Railway Track Joints and Fasteners Fault Detection using Principal Component Analysis

M. Owais, Imtiaz Hussain, Gul Shahzad, B. Khan
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Abstract

This works presents a machine learning based fault detection algorithm specifically for condition monitoring of different types of railway tracks. The algorithm relies on one of the most commonly used machine learning algorithms, Principal Component Analysis (PCA), for extracting the patterns of various defected and nondefected railway track components including rail fasteners and joints like fishplate. The algorithm ensures a very fast yet robust feature extraction workflow primarily by virtue of its inherently offered dimensionality reduction resulting in lesser computational burden. The classification task is handled by the Euclidean distance classifier that identifies the nearest neighbor of the test image in the subspace spanned by the most dominant eigenvectors extracted from the training dataset during feature extraction workflow. Two varying railway track datasets, from Bangladesh and Pakistan, have been used in this work to validate the proposed algorithm using standard training to test ratios. Multiple classification scenarios are presented and analyzed in detail for both datasets with supporting results. MATLAB_R2022a has been used for development of the proposed algorithms that offers an overall efficiency of more than ninety percent under varying scenarios.
基于主成分分析的铁路轨道接头和紧固件故障检测
本文提出了一种基于机器学习的故障检测算法,专门用于不同类型铁路轨道的状态监测。该算法依赖于最常用的机器学习算法之一,主成分分析(PCA),用于提取各种有缺陷和无缺陷的铁路轨道部件的模式,包括铁路紧固件和鱼尾板等接头。该算法保证了一个非常快速而鲁棒的特征提取工作流,主要是由于其固有的降维特性,从而减少了计算量。分类任务由欧几里得距离分类器处理,该分类器在特征提取工作流中从训练数据集中提取的最主要特征向量所跨越的子空间中识别测试图像的最近邻居。本研究使用了来自孟加拉国和巴基斯坦的两个不同的铁路轨道数据集,通过标准训练测试比率来验证所提出的算法。针对这两个数据集提出并详细分析了多个分类场景,并给出了支持结果。MATLAB_R2022a已被用于开发所提出的算法,该算法在不同场景下提供90%以上的总体效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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