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首页> 外文期刊>International Journal of Rail Transportation >Designing a lightweight 1D convolutional neural network with Bayesian optimization for wheel flat detection using carbody accelerations
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Designing a lightweight 1D convolutional neural network with Bayesian optimization for wheel flat detection using carbody accelerations

机译:使用汽车加速度设计具有贝叶斯优化的轻量级1D卷积神经网络

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摘要

Many freight waggons in Europe have been recently equipped with embedded systems (ESs) for vehicle tracking. This provides opportunities to implement the real-time fault diagnosis algorithm on ESs without additional investment. In this paper, we design a 1D lightweight Convolutional Neural Network (CNN) architecture, i.e. LightWFNet, guided by Bayesian Optimization for wheel flat (WF) detection. We tackle two main challenges. (1) Carbody acceleration has to be used for WF detection, where signal-to-noise ratio is much lower than at axle box level and thus the WF detection is much more difficult. (2) ESs have very limited computation power and energy supply. To verify the proposed LightWFNet, the field data measured on a tank waggon under operational condition are used. In comparison to the state-of-the-art lightweight CNNs, LightWFNet is validated for WF detection by using carbody accelerations with much lower computational costs.
机译:欧洲的许多货运瓦格森最近已经配备了用于车辆跟踪的嵌入式系统(ESS)。 这提供了在没有额外投资的情况下实现ESS实时故障诊断算法的机会。 在本文中,我们设计了1D轻量级卷积神经网络(CNN)架构,即LightWFNET,由贝叶斯优化为导向车轮平面(WF)检测。 我们解决两个主要挑战。 (1)车身加速必须用于WF检测,其中信噪比远低于轴箱电平,因此WF检测得多难。 (2)ESS具有非常有限的计算能源和能源供应。 为了验证所提出的LightWFNET,使用在运行条件下在坦克Waggon上测量的现场数据。 与最先进的轻量级CNN相比,通过使用具有更低计算成本的汽车加速来验证LightWFNET用于WF检测。

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