基于深度学习和声发射的在役钢筋混凝土柱损伤定位与传感器布局优化。

IF 3.2 3区 材料科学 Q3 CHEMISTRY, PHYSICAL
Materials Pub Date : 2025-09-21 DOI:10.3390/ma18184406
Tao Liu, Aiping Yu, Zhengkang Li, Menghan Dong, Xuelian Deng, Tianjiao Miao
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引用次数: 0

摘要

钢筋混凝土柱作为工程结构的主要承重构件,定期进行健康评估对提高结构的使用寿命和整体性能至关重要。本文主要研究在役钢筋混凝土柱的健康检测问题。将深度学习算法与声发射技术相结合,定位了在役钢筋混凝土柱的声发射源,确定了用于在役钢筋混凝土柱健康监测的最佳传感器布局形式。结果表明,基于k-means聚类算法和投票选择概念的数据清洗方法可以显著提高数据质量。通过对比BP、RBF和支持向量回归模型的定位性能,发现BP模型的MAE比RBF和SVR模型分别降低了7.513 mm和6.326 mm, RMSE分别降低了9.225 mm和8.781 mm, R2分别提高了0.059和0.056。BP模型在役钢筋混凝土柱声发射源定位中取得了较好的效果。通过对不同传感器布置方案的比较,发现线性布置方案对浅层混凝土基体的损伤定位更有效,而线性-体积混合布置方案对深层混凝土基体的损伤定位更有效。线性-体积混合布置方案可以同时检测浅、深两层混凝土基体的损伤信号,对在役钢筋混凝土柱的健康监测具有一定的应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Damage Localization and Sensor Layout Optimization for In-Service Reinforced Concrete Columns Using Deep Learning and Acoustic Emission.

Damage Localization and Sensor Layout Optimization for In-Service Reinforced Concrete Columns Using Deep Learning and Acoustic Emission.

Damage Localization and Sensor Layout Optimization for In-Service Reinforced Concrete Columns Using Deep Learning and Acoustic Emission.

Damage Localization and Sensor Layout Optimization for In-Service Reinforced Concrete Columns Using Deep Learning and Acoustic Emission.

As the main load-bearing components of engineering structures, regular health assessment of reinforced concrete (RC) columns is crucial for improving the service life and overall performance of the structures. This study focuses on the health detection problem of in-service RC columns. By combining deep learning algorithms and acoustic emission (AE) technology, the AE sources of in-service RC columns are located, and the optimal sensor layout form for the health monitoring of in-service RC columns is determined. The results show that the data cleaning method based on the k-means clustering algorithm and the voting selection concept can significantly improve the data quality. By comparing the localization performance of the Back Propagation (BP), Radial Basis Function (RBF) and Support Vector Regression (SVR) models, it is found that compared with the RBF and SVR models, the MAE of the BP model is reduced by 7.513 mm and 6.326 mm, the RMSE is reduced by 9.225 mm and 8.781 mm, and the R2 is increased by 0.059 and 0.056, respectively. The BP model has achieved good results in AE source localization of in-service RC columns. By comparing different sensor layout schemes, it is found that the linear arrangement scheme is more effective for the damage location of shallow concrete matrix, while the hybrid linear-volumetric arrangement scheme is better for the damage location of deep concrete matrix. The hybrid linear-volumetric arrangement scheme can simultaneously detect damage signals from both shallow and deep concrete matrix, which has certain application value for the health monitoring of in-service RC columns.

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来源期刊
Materials
Materials MATERIALS SCIENCE, MULTIDISCIPLINARY-
CiteScore
5.80
自引率
14.70%
发文量
7753
审稿时长
1.2 months
期刊介绍: Materials (ISSN 1996-1944) is an open access journal of related scientific research and technology development. It publishes reviews, regular research papers (articles) and short communications. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. Therefore, there is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. Materials provides a forum for publishing papers which advance the in-depth understanding of the relationship between the structure, the properties or the functions of all kinds of materials. Chemical syntheses, chemical structures and mechanical, chemical, electronic, magnetic and optical properties and various applications will be considered.
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