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The Recent Applications of Machine Learning in Rail Track Maintenance: A Survey

机译:最近的机器学习在铁路轨道维修中的应用:调查

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Railway systems play a vital role in the world's economy and movement of goods and people. Rail tracks are one of the most critical components needed for the uninterrupted operation of railway systems. However, environmental conditions or mechanical forces can accelerate the degradation process of rail tracks. Any fault in rail tracks can incur enormous costs or even results in disastrous incidents such as train derailment. Over the past few years, the research community has adopted the use of machine learning (ML) algorithms for diagnosis and prognosis of rail defects in order to help the railway industry to carry out timely responses to failures. In this paper, we review the existing literature on the state-of-the-art machine learning-based approaches used in different rail track maintenance tasks. As one of our main contributions, we also provide a taxonomy to classify the existing literature based on types of methods and types of data. Moreover, we present the shortcomings of current techniques and discuss what research community and rail industry can do to address these issues. Finally, we conclude with a list of recommended directions for future research in the field.
机译:铁路系统在世界经济和商品的运动中起着至关重要的作用。轨道轨道是铁路系统不间断运行所需的最关键组件之一。然而,环境条件或机械力可以加速轨道轨道的降解过程。轨道轨道中的任何故障都可能会产生巨大的成本甚至导致诸如火车脱轨等灾难性事件。在过去几年中,研究界采用了机器学习(ML)算法用于诊断和预后的轨道缺陷,以帮助铁路行业对失败进行及时回应。在本文中,我们在不同铁路轨道维护任务中审查了基于最先进的机器学习方法的现有文献。作为我们的主要贡献之一,我们还提供基于方法和数据类型类型的现有文献来分类的分类学。此外,我们介绍了当前技术的缺点,并讨论了如何解决这些问题的研究界和铁路行业。最后,我们将结论结束,其中包括未来在该领域的研究的推荐方向。

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