Condition-based monitoring of the rail wheel using logical analysis of data and ant colony optimization

IF 1.8 Q3 ENGINEERING, INDUSTRIAL Journal of Quality in Maintenance Engineering Pub Date : 2022-08-18 DOI:10.1108/jqme-01-2022-0004
Hany Osman, S. Yacout
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引用次数: 1

Abstract

PurposeIn this paper, a data mining approach is proposed for monitoring the conditions leading to a rail wheel high impact load. The proposed approach incorporates logical analysis of data (LAD) and ant colony optimization (ACO) algorithms in extracting patterns of high impact loads and normal loads from historical railway records. In addition, the patterns are employed in establishing a classification model used for classifying unseen observations. A case study representing real-world impact load data is presented to illustrate the impact of the proposed approach in improving railway services.Design/methodology/approachApplication of artificial intelligence and machine learning approaches becomes an essential tool in improving the performance of railway transportation systems. By using these approaches, the knowledge extracted from historical data can be employed in railway assets monitoring to maintain the assets in a reliable state and to improve the service provided by the railway network.FindingsResults achieved by the proposed approach provide a prognostic system used for monitoring the conditions surrounding rail wheels. Incorporating this prognostic system in surveilling the rail wheels indeed results in better railway services as trips with no-delay or no-failure can be realized. A comparative study is conducted to evaluate the performance of the proposed approach versus other classification algorithms. In addition to the highly interpretable results obtained by the generated patterns, the comparative study demonstrates that the proposed approach provides classification accuracy higher than other common machine learning classification algorithms.Originality/valueThe methodology followed in this research employs ACO algorithm as an artificial intelligent technique and LDA as a machine learning algorithm in analyzing wheel impact load alarm-collected datasets. This new methodology provided a promising classification model to predict future alarm and a prognostic system to guide the system while avoiding this alarm.
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基于数据逻辑分析和蚁群优化的轨道轮状态监测
本文提出了一种数据挖掘方法,用于监测导致轨道轮高冲击载荷的条件。该方法结合了数据逻辑分析(LAD)和蚁群优化(ACO)算法,从铁路历史记录中提取高冲击载荷和正常载荷的模式。此外,利用这些模式建立了一个分类模型,用于对未见观测进行分类。一个代表真实世界冲击负荷数据的案例研究被提出,以说明所提出的方法在改善铁路服务方面的影响。设计/方法/方法人工智能和机器学习方法的应用成为提高铁路运输系统性能的重要工具。利用这些方法,可以将从历史数据中提取的知识用于铁路资产监测,使铁路资产处于可靠的状态,从而提高铁路网的服务水平。所提出的方法所取得的结果提供了一个用于监测轨道车轮周围条件的预测系统。将这种预测系统用于监测铁路车轮,确实可以实现无延误或无故障的旅行,从而改善铁路服务。进行了比较研究,以评估所提出的方法与其他分类算法的性能。除了生成的模式获得高度可解释性的结果外,对比研究表明,该方法的分类精度高于其他常见的机器学习分类算法。独创性/价值本研究采用蚁群算法作为人工智能技术,LDA作为机器学习算法来分析车轮冲击载荷报警采集数据集。这种新方法提供了一种有前景的分类模型来预测未来的警报,并提供了一个预测系统来指导系统同时避免这种警报。
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来源期刊
Journal of Quality in Maintenance Engineering
Journal of Quality in Maintenance Engineering Engineering-Safety, Risk, Reliability and Quality
CiteScore
4.00
自引率
13.30%
发文量
24
期刊介绍: This exciting journal looks at maintenance engineering from a positive standpoint, and clarifies its recently elevatedstatus as a highly technical, scientific, and complex field. Typical areas examined include: ■Budget and control ■Equipment management ■Maintenance information systems ■Process capability and maintenance ■Process monitoring techniques ■Reliability-based maintenance ■Replacement and life cycle costs ■TQM and maintenance
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