Applications of Machine Learning in Mechanised Tunnel Construction: A Systematic Review

F. Shan, Xuzhen He, Haoding Xu, D. J. Armaghani, Daichao Sheng
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引用次数: 2

Abstract

Tunnel Boring Machines (TBMs) have become prevalent in tunnel construction due to their high efficiency and reliability. The proliferation of data obtained from site investigations and data acquisition systems provides an opportunity for the application of machine learning (ML) techniques. ML algorithms have been successfully applied in TBM tunnelling because they are particularly effective in capturing complex, non-linear relationships. This study focuses on commonly used ML techniques for TBM tunnelling, with a particular emphasis on data processing, algorithms, optimisation techniques, and evaluation metrics. The primary concerns in TBM applications are discussed, including predicting TBM performance, predicting surface settlement, and time series forecasting. This study reviews the current progress, identifies the challenges, and suggests future developments in the field of intelligent TBM tunnelling construction. This aims to contribute to the ongoing efforts in research and industry toward improving the safety, sustainability, and cost-effectiveness of underground excavation projects.
机器学习在机械化隧道施工中的应用:系统综述
隧道掘进机以其高效、可靠的特点在隧道施工中得到广泛应用。从现场调查和数据采集系统获得的数据的激增为机器学习(ML)技术的应用提供了机会。机器学习算法已经成功地应用于隧道掘进机掘进,因为它们在捕捉复杂的非线性关系方面特别有效。本研究侧重于TBM隧道掘进中常用的机器学习技术,特别强调数据处理、算法、优化技术和评估指标。讨论了TBM应用中的主要问题,包括TBM性能预测、地表沉降预测和时间序列预测。本研究回顾了智能隧道掘进机施工领域的现状,指出了面临的挑战,并提出了未来的发展方向。其目的是促进正在进行的研究和工业努力,以提高地下挖掘项目的安全性,可持续性和成本效益。
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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