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Novel Multistate Fault Diagnosis and Location Method for Key Components of High-Speed Trains

机译:高速列车关键部件的新型多态故障诊断与定位方法

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摘要

Images collected by linear scan cameras are stretched and compressed due to the speed regulation of trains. This condition changes the shape of objects and considerably increases the false and missed alarm rates. Moreover, small size and dense distribution of the key components in railway trains increase the difficulty in fault diagnosis. Therefore, a two-module troubleshooting and positioning methodology is proposed, in this article, for state diagnosis of key small components of high-speed running trains. First, the image with deformation is reshaped to be exactly the same as the standard one via omnidirectional scale correlation normalization (OSCN), which performs well even in low texture, high-light situations. Second, we propose three feature-enhanced models to expand the receptive field of deep feature maps. This novel detector, namely, refine-inception net (RIN), not only reduces the rate of missed and false detection, but also minimizes the influence of target size and occlusion. Augmentation is performed to increase robustness because the detector is data driven. Experimental results show that the optimal strategy combining OSCN and RIN can troubleshoot high-speed trains of different models with an accuracy higher than 99%. Our method can be extended to foreign object recognition on the train roof while maintaining railway safety.
机译:由于列车的速度调节,由线性扫描摄像机收集的图像被拉伸和压缩。这种情况会改变物体的形状,大大增加了虚假和错过的报警速率。此外,铁路列车中的关键部件的小尺寸和密集分配增加了故障诊断的难度。因此,在本文中提出了一种双模块故障排除和定位方法,用于高速运行列车的关键小部件的状态诊断。首先,具有变形的图像被重新装入,以通过全向量表相关标准化(OSCN)与标准一个完全相同,这也能够在低质量,高光照情况下执行井。其次,我们提出了三种功能增强的模型来扩展深度特征映射的接受领域。这种新型探测器,即细化 - inception网(rin),不仅降低了错过和虚假检测的速率,还可以最大限度地减少目标尺寸和闭塞的影响。执行增强以增加稳健性,因为探测器是数据驱动的。实验结果表明,结合OSCN和RIN的最佳策略可以对不同模型的高速列车进行故障排除,精度高于99%。我们的方法可以扩展到火车屋顶上的异物识别,同时保持铁路安全。

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