ASLGSDApr 14, 2023

Novel features for the detection of bearing faults in railway vehicles

arXiv:2304.08249v19 citationsh-index: 41
Originality Incremental advance
AI Analysis

This addresses the problem of reliable fault detection in railway bearings for maintenance and safety, but it is incremental as it adapts existing features to a more realistic scenario.

The paper tackled bearing fault detection in railway vehicles by introducing MFCCs and AMS features from audio processing, achieving significantly improved classification performance, and used a One-class SVM to handle data imbalance by detecting outliers.

{In this paper, we address the challenging problem of detecting bearing faults from vibration signals. For this, several time- and frequency-domain features have been proposed already in the past. However, these features are usually evaluated on data originating from relatively simple scenarios and a significant performance loss can be observed if more realistic scenarios are considered. To overcome this, we introduce Mel-Frequency Cepstral Coefficients (MFCCs) and features extracted from the Amplitude Modulation Spectrogram (AMS) as features for the detection of bearing faults. Both AMS and MFCCs were originally introduced in the context of audio signal processing but it is demonstrated that a significantly improved classification performance can be obtained by using these features. Furthermore, to tackle the characteristic data imbalance problem in the context of bearing fault detection, i.e., typically much more data from healthy bearings than from damaged bearings is available, we propose to train a One-class \ac{SVM} with data from healthy bearings only. Bearing faults are then classified by the detection of outliers. Our approach is evaluated with data measured in a highly challenging scenario comprising a state-of-the-art commuter railway engine which is supplied by an industrial power converter and coupled to a load machine.

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