Lee Jin-Han, Lee Jun-Hee, Yun Kwang-Su, Bae Han Byeol, Kim Sun Young, Jeong Jae-Hoon, Kim Jin-Pyung
Busan Transportation Corporation, Busan 47353, Republic of Korea.
School of Software Engineering, Kunsan National University, Gunsan 54150, Republic of Korea.
Sensors (Basel). 2023 Oct 13;23(20):8455. doi: 10.3390/s23208455.
The wheels of railway vehicles are of paramount importance in relation to railroad operations and safety. Currently, the management of railway vehicle wheels is restricted to post-event inspections of the wheels whenever physical phenomena, such as abnormal vibrations and noise, occur during the operation of railway vehicles. To address this issue, this paper proposes a method for predicting abnormalities in railway wheels in advance and enhancing the learning and prediction performance of machine learning algorithms. Data were collected during the operation of Line 4 of the Busan Metro in South Korea by directly attaching sensors to the railway vehicles. Through the analysis of key factors in the collected data, factors that can be used for tire condition classification were derived. Additionally, through data distribution analysis and correlation analysis, factors for classifying tire conditions were identified. As a result, it was determined that the -axis of acceleration has a significant impact, and machine learning techniques such as SVM (Linear Kernel, RBF Kernel) and Random Forest were utilized based on acceleration data to classify tire conditions into in-service and defective states. The SVM (Linear Kernel) yielded the highest recognition rate at 98.70%.
铁路车辆的车轮对于铁路运营和安全至关重要。目前,铁路车辆车轮的管理仅限于在铁路车辆运行过程中出现诸如异常振动和噪音等物理现象时对车轮进行事后检查。为解决这一问题,本文提出了一种提前预测铁路车轮异常并提高机器学习算法学习和预测性能的方法。通过直接在韩国釜山地铁4号线的铁路车辆上安装传感器来收集运行期间的数据。通过对收集到的数据中的关键因素进行分析,得出了可用于轮胎状况分类的因素。此外,通过数据分布分析和相关性分析,确定了用于分类轮胎状况的因素。结果表明,加速度的 -轴有显著影响,并基于加速度数据利用诸如支持向量机(线性核、径向基核)和随机森林等机器学习技术将轮胎状况分为在用状态和缺陷状态。支持向量机(线性核)的识别率最高,为98.70%。