Deep machine learning in bridge structures durability analysis

Karolina Tomaszkiewicz, T. Owerko
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Abstract

According to Eurocode 0 structural durability is next to ultimate and serviceability one of the basic criteria in the structural design process. This article discusses the subject of concrete cracks observation in bridge structures, as one of the factors determining their durability. The durability of bridge structures is important due to both social, economic aspects and also the defense aspects of countries. Cracking of the reinforced concrete structures is a natural effect in concrete. The aim in the design and construction of structures is not to prevent the formation of cracks, but to limit their width to acceptable values. At the same time, there is a need for structure tests that allow for non-contact, fast measurements and algorithms that allow for efficient analysis of large amounts of measurement data. Deep machine learning algorithms can be used here. They can be used to analyse data which are acquired by means of photogrammetric methods (especially helpful during construction to inventory concealed works). Moreover, they can also be applied to standard data acquisition methods, consisting in photographing objects damage during works acceptance or periodic inspections. This paper discusses the application of deep machine learning to assess the condition of bridge structures based on photographs of object damage. The use of this method makes it possible to observe the rate and extent of damage development. Consequently, this method makes it possible to predict the development of damage in time and space in order to prevent failures and take structures out of service.
深度机器学习在桥梁结构耐久性分析中的应用
根据欧洲规范0,结构耐久性是结构设计过程中仅次于极限和使用能力的基本标准之一。本文讨论了桥梁结构中混凝土裂缝的观测问题,这是决定桥梁耐久性的因素之一。桥梁结构的耐久性对国家的社会、经济和国防都很重要。钢筋混凝土结构的开裂是混凝土的自然现象。结构设计和施工的目的不是防止裂缝的形成,而是将裂缝的宽度限制在可接受的范围内。与此同时,还需要进行结构测试,以便进行非接触、快速测量和算法,以便对大量测量数据进行有效分析。这里可以使用深度机器学习算法。它们可用于分析通过摄影测量方法获得的数据(特别有助于在施工期间清点隐蔽工程)。此外,它们也可以应用于标准的数据采集方法,包括在工程验收或定期检查期间拍摄物体损坏。本文讨论了基于物体损伤照片的深度机器学习在桥梁结构状态评估中的应用。使用这种方法可以观察损伤发展的速度和程度。因此,该方法可以在时间和空间上预测损伤的发展,以防止故障和使结构停止使用。
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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