Predicting Ballast Fouling Conditions with the Gaussian Mixture Model

Yufeng Gong, Yu Qian
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Abstract

Railroad ballast is typically comprised of only large granular particles. However, the degradation of fresh ballast and the arrival of foreign fines result in ballast fouling. Compared with fresh ballast, fouled ballast exhibits reduced resilience and compromised drainage capabilities. To optimize track performance, maintenance activities for the ballast are frequently scheduled based on the fouling severity. An accurate assessment of ballast fouling conditions can enhance maintenance efficiency and reduce costs. Over the years, while many ballast fouling evaluation methods have been developed, their widespread adoption has been hindered by system costs and implementation challenges. This study aims to address this by developing an affordable and easily implemented approach to estimating ballast fouling conditions using the Gaussian Mixture Model (GMM). Initially, images of fouled ballast are characterized by fitting the distributions of each RGB (Red, Green, Blue) channel. Subsequently, two mathematical methods, expectation-maximization and point estimation, are employed to solve the GMM parameters. These derived GMM parameters are then used to backcalculate the sample parameters, facilitating the estimation of ballast fouling conditions. The results of this study reveal a close alignment between the ballast fouling conditions backcalculated with the GMM and those quantified through laboratory sieving analysis. This study thus presents a promising path forward, using images captured from cost-effective cameras to estimate ballast fouling conditions with minimal computational expense.
用高斯混合物模型预测压载污垢状况
铁路道碴通常只由大颗粒组成。然而,新鲜道碴的降解和外来细粒的进入会导致道碴结垢。与新鲜道碴相比,结垢道碴的弹性降低,排水能力也受到影响。为了优化轨道性能,经常会根据道碴结垢的严重程度来安排道碴的维护活动。准确评估道碴结垢情况可以提高维护效率并降低成本。多年来,虽然已开发出许多无砟轨道污损评估方法,但系统成本和实施方面的挑战阻碍了这些方法的广泛应用。本研究旨在利用高斯混杂模型 (GMM) 开发一种经济实惠且易于实施的方法来估算压载污垢状况,从而解决这一问题。首先,通过拟合每个 RGB(红、绿、蓝)通道的分布来描述污损压舱物图像的特征。随后,采用期望最大化和点估计两种数学方法求解 GMM 参数。得出的 GMM 参数可用于反算样本参数,从而方便对压载污垢状况进行估算。这项研究的结果表明,用 GMM 反算得出的压载污垢状况与实验室筛分分析量化的压载污垢状况非常吻合。因此,这项研究提出了一条很有前景的发展道路,即利用成本效益高的相机拍摄的图像,以最小的计算成本估算压载污垢状况。
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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