On monitoring fretting fatigue damage in solid railway axles by acoustic emission with unsupervised machine learning and comparison to non-destructive testing techniques

IF 1.7 4区 工程技术 Q3 ENGINEERING, CIVIL
M. Carboni, Marta Zamorano
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引用次数: 0

Abstract

Railway axles are safety-critical components of the rolling stock and the consequences of possible in-service failures can have dramatic effects. Although this element is traditionally designed against such failures, the initiation and propagation of service cracks are still occasionally observed, requiring an effective application of non-destructive testing and structural health monitoring approaches. This paper investigates the application of structural health monitoring by acoustic emission to the case of solid railway axles subject to fretting fatigue damage. A full-scale test was performed on a specimen in which artificial notches were suitably manufactured in order to cause the initiation and evolution of fretting fatigue damage up to the stage of relevant propagating fatigue cracks. During the test, both periodical phased array ultrasonic inspections and continuous acquisition of acoustic emission data have been carried out. Moreover, at the end of the test, the specimen was inspected, analyzed and evaluated by visual inspection and magnetic particles testing, while acoustic emission raw data were post-processed by a special unsupervised machine learning algorithm based on an Artificial Neural Network. It is demonstrated that the proposed methodology is very effective to detect the onset of crack initiation in a non-invasive and safe way.
基于无监督机器学习的声发射监测铁路实心轴微动疲劳损伤及其与无损检测技术的比较
铁路轴是机车车辆的安全关键部件,在使用中可能出现的故障会产生巨大影响。尽管该元件的传统设计是为了防止此类故障,但仍然偶尔会观察到使用裂缝的产生和扩展,这需要有效地应用无损检测和结构健康监测方法。本文研究了声发射结构健康监测在铁路实心轴微动疲劳损伤中的应用。在试样上进行了全尺寸试验,其中适当地制造了人工缺口,以引起微动疲劳损伤的开始和演变,直至相关的扩展疲劳裂纹阶段。在试验过程中,进行了周期性相控阵超声检测和声发射数据的连续采集。试验结束后,通过目测和磁粉检测对试件进行检测、分析和评价,声发射原始数据通过基于人工神经网络的特殊无监督机器学习算法进行后处理。实验结果表明,该方法能够有效地、无创、安全地检测裂纹起裂的起始点。
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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来源期刊
CiteScore
4.80
自引率
10.00%
发文量
91
审稿时长
7 months
期刊介绍: The Journal of Rail and Rapid Transit is devoted to engineering in its widest interpretation applicable to rail and rapid transit. The Journal aims to promote sharing of technical knowledge, ideas and experience between engineers and researchers working in the railway field.
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