Statistical Features and Traditional SA-SVM Classification Algorithm for Crack Detection

Q3 Computer Science
A. N. Hoshyar, S. Kharkovsky, B. Samali
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引用次数: 4

Abstract

In recent years, the interest in damage identification of structural components through innovative techniques has grown significantly. Damage identification has always been a crucial concern in quality assessment and load capacity rating of infrastructure. In this regard, researchers focus on proposing efficient tools to identify the damages in early stages to prevent the sudden failure in structural components, ensuring the public safety and reducing the asset management costs. The sensing technologies along with the data analysis through various techniques and machine learning approaches have been the area of interest for these innovative techniques. The purpose of this research is to develop a robust method for automatic condition assessment of real-life concrete structures for the detection of relatively small cracks at early stages. A damage identification algorithm is proposed using the hybrid approaches to analyze the sensors data. The data obtained from transducers mounted on concrete beams under static loading in laboratory. These data are used as the input parameters. The method relies only on the measured time responses. After filtering and normalization of the data, the damage sensitive statistical features are extracted from the signals and used as the inputs of Self-Advising Support Vector Machine (SA-SVM) for the classification purpose in civil Engineering area. Finally, the results are compared with traditional methods to investigate the feasibility of the hybrid proposed algorithm. It is demonstrated that the presented method can reliably detect the crack in the structure and thereby enable the real-time infrastructure health monitoring.
裂纹检测的统计特征与传统SA-SVM分类算法
近年来,通过创新技术对结构构件损伤识别的兴趣显著增长。损伤识别一直是基础设施质量评估和承载能力评定的关键问题。在这方面,研究人员致力于提出早期识别损伤的有效工具,以防止结构部件的突然失效,确保公共安全,降低资产管理成本。传感技术以及通过各种技术和机器学习方法进行的数据分析一直是这些创新技术感兴趣的领域。本研究的目的是开发一种鲁棒的方法,用于实际混凝土结构的自动状态评估,以便在早期阶段检测相对较小的裂缝。提出了一种利用混合方法对传感器数据进行损伤识别的算法。实验室静载下安装在混凝土梁上的传感器获得的数据。这些数据用作输入参数。该方法仅依赖于测量的时间响应。对数据进行滤波和归一化处理后,提取损伤敏感统计特征作为自建议支持向量机(SA-SVM)的输入,用于土木工程领域的分类。最后,将结果与传统方法进行了比较,验证了所提混合算法的可行性。结果表明,该方法能够可靠地检测出结构中的裂缝,从而实现对基础设施健康状况的实时监测。
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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来源期刊
CiteScore
3.20
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0.00%
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