Faculty of Computer Science and Information Technology, Khawaja Fareed University of Engineering and Information Technology, Rahim Yar Khan 64200, Pakistan.
Department of Computer Science and Information Technology, Ghazi University, Dera Ghazi Khan 32201, Pakistan.
Sensors (Basel). 2021 Sep 16;21(18):6221. doi: 10.3390/s21186221.
Regular inspection of railway track health is crucial for maintaining safe and reliable train operations. Factors, such as cracks, ballast issues, rail discontinuity, loose nuts and bolts, burnt wheels, superelevation, and misalignment developed on the rails due to non-maintenance, pre-emptive investigations and delayed detection, pose a grave danger and threats to the safe operation of rail transport. The traditional procedure of manually inspecting the rail track using a railway cart is both inefficient and prone to human error and biases. In a country like Pakistan where train accidents have taken many lives, it is not unusual to automate such approaches to avoid such accidents and save countless lives. This study aims at enhancing the traditional railway cart system to address these issues by introducing an automatic railway track fault detection system using acoustic analysis. In this regard, this study makes two important contributions: data collection on Pakistan railway tracks using acoustic signals and the application of various classification techniques to the collected data. Initially, three types of tracks are considered, including normal track, wheel burnt and superelevation, due to their common occurrence. Several well-known machine learning algorithms are applied such as support vector machines, logistic regression, random forest and decision tree classifier, in addition to deep learning models like multilayer perceptron and convolutional neural networks. Results suggest that acoustic data can help determine the track faults successfully. Results indicate that the best results are obtained by RF and DT with an accuracy of 97%.
定期检查铁路轨道健康状况对于确保火车安全可靠运行至关重要。由于缺乏维护、预防性调查和延迟检测等因素,铁轨上会出现裂缝、道床问题、轨道不连续、螺母和螺栓松动、车轮烧伤、超高和轨距偏差等问题,这些都对铁路运输的安全运行构成了严重威胁。传统的使用铁路轨道车人工检查轨道的方法既低效又容易出现人为错误和偏差。在巴基斯坦这样的国家,火车事故夺走了许多人的生命,采用自动化方法来避免此类事故并挽救无数生命是很有必要的。本研究旨在通过引入基于声学分析的自动铁路轨道故障检测系统来改进传统的铁路轨道车系统,以解决这些问题。为此,本研究做出了两个重要贡献:使用声学信号在巴基斯坦铁路轨道上收集数据,并将各种分类技术应用于收集的数据。首先,考虑了三种类型的轨道,包括正常轨道、车轮烧伤和超高,因为它们经常出现。应用了几种著名的机器学习算法,如支持向量机、逻辑回归、随机森林和决策树分类器,以及深度学习模型,如多层感知机和卷积神经网络。结果表明,声学数据有助于成功确定轨道故障。结果表明,RF 和 DT 的准确率最高,达到 97%。