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Vibration-Based Damage Detection in Historical Adobe Structures: Laboratory and Field Applications

机译:历史Adobe结构中基于振动的损伤检测:实验室和现场应用

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摘要

Structural Health Monitoring (SHM) has demonstrated to be a fundamental tool for detecting damage in early stages in existent civil engineering structures. This paper explores the accuracy of vibration-based SHM for identifying the existence of damage in adobe constructions, a widespread structural system but on which limited experimental and numerical applications of the technique are available. Two damage detection methodologies are investigated: (i) Autoregressive Models to predict the structural dynamic response taking into account the environmental parameters as input; and (ii) Principal Component Analysis to detect patterns and anomalies in this response without the need of information about environmental conditions. The results of the laboratory tests on a real scale adobe wall positively indicate the capabilities of these two methodologies to accurately identify damage. They also evidence the importance of monitoring several modes as their sensitivity to damage depends on damage location itself. Furthermore, the application of these two damage detection methodologies in a real case study related to the long-term monitoring of a 16(th) Century adobe church allowed confirming the building safe condition during almost two years of monitoring period, as well as the absence of damage after a 5.2Mw earthquake.
机译:结构健康监测(SHM)已经证明是一种用于检测存在的土木工程结构中早期阶段损坏的基本工具。本文探讨了基于振动的SHM的准确性,用于识别Adobe结构损坏的存在,广泛的结构系统,但是该技术的有限实验和数值应用。调查了两种损伤检测方法:(i)自回归模型,以预测考虑到输入的环境参数的结构动态响应; (ii)主成分分析,以检测这种反应中的模式和异常,而无需有关环境条件的信息。实验室测试的结果在真正的Adobe壁上积极地表明这两种方法的能力,以准确识别损坏。他们还证明了监测若干模式的重要性,因为它们对损坏的敏感性取决于损坏位置本身。此外,在一个真正的案例研究中应用这两种损伤检测方法与第16(世纪的Adobe Church的长期监测有关,允许在近两年的监测期间以及缺席期间确认建筑物安全状况。 5.2MW地震后损坏。

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