Analytics of Waveform Distortion Variations in Railway Pantograph Measurements by Deep Learning

被引:14
作者
Salles, Rafael S. [1 ]
de Oliveira, Roger Alves [1 ]
Ronnberg, Sarah K. [1 ]
Mariscotti, Andrea [2 ]
机构
[1] Lulea Univ Technol, Elect Power Engn, S-93187 Skelleftea, Sweden
[2] Univ Genoa, Dept Elect Elect & Telecommun Engn & Naval Archit, I-16145 Genoa, Italy
关键词
Distortion; Rail transportation; Harmonic analysis; Power system harmonics; Distortion measurement; Current measurement; Harmonic distortion; Autoencoder; clustering; deep learning (DL); pattern analysis; power quality (PQ); power system harmonics; unsupervised learning; ELECTRIFICATION;
D O I
10.1109/TIM.2022.3197801
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Waveform distortion in general represents a widespread problem in electrified transports due to interference, service disruption, increased losses, and aging of components. Given the multitude of moving sources and the extremely variable operating conditions, short-time records must be considered for analysis, and this increases in turn its complexity, from which the need for effective automated processing, as offered by a deep learning (DL) approach. This article proposes an application of unsupervised DL to measurements of railway pantograph quantities to identify waveform distortion patterns. Data consist of pantograph current from a Swiss 15-kV 16.7-Hz railway system. Three DL input types are considered: waveforms, harmonic spectra, and supraharmonic spectra. The applied DL method applied is the deep autoencoder (DAE) followed by feature clustering, using techniques to define a suitable number of clusters. Short-term distortion is evaluated over sub-10-min intervals of harmonic and supraharmonic spectra down to subsecond intervals. Results are explained among others by connecting the distribution of the clusters (determined by the self-supervised method) to the dynamic operating conditions of the rolling stock. The resulting DAE performance is superior in terms of accuracy and comprehensiveness of spectral components compared to a more traditional principal component analysis (PCA) that was chosen as a reference for comparison.
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页数:11
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