Deep learning models for analysis of non-destructive evaluation data to evaluate reinforced concrete bridge decks: A survey

IF 1.8 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Dayakar Naik Lavadiya, Sattar Dorafshan
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Abstract

Application of deep learning (DL) for automatic condition assessment of bridge decks has been on the raise in the last few years. From the published literature, it is evident that lot of research efforts has been done in identifying the surface defects such as cracks, potholes, spalling and so forth using supervised learning methods such as deep learning. However, the health of a reinforced concrete bridge deck is jeopardized substantially due to presence of subsurface defects. Subsurface defects in bridge decks are genearlly detected using non-destructive evaluation (NDE) methods. Interpertation of NDE data for autonomous deck evaluation requires development of DL models; however, The task of defect detection DL has not received the proper attention for subsurface defect detection in the past. The goal of this paper is to provide a review of existing DL models for analysis of NDE data of bridge decks. The authors reviewed prominent NDE techniques for subsurface defect detection of bridge decks and explored the various DL models proposed to identify these defects. First a brief overview of the working principle of NDE techniques and DL architectures is provided, and then the information about proposed DL models and their efficacy is highlighted. Based on the existing knowledge gaps, various challenges and future prospects associated with application of DL in bridge subsurface inspection are discussed.

Abstract Image

用于分析钢筋混凝土桥面无损评估数据的深度学习模型:综述
近年来,深度学习技术在桥面状态自动评估中的应用越来越多。从已发表的文献中可以明显看出,在使用深度学习等监督学习方法识别裂纹、凹坑、剥落等表面缺陷方面已经做了大量的研究工作。然而,由于地下缺陷的存在,严重危害了钢筋混凝土桥面的健康。桥面下表面缺陷的检测一般采用无损检测方法。用于自主甲板评估的NDE数据的解释需要开发DL模型;然而,缺陷检测的任务一直没有得到应有的重视,在过去的亚表面缺陷检测。本文的目的是对现有的用于桥面无损检测数据分析的深度分解模型进行综述。作者回顾了桥面下表面缺陷检测的主要NDE技术,并探讨了用于识别这些缺陷的各种DL模型。首先简要概述了NDE技术和深度学习体系结构的工作原理,然后重点介绍了所提出的深度学习模型及其有效性。在现有知识空白的基础上,讨论了深度学习在桥梁地下检测中应用的各种挑战和未来前景。
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来源期刊
CiteScore
5.10
自引率
0.00%
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0
审稿时长
19 weeks
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