Artificial intelligence in tunnel construction: A comprehensive review of hotspots and frontier topics

Lianbaichao Liu , Zhanping Song , Xu Li
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Abstract

Application of Artificial Intelligence (AI) in tunnel construction has the potential to transform the industry by improving efficiency, safety, and cost-effectiveness. This paper presents a comprehensive literature review and analysis of hotspots and frontier topics in artificial intelligence-related research in tunnel construction. A total of 554 articles published between 2011 and 2023 were collected from the Web of Science (WOS) core collection database and analyzed using CiteSpace software. The analysis identified three main study areas: Tunnel Boring Machine (TBM) performance, construction optimization, and rock and soil mechanics. The review highlights the advancements made in each area, focusing on design and operation, performance prediction models, and fault detection in TBM performance; computer vision and image processing, neural network algorithms, and optimization and decision-making in construction optimization; and geo-properties and behaviours, tunnel stability and excavation, and risk assessment and safety management in rock and soil mechanics. The paper concludes by discussing future research directions, emphasizing the integration of AI with other advanced technologies, real-time decision-making systems, and the management of environmental impacts in tunnel construction. This comprehensive review provides valuable insights into the current state of AI research in tunnel engineering and serves as a reference for future studies in this rapidly evolving field.

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隧道施工中的人工智能:热点与前沿课题综述
人工智能(AI)在隧道施工中的应用有可能通过提高效率、安全性和成本效益来改变隧道施工行业。本文对隧道施工中人工智能相关研究的热点和前沿课题进行了全面的文献综述和分析。本文从科学网(WOS)核心数据库中收集了 2011 年至 2023 年间发表的 554 篇文章,并使用 CiteSpace 软件进行了分析。分析确定了三个主要研究领域:隧道掘进机(TBM)性能、施工优化以及岩土力学。综述重点介绍了各个领域取得的进展,主要集中在隧道掘进机性能方面的设计和操作、性能预测模型和故障检测;施工优化方面的计算机视觉和图像处理、神经网络算法、优化和决策;岩土力学方面的地质特性和行为、隧道稳定性和开挖、风险评估和安全管理。论文最后讨论了未来的研究方向,强调了人工智能与其他先进技术的整合、实时决策系统以及隧道施工中的环境影响管理。这篇全面的综述为了解隧道工程领域人工智能研究的现状提供了宝贵的见解,也为这一快速发展领域的未来研究提供了参考。
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