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Arc detection and recognition in pantograph-catenary system based on convolutional neural network

机译:基于卷积神经网络的Pantograph-Catenary系统的电弧检测与识别

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The pantograph-catenary system is crucial to the transmission of electrical power from catenary lines to electrified trains. The occurrence of arcs could damage or interrupt railway operations. We propose a CNN-based model to detect arcs and recognize their magnitudes. First, we decompose the pantograph videos recorded by a camera fixed on China High-Speed train into continuous frames, and grayscale-process and segment those images to obtain an arc image set. Then, we divide the image set into training samples and test samples. And the training samples are further divided into three classifications labeled as 0, 1, 2, which are used to train CNN model. The accuracy of CNN trained result reaches 0.95, and the loss function converges to 0.083. Second, we use the trained network to detect arcs in the images of the test samples, and convert arc detection results to a time series of arc scores. Thus the occurrence of arcs and their magnitudes can be determined. Finally, we conduct experiments to compare our approach with other models. The results demonstrate the approach's high accuracy, robustness, and high speed, when dealing with images taken from unstable surroundings. It could be applied to other EMU models or environments with adjusted parameters. (C) 2019 Elsevier Inc. All rights reserved.
机译:Pantograph-Cateary系统对从延伸线路传输到电气化列车的电力至关重要。弧的发生可能会损坏或中断铁路操作。我们提出了一种基于CNN的模型来检测弧并识别它们的大小。首先,我们将通过固定在中国高速列车上的摄像机记录的电机视频分解为连续帧,以及灰度过程并分割这些图像以获得电弧图像集。然后,我们将图像分为训练样本和测试样本。并且训练样本进一步分为标记为0,1,2的三种分类,用于培训CNN模型。 CNN培训的结果的准确性达到0.95,损耗功能会聚到0.083。其次,我们使用训练有素的网络在测试样本的图像中检测电弧,并将电弧检测结果转换为弧分数的时间序列。因此,可以确定弧的发生及其幅度。最后,我们进行实验以将我们的方法与其他模型进行比较。结果表明,在处理从不稳定的环境中拍摄的图像时,该方法的高精度,鲁棒性和高速。它可以应用于具有调整参数的其他EMU模型或环境。 (c)2019 Elsevier Inc.保留所有权利。

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