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Artificial intelligence in the AEC industry: Scientometric analysis and visualization of research activities

机译:AEC行业中的人工智能:科学计量分析和研究活动的可视化

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摘要

The Architecture, Engineering and Construction (AEC) industry is fraught with complex and difficult problems. Artificial intelligence (AI) represents a powerful tool to assist in addressing these problems. Therefore, over the years, researchers have been conducting research on AI in the AEC industry (Al-in-the-AECI). In this paper, the first comprehensive scientometric study appraising the state-of-the-art of research on Al-in-the-AECI is presented. The science mapping method was used to systematically and quantitatively analyze 41,827 related bibliographic records retrieved from Scopus. The results indicated that genetic algorithms, neural networks, fuzzy logic, fuzzy sets, and machine learning have been the most widely used AI methods in AEC. Optimization, simulation, uncertainty, project management, and bridges have been the most commonly addressed topics/issues using AI methods/concepts. The primary value and uniqueness of this study lies in it being the first in providing an up-to-date inclusive, big picture of the literature on Al-in-the-AECI. This study adds value to the AEC literature through visualizing and understanding trends and patterns, identifying main research interests, journals, institutions, and countries, and how these are linked within now-available studies on Al-in-the-AECI. The findings bring to light the deficiencies in the current research and provide paths for future research, where they indicated that future research opportunities lie in applying robotic automation and convolutional neural networks to AEC problems. For the world of practice, the study offers a readily-available point of reference for practitioners, policy makers, and research and development (R&D) bodies. This study therefore raises the level of awareness of AI and facilitates building the intellectual wealth of the AI area in the AEC industry.
机译:建筑,工程和建筑(AEC)行业充满着复杂而棘手的问题。人工智能(AI)代表了解决这些问题的强大工具。因此,多年来,研究人员一直在AEC行业(Al-in-the-AECI)中进行AI研究。在本文中,提出了第一个全面的科学计量研究,以评估Al-in-the-AECI研究的最新水平。科学制图方法用于系统和定量地分析从Scopus检索到的41,827条相关书目记录。结果表明,遗传算法,神经网络,模糊逻辑,模糊集和机器学习已成为AEC中使用最广泛的AI方法。优化,仿真,不确定性,项目管理和桥梁已成为使用AI方法/概念的最常见解决的主题/问题。这项研究的主要价值和独特之处在于,它是首次提供有关Al-in-the-AECI文献的最新的,具有包容性的全景图。这项研究通过可视化和了解趋势和模式,确定主要的研究兴趣,期刊,机构和国家,以及在现有的Al-in-the-AECI研究中如何将它们联系起来,从而为AEC文献增加了价值。这些发现揭示了当前研究的不足,并为未来的研究提供了途径,他们指出未来的研究机会在于将机器人自动化和卷积神经网络应用于AEC问题。对于实践世界而言,该研究为从业者,政策制定者和研究与开发(R&D)机构提供了容易获得的参考点。因此,本研究提高了对AI的认识水平,并有助于在AEC行业中建立AI领域的知识财富。

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