Machine Learning in tunnelling – Capabilities and challenges

T. Marcher, G. H. Erharter, Manuel M. Winkler
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引用次数: 22

Abstract

Digitalization will change the way of gathering geological data, methods of rock classification, application of design analyses in the field of tunnelling as well as tunnel construction and maintenance processes. In recent years, a rapid increase in the successful application of digital techniques (Building Information Modelling and Machine Learning (ML)) for a variety of challenging tasks has been observed. Driven by the increasing overall amount of data combined with the easy availability of more computing power, a sharp increase in the successful deployment of techniques of ML has been seen for different tasks. ML has been introduced in many sciences and technologies and it has finally arrived in the fields of geotechnical engineering, tunnelling and engineering geology, although still not as far developed as in other disciplines. This paper focuses on the potential of ML methods for geotechnical purposes in general and tunnelling in particular. Applications such as automatic rock mass behaviour classification using data from tunnel boring machines (TBM), updating of the geological prognosis ahead of the tunnel face, data driven interpretation of 3D displacement data or fully automatic tunnel inspection will be discussed.
隧道掘进中的机器学习——能力和挑战
数字化将改变地质数据的收集方式、岩石分类方法、设计分析在隧道掘进领域的应用以及隧道的建设和维护过程。近年来,人们观察到数字技术(建筑信息模型和机器学习)在各种具有挑战性任务中的成功应用迅速增加。在不断增长的数据总量和更强大的计算能力的驱动下,在不同的任务中,机器学习技术的成功部署急剧增加。ML已经被引入到许多科学和技术中,它最终到达了岩土工程、隧道和工程地质领域,尽管它还没有像其他学科那样发展。本文主要关注机器学习方法在岩土工程方面的潜力,特别是在隧道掘进方面。将讨论利用隧道掘进机(TBM)数据进行自动岩体行为分类、更新隧道工作面前的地质预测、数据驱动的三维位移数据解释或全自动隧道检测等应用。
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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