Identifying the most suitable machine learning approach for a road digital twin; a systematic literature review

Kun Chen, Mehran Eskandari Torbaghan, Mingjie Chu, Long Zhang, Alvaro Garcia-Hernández
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引用次数: 2

Abstract

Road infrastructure systems have been suffering from ineffective maintenance strategies, exaggerated by budget restrictions. A more holistic road asset management approach enhanced by data-informed decision making through effective condition assessment, distress detection, future condition predictions can significantly enhance maintenance planning, prolonging asset life. Recent technology innovations such as Digital Twins have great potentials to enable the needed approach for road condition predictions and a proactive asset management. To this end, machine learning techniques have also demonstrated convincing capabilities in solving engineering problems. However, none of them has been considered specifically within digital twins context. There is therefore a need to review and identify appropriate approaches for the usage of machine learning techniques within road digital twins. This paper provides a systematic literature review of machine learning algorithms used for road condition predictions and discusses findings within the road digital twin framework. The results show that existing machine learning approaches are to some extent, suitable and mature to stipulate successful road digital twin development. Moreover, the review whilst identifying gaps in the literature, indicates several considerations and recommendations required on the journey to road digital twins, and suggests multiple future research directions based on the review summaries of machine learning capabilities.
为道路数字孪生识别最合适的机器学习方法;系统的文献综述
道路基础设施系统一直受到无效维护策略的影响,而预算限制又加剧了这一问题。通过有效的路况评估、故障检测和未来路况预测,通过数据知情的决策来增强更全面的道路资产管理方法,可以显着增强维护计划,延长资产寿命。最近的技术创新,如Digital Twins,在道路状况预测和主动资产管理方面具有巨大的潜力。为此,机器学习技术在解决工程问题方面也表现出令人信服的能力。然而,在数字双胞胎的背景下,它们都没有被专门考虑过。因此,有必要审查和确定在道路数字孪生中使用机器学习技术的适当方法。本文对用于道路状况预测的机器学习算法进行了系统的文献综述,并讨论了道路数字孪生框架中的发现。结果表明,现有的机器学习方法在一定程度上适合和成熟地规定数字孪生发展的成功之路。此外,该综述在确定文献空白的同时,指出了道路数字孪生过程中需要考虑的一些因素和建议,并根据机器学习能力的综述总结提出了多个未来的研究方向。
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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CiteScore
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