracy of over 99%. Whereas the Densenet 121 and VGG 16 have achieved an accuracy of less than 51%.
利用二值图像分类对闪过故障绝缘子进行空中识别
闪络绝缘子故障是高压线路绝缘子中最重要的故障。由于其劳动密集型的特点,使用传统方法识别它们非常复杂。本研究提出了一种基于深度学习的算法,用于实时检测闪络过绝缘子故障。该算法基于 Resnet 50 架构,在之前的图像分析研究中,该架构已被证明可有效完成图像分类任务。该算法快速、稳健、高效,适合实时应用。该算法在闪络和非闪络绝缘子图像数据集上进行训练。该数据集是从位于巴基斯坦的各种输电线路和国家机器人与自动化中心收集的。为了验证 Resnet 50 算法的有效性,将其与另外两种广受欢迎的深度学习算法 Densenet 121 和 VGG 16(在同一数据集上训练和验证)的结果进行了比较。结果表明,Resnet 50 能够以超过 99% 的准确率检测出绝缘体闪络故障。而 Densenet 121 和 VGG 16 的准确率不到 51%。
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审稿时长
40 weeks
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