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Defect detection in concrete plates with impulse-response test and statistical pattern recognition

机译:脉冲响应试验和统计模式识别混凝土板中的缺陷检测

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Statistical and machine learning analysis of structural health monitoring data is a popular approach for efficient structural level defect detection. However, the application of these techniques to stress-wave methods such as impact-echo and impulse-response data for local level detection has been limited. In this research, statistical pattern recognition in conjunction with the impulse-response test is shown to provide an efficient means for the detection of defects in concrete plates. For this purpose, the Frequency Response Function (FRF) derived from the impulse-response test following ASTM C1740 protocols at specific points on the test plate to define the feature space matrix. Analytical results demonstrate that the variability of the FRF increases in the presence of defects, which forms the physical basis for the proposed pattern recognition algorithm. First, Principal Component Analysis (PCA) is performed on the covariance of the feature space matrix to identify the dominant features of the FRFs and to determine the number of statistically significant factors or principal components. Factor scores are next used to identify locations on the plate that are associated most closely to each pattern. The generalized Extreme Value Studentized (ESD) test and box and whisker plots are applied to the factor score vector of all the test points to objectively identify test points with defects and rank these based on their severity. Two experimental specimens are used to demonstrate the applicability of the proposed detection algorithm. The first specimen, a partially reinforced clamped concrete plate, is used to demonstrate the relationship between the shapes and variability of the FRFs and the severity of defects (delaminations), the efficacy of the factor score as damage sensitive feature, and identification and the ranking of the severity of defects by using outlier statistical tests. The second specimen is used to demonstrate the efficiency of the procedure for detecting both void and honeycomb defects in a larger reinforced concrete plate on elastic supports. The proposed procedure is shown to provide similar levels of detectability as the highly refined yet time consuming ultrasonic shear-wave tomography test. While the impulse-response test has been in use for the condition assessment of concrete elements other than drilled shaft piles since 1980's, defect detection has been based primarily on empirical observations and correlations with limited features of the frequency response function. The use of pattern recognition techniques to the full range of the frequency response function is proposed and shown to greatly improve the detection and characterization of defects.
机译:结构健康监测数据的统计和机器学习分析是一种流行的有效结构水平缺陷检测方法。然而,这些技术在诸如局部层次检测的冲击回波和脉冲响应数据的应力波方法中的应用已经受到限制。在该研究中,示出了结合脉冲响应试验的统计模式识别,以提供用于检测混凝土板中的缺陷的有效手段。为此目的,频率响应函数(FRF)从测试板上的特定点处的ASTM C1740协议之后的脉冲响应测试衍生,以定义特征空间矩阵。分析结果表明FRF的可变性在存在缺陷的存在下增加,这形成了所提出的模式识别算法的物理基础。首先,对特征空间矩阵的协方差执行主成分分析(PCA),以识别FRF的主导特征,并确定统计上有意义的因素或主组件的数量。接下来是因子分数用于识别与每个模式最密切相关的板上的位置。学生化(ESD)测试和盒子和晶须图的广义极值应用于所有测试点的因子分数矢量,以客观地识别具有缺陷的测试点,并基于其严重程度对这些进行排名。两种实验标本用于证明所提出的检测算法的适用性。第一样品,一个部分加强夹紧混凝土板,用于展示FRF的形状和变异性与缺陷(分层)的严重程度,因子评分的功效作为损伤敏感特征,以及识别和排名使用异常值统计测试,缺陷的严重程度。第二标本用于证明在弹性支撑件上的较大钢筋混凝土板上检测空隙和蜂窝缺陷的过程的效率。所提出的程序显示为高度精制又耗时的超声剪切波断层摄影测试提供类似的可检测性水平。虽然自1980年代以来,脉冲响应试验已用于除了钻轴桩之外的混凝土元件的条件评估,但缺陷检测主要基于经验观察和与频率响应功能的有限特征的相关性。提出了使用模式识别技术到全范围的频率响应函数,并显示出大大改善缺陷的检测和表征。

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