利用机器学习算法整合多种无损评估技术的数据,加强对混凝土桥面的评估

Signals Pub Date : 2023-12-04 DOI:10.3390/signals4040046
Mustafa Khudhair, N. Gucunski
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引用次数: 0

摘要

影响混凝土桥面耐久性的因素包括交通荷载、疲劳、温度变化、环境应力和维护活动。及早发现腐蚀、分层或混凝土退化等问题可以降低维护成本。无损评估(NDE)技术可以在早期发现这些问题。同时,每种NDE方法都有降低评估准确性的局限性。在这项研究中,将多种无损检测技术与机器学习算法相结合,以改进对半电池电位(HCP)和电阻率(ER)测量结果的解释。通过参数化研究,分析了饱和度、腐蚀长度、分层深度、混凝土覆盖层、分层含水率等5个参数对HCP和ER测量的影响。结果通过有限元模拟得到,并用于构建基于随机森林方法的分类算法和回归算法两种机器学习算法。使用从BEAST®设施的桥面收集的数据对算法进行了测试。两种机器学习算法都可以有效地利用多种濒死体验技术的数据来改善对ER和HCP测量结果的解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating Data from Multiple Nondestructive Evaluation Technologies Using Machine Learning Algorithms for the Enhanced Assessment of a Concrete Bridge Deck
Several factors impact the durability of concrete bridge decks, including traffic loads, fatigue, temperature changes, environmental stress, and maintenance activities. Detecting problems such as corrosion, delamination, or concrete degradation early on can lower maintenance costs. Nondestructive evaluation (NDE) techniques can detect these issues at early stages. Each NDE method, meanwhile, has limitations that reduce the accuracy of the assessment. In this study, multiple NDE technologies were combined with machine learning algorithms to improve the interpretation of half-cell potential (HCP) and electrical resistivity (ER) measurements. A parametric study was performed to analyze the influence of five parameters on HCP and ER measurements, such as the degree of saturation, corrosion length, delamination depth, concrete cover, and moisture condition of delamination. The results were obtained through finite element simulations and used to build two machine learning algorithms, a classification algorithm and a regression algorithm, based on Random Forest methodology. The algorithms were tested using data collected from a bridge deck in the BEAST® facility. Both machine learning algorithms were effective in improving the interpretation of the ER and HCP measurements using data from multiple NDE technologies.
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来源期刊
CiteScore
3.20
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