AI-powered inspections of facades in reinforced concrete buildings

M. De Filippo, Sasan Asadiabadi, J. Kuang, D. Mishra, Harris Sun
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Abstract

Worldwide there are plenty of aged Reinforced Concrete (RC) buildings in need of thorough inspections. Cracks, delamination, stains, leakages, debonding and moisture ingressions are common defects found in RC structures. Such problems are typically diagnosed through qualitative assessment of visual and thermal photographs (data) by certified inspectors. However, qualitative inspections are very tedious, time-consuming and costly. This paper presents an alternative novel approach to drastically increase efficiency by decreasing the data collection and analysis time. Data collection for the inspection of facades is undertaken with Unmanned Aerial Vehicles (UAVs) either through an autonomous pre-programmed flight or through a human-piloted flight. Data analysis is performed by implementing up-to-date AI-powered algorithms to automatically detect defects on visual and thermal photographs. All the recognised defects and thermal anomalies are labelled on the building facade for comprehensive evaluation of the asset. This paper reports that the implementation of AIpowered inspections can save up to 67% of the time spent and 52% of the cost in comparison to the most commonly adopted practice in the industry with an average accuracy of 90.5% and 82% for detection of visual defects and thermal anomalies, respectively.
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人工智能对钢筋混凝土建筑立面的检查
世界各地有大量老化的钢筋混凝土(RC)建筑需要彻底检查。裂缝、分层、污渍、渗漏、脱胶和水分侵入是钢筋混凝土结构中常见的缺陷。此类问题通常通过认证检查员对视觉和热照片(数据)进行定性评估来诊断。然而,定性检查非常繁琐、耗时且成本高昂。本文提出了一种替代的新方法,通过减少数据收集和分析时间来大幅提高效率。无人机(UAV)通过自主预编程飞行或人工驾驶飞行进行外墙检查的数据收集。数据分析通过实施最新的人工智能算法来自动检测视觉和热照片上的缺陷。所有已识别的缺陷和热异常都在建筑立面上贴上标签,用于对资产进行综合评估。本文报告称,与行业中最常用的做法相比,实施人工智能检测可以节省高达67%的时间和52%的成本,视觉缺陷和热异常检测的平均准确率分别为90.5%和82%。
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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来源期刊
Transactions Hong Kong Institution of Engineers
Transactions Hong Kong Institution of Engineers Engineering-Engineering (all)
CiteScore
2.70
自引率
0.00%
发文量
22
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