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首页> 外文期刊>Latin American Journal of Solids and Structures >An SHM approach using machine learning and statistical indicators extracted from raw dynamic measurements
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An SHM approach using machine learning and statistical indicators extracted from raw dynamic measurements

机译:使用机器学习和从原始动态测量中提取的统计指标的SHM方法

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Abstract Structural Health Monitoring using raw dynamic measurements is the subject of several studies aimed at identifying structural modifications or, more specifically, focused on damage assessment. Traditional damage detection methods associate structural modal deviations to damage. Nevertheless, the process used to determine modal characteristics can influence the results of such methods, which could lead to additional uncertainties. Thus, techniques combining machine learning and statistical analysis applied directly to raw measurements are being discussed in recent researches. The purpose of this paper is to investigate statistical indicators, little explored in damage identification methods, to characterize acceleration measurements directly in the time domain. Hence, the present work compares two machine learning algorithms to identify structural changes using statistics obtained from raw dynamic data. The algorithms are based on Artificial Neural Networks and Support Vector Machines. They are initially evaluated through numerical simulations using a simply supported beam model. Then, they are assessed through experimental tests performed on a laboratory beam structure and an actual railway bridge, in France. For all cases, different damage scenarios were considered. The obtained results encourage the development of computational tools using statistical indicators of acceleration measurements for structural alteration assessment.
机译:摘要使用原始动态测量进行结构健康监测是旨在确定结构修改或更具体地针对损伤评估的几项研究的主题。传统的损坏检测方法将结构模态偏差与损坏相关联。但是,用于确定模态特征的过程可能会影响此类方法的结果,这可能会导致其他不确定性。因此,在最近的研究中正在讨论将机器学习和统计分析直接结合到原始测量的技术。本文的目的是研究在损伤识别方法中很少探索的统计指标,以直接在时域中表征加速度测量。因此,本工作比较了两种机器学习算法,以使用从原始动态数据获得的统计信息来识别结构变化。该算法基于人工神经网络和支持向量机。首先使用简单支持的梁模型通过数值模拟对它们进行评估。然后,通过在法国的实验室横梁结构和实际铁路桥梁上进行的实验测试对它们进行评估。对于所有情况,都考虑了不同的损坏情况。获得的结果鼓励使用加速度测量的统计指标进行结构变更评估的计算工具的开发。

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