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BIM, machine learning and computer vision techniques in underground construction: Current status and future perspectives

机译:地下建设中的BIM,机器学习和计算机视觉技术:当前状态和未来的观点

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The architecture, engineering and construction (AEC) industry is experiencing a technological revolution driven by booming digitisation and automation. Advances in research fields of information technology and computer science, such as building information modelling (BIM), machine learning and computer vision have attracted growing attention owing to their useful applications. At the same time, population-driven underground development has been accelerated with digital transformation as a strategic imperative. Urban underground infrastructures are valuable assets and thus demanding effective planning, construction and maintenance. While enabling greater visibility and reliability into the processes and subsystems of underground construction, applications of BIM, machine learning and computer vision in underground construction represent different sets of opportunities and challenges from their use in above-ground construction. Therefore, this paper aims to present the state-of-the-art development and future trends of BIM, machine learning, computer vision and their related technologies in facilitating the digital transition of tunnelling and underground construction. Section 1 presents the global demand for adopting these technologies. Section 2 introduces the related terminologies, standardisations and fundamentals. Section 3 reviews BIM in traditional and mechanised tunnelling and highlights the importance of integrating 3D geological modelling and geographic information system (GIS) databases with BIM. Section 4 examines the key applications of machine learning and computer vision at different stages of underground construction. Section 5 discusses the challenges and perspectives of existing research on leveraging these emerging technologies for escalating digitisation, automation and information integration throughout underground project lifecycle. Section 6 summarises the current state of development, identified gaps and future directions.
机译:建筑,工程和施工(AEC)行业正经历着由蓬勃发展的数字化和自动化驱动的技术革命。在信息技术和计算机科学的研究领域,如建筑信息模型(BIM),机器学习和计算机视觉的进步已经引起了越来越多的关注,由于其有用的应用程序。与此同时,人口被迫转入地下的发展已经加速与数字化转型的战略势在必行。城市地下基础设施是宝贵的资产,因此,要求有效的规划,建设和维护。同时实现更大的可视性和可靠性进的过程和地下建筑的子系统,BIM,机器学习和计算机视觉地下工程的应用代表,从他们的地上建筑用套不同的机遇和挑战。因此,本文旨在展示最先进的发展和未来的BIM,机器学习,计算机视觉及其相关技术的发展趋势,促进隧道和地下建设的数字过渡。第1节提出了采用这些技术的全球需求。第2节介绍了相关的术语,standardisations和基本面。第3条BIM在传统和机械化掘进和亮点集成三维地质建模和地理信息系统(GIS),数据库与BIM的重要性。第4分检的机器学习和计算机视觉的关键应用在地下工程的不同阶段。第5节讨论的挑战和利用这些新兴技术的不断升级整个地下工程生命周期数字化,自动化和信息集成现有研究的观点。第6节总结发展,确定的差距和未来方向的当前状态。

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