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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Defect Detection of Pantograph Slide Based on Deep Learning and Image Processing Technology
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Defect Detection of Pantograph Slide Based on Deep Learning and Image Processing Technology

机译:基于深度学习和图像处理技术的受电弓滑块缺陷检测

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摘要

Pantograph is one of the most important components in electrical railway vehicles. To guarantee steady power supply for the train, the surface of the pantograph slide plate should be smooth enough so that the catenary can move on it from one side to the other side steadily with low friction. In addition, the thickness of the pantograph slide plate cannot be smaller than the lower limit for the sake of safety. Therefore, periodical inspection and maintenance of the pantograph slide plate are significant in terms of safe and stable operation. In this paper, an innovative and intelligent method based on deep learning and image processing technologies is proposed for the online condition monitoring of the pantograph slide plate. In the first stage, the surface defect detection and recognition method of the pantograph slide plate is proposed. Four typical surface defects of the slide are considered, and a deep learning model, pantograph defect detection neural network (PDDNet), is trained for the defect detection and recognition. In the second stage, five key criteria for qualifying the wear condition are proposed. The wear edge estimation based on image processing technology is investigated in detail. Furthermore, they are used to calculate the wear depth and evaluate the wear condition of the pantograph slide. The experiment results demonstrate that the proposed PDDNet can detect the surface defects and also recognize the four kinds of defects with a sound accuracy. The wear depth estimation results are compared with on-site measurement data, and the proposed method can achieve high estimation accuracy.
机译:受电弓是电气铁路车辆中最重要的组件之一。为了保证火车的稳定供电,受电弓滑板的表面应足够光滑,以使悬链线可以低摩擦平稳地从一侧移动到另一侧。另外,为了安全起见,受电弓滑板的厚度不能小于下限值。因此,受电弓滑板的定期检查和维护在安全和稳定的操作方面具有重要意义。本文提出了一种基于深度学习和图像处理技术的创新智能方法,用于受电弓滑板的在线状态监测。在第一阶段,提出了受电弓滑板的表面缺陷检测与识别方法。考虑了幻灯片的四个典型的表面缺陷,并训练了一个深度学习模型,即受电弓缺陷检测神经网络(PDDNet),用于缺陷检测和识别。在第二阶段,提出了五项关键条件来确定磨损状态。详细研究了基于图像处理技术的磨损边缘估计。此外,它们还用于计算磨损深度并评估受电弓滑块的磨损状况。实验结果表明,所提出的PDDNet可以检测表面缺陷,并且可以准确地识别出四种缺陷。将磨损深度估算结果与现场测量数据进行比较,该方法可以达到较高的估算精度。

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