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A Generic Anomaly Detection of Catenary Support Components Based on Generative Adversarial Networks

机译:基于生成对抗网络的膨胀载体组分的通用异常检测

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The goal of this article is to develop a universal anomaly detection approach for catenary support components (CSCs) based on the generative adversarial networks (GANs). As the long-term operation of railway system, a wide range of failures, which threaten the safe operation of vehicles, perhaps happen to CSCs. Until now, it is hard to design a generic detection system to recognize all these kinds of failures because each defect needs a special detecting algorithm for different fault signatures. The lack of anomaly samples also makes it difficult for supervised learning methods to detect effectively. In this article, a novel approach, which combines deep convolution neural networks (DCNNs) with GANs, is proposed to estimate whether failures happen and give an alarm to stop the accident. First, an object location model is trained by DCNNs to obtain numerous samples of CSCs. Second, a generative model based on deep convolutional GAN (DCGAN) is constructed to find a good mapping from image space to high-dimensional feature spaces implicitly. Finally, an anomaly rating criterion is used to diagnose images. Two typical components of CSCs, the insulator that has big body and the isoelectric line that has tiny characters, are tested here. Experiments show that the proposed method can correctly judge anomalous images of CSCs and possess a good generic failure detection ability in this single framework.
机译:本文的目标是基于生成的对冲网络(GANS)开发普遍的异常检测方法(CSC)。作为铁路系统的长期运行,威胁到车辆安全运行的广泛故障,也许发生在CSC上。到目前为止,很难设计一般检测系统来识别所有这些故障,因为每个缺陷需要用于不同故障签名的特殊检测算法。缺乏异常样本也使得监督学习方法难以有效地检测。在本文中,建议将深度卷积神经网络(DCNNS)与GANS结合的新方法,以估计是否发生故障并发出警报以阻止事故。首先,DCNN培训对象位置模型以获得许多样本的CSC。其次,构造基于深卷积GaN(DCGAN)的生成模型,以隐含地从图像空间到高维特征空间的良好映射。最后,使用异常评级标准来诊断图像。在此测试两个CSC的典型组件,具有大身体的绝缘体和具有微小字符的等电线。实验表明,所提出的方法可以正确地判断CSC的异常图像,并在这一单一框架中具有良好的通用故障检测能力。

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