振动信号相关系数和机器学习算法用于移动荷载下梁的结构损伤评估

Toan Pham Bao, Vien Le-Ngoc
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引用次数: 0

摘要

本文提出了一种新方法,通过实验研究,利用加速度信号评估暴露在移动载荷下的梁的结构损伤。在这项研究中,梁的两端都有支撑,并评估其对移动荷载的动态响应。使用随机递减技术对原始信号进行了改进。从不同位置进行测量并计算它们之间的相关系数,然后利用这些相关系数作为评估结构的特征。为了创建一个可靠且有潜力的框架来有效预测损坏情况,这些特征被用作机器学习模型的输入变量。所提出的方法在准确辨别和预测梁结构损伤方面取得了可喜的成果。通过对从加速度信号中提取的统计特征进行机器学习训练,该方法对结构完整性的细微变化具有很高的精确度。通过这项研究,采用机器学习技术可以使检测结构损坏的方法更加可靠和高效。此外,在动态环境中运行的结构也能从所提出的方法中受益匪浅。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Correlation coefficients of vibration signals and machine learning algorithm for structural damage assessment in beams under moving load
This paper presents a novel method of assessing structural damage in beams exposed to moving loads via acceleration signals through experimental studies. In this study, beams are supported on both ends, and their dynamic response to moving loads is assessed. The raw signal has been improved using a random decrement technique. Take measurements from different locations and calculate correlation coefficients between them, then use these as features to evaluate the structure. In order to create a reliable and potential framework for predicting damage efficiently, these features are used as input variables to the machine learning model. The proposed methodology exhibits promising results in accurately discerning and predicting damage in beam structure. It demonstrates a high level of precision to subtle changes in structural integrity when trained by machine learning on the statistical feature extracted from acceleration signals. As a result of this research, methods for detecting structural damage can be made more reliable and efficient by employing machine learning techniques. Additionally, structures operating in dynamic environments can benefit significantly from the proposed methodology.
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