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基于声学数据中选择性MFCC特征的铁路轨道故障检测

Railway Track Fault Detection Using Selective MFCC Features from Acoustic Data.

作者信息

Rustam Furqan, Ishaq Abid, Hashmi Muhammad Shadab Alam, Siddiqui Hafeez Ur Rehman, López Luis Alonso Dzul, Galán Juan Castanedo, Ashraf Imran

机构信息

School of Computer Science, University College Dublin, D04 V1W8 Dublin, Ireland.

Department of Computer Science & Information Technology, The Islamia University of Bahawalpur, Bahawalpur 63100, Pakistan.

出版信息

Sensors (Basel). 2023 Aug 8;23(16):7018. doi: 10.3390/s23167018.

Abstract

Railway track faults may lead to railway accidents and cause human and financial loss. Spatial, temporal, and weather elements, and wear and tear, lead to ballast, loose nuts, misalignment, and cracks leading to accidents. Manual inspection of such defects is time-consuming and prone to errors. Automatic inspection provides a fast, reliable, and unbiased solution. However, highly accurate fault detection is challenging due to the lack of public datasets, noisy data, inefficient models, etc. To obtain better performance, this study presents a novel approach that relies on mel frequency cepstral coefficient features from acoustic data. The primary objective of this study is to increase fault detection performance. As well as designing an ensemble model, we utilize selective features using chi-square(chi2) that have high importance with respect to the target class. Extensive experiments were carried out to analyze the efficiency of the proposed approach. The experimental results suggest that using 60 features, 40 original features, and 20 chi2 features produces optimal results both regarding accuracy and computational complexity. A mean accuracy score of 0.99 was obtained using the proposed approach with machine learning models using the collected data. Moreover, this performance was significantly better than that of existing approaches; however, the performance of models may vary in real-world settings.

摘要

铁轨故障可能会导致铁路事故,并造成人员伤亡和经济损失。空间、时间、天气因素以及磨损会导致道砟、螺母松动、轨道错位和裂缝,进而引发事故。人工检查此类缺陷既耗时又容易出错。自动检查提供了一种快速、可靠且公正的解决方案。然而,由于缺乏公共数据集、数据噪声、模型效率低下等原因,高精度的故障检测具有挑战性。为了获得更好的性能,本研究提出了一种基于声学数据的梅尔频率倒谱系数特征的新方法。本研究的主要目标是提高故障检测性能。除了设计一个集成模型外,我们还使用卡方(chi2)选择具有高重要性的特征,这些特征相对于目标类别具有重要意义。进行了大量实验以分析所提出方法的效率。实验结果表明,使用60个特征,40个原始特征和20个chi2特征在准确性和计算复杂性方面都产生了最优结果。使用所提出方法结合机器学习模型对收集的数据进行分析,平均准确率达到了0.99。此外,这一性能明显优于现有方法;然而在实际应用中,模型的性能可能会有所不同。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cea6/10460052/ca9b26bfc9b9/sensors-23-07018-g001.jpg

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