基于实际数据的轨道车辆轴承故障机载声分析

Matthias Kreuzer, D. Schmidt, Simon Wokusch, Walter Kellermann
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引用次数: 0

摘要

本文通过分析轨道车辆正常运行过程中记录的声信号,解决了轨道车辆轴承故障检测的难题。为此,我们引入了Mel频率倒谱系数(MFCCs)作为特征,它构成了一个简单的多层感知器分类器的输入。所提出的方法是评估与现实世界的数据,获得了最先进的通勤铁路车辆在测量活动。实验表明,即使对训练中未包含的轴承损伤,所选择的MFCC特征也能可靠地检测出轴承故障。
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Airborne Sound Analysis for the Detection of Bearing Faults in Railway Vehicles with Real-World Data
In this paper, we address the challenging problem of detecting bearing faults in railway vehicles by analyzing acoustic signals recorded during regular operation. For this, we introduce Mel Frequency Cepstral Coefficients (MFCCs) as features, which form the input to a simple Multi-Layer Perceptron classifier. The proposed method is evaluated with real-world data that was obtained for state-of-the-art commuter railway vehicles in a measurement campaign. The experiments show that bearing faults can be reliably detected with the chosen MFCC features even for bearing damages that were not included in training.
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