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Detection of tube defect using the autoregressive algorithm

机译:使用自回归算法检测管缺陷

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Easy detection and evaluation of defect in the tube structure is a continuous problem and remains a significant demand in tube inspection technologies. This study is aimed to automate defect detection using the pattern recognition approach based on the classification of high frequency stress wave signals. The stress wave signals from vibrational impact excitation on several tube conditions were captured to identify the defect in ASTM A179 seamless steel tubes. The variation in stress wave propagation was captured by a high frequency sensor. Stress wave signals from four tubes with artificial defects of different depths and one reference tube were classified using the autoregressive (AR) algorithm. The results were demonstrated using a dendrogram. The preliminary research revealed the natural arrangement of stress wave signals were grouped into two clusters. The stress wave signals from the healthy tube were grouped together in one cluster and the signals from the defective tubes were classified in another cluster. This approach was effective in separating different stress wave signals and allowed quicker and easier defect identification and interpretation in steel tubes.
机译:易于检测和评估管结构中的缺陷是一个持续的问题,并且仍然是对管检测技术的重大需求。这项研究旨在使用基于高频应力波信号分类的模式识别方法自动进行缺陷检测。捕获了在几种管子条件下来自振动冲击激励的应力波信号,以识别ASTM A179无缝钢管中的缺陷。应力波传播的变化由高频传感器捕获。使用自回归(AR)算法对来自具有不同深度的人工缺陷的四根管和一根参考管的应力波信号进行分类。结果用树状图证明。初步研究表明,应力波信号的自然排列被分为两个簇。来自健康管的应力波信号被分组为一个簇,来自有缺陷管的信号被分类为另一簇。这种方法有效地分离了不同的应力波信号,并允许更快,更轻松地识别和解释钢管中的缺陷。

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