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Application of Decision trees for the identification of weld central line in austenitic stainless steel weld joints

机译:决策树在奥氏体不锈钢焊缝焊接中心线识别中的应用

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Austenitic stainless steels (ASS) are preferred in chemicaland nuclear industries mainly due to their high corrosion resistance and unique high temperature creep properties. Austenitic stainless steel welding isan integral part of the Indian nuclear components and ultrasonic non-destructive testing technique (NDT) plays a major role in testing the integrity of the weld joints. The concept of manual ultrasonic testing (UT) of defects/flaws/discontinuities has now been replaced by computerization, automation and mechanization concepts. Remote ultrasonic NDT inspection assumes great dimension in the industrial system and in particular testing of pressure vessels made of several weld joints. Identification of weld centre line is very importantis very important in flaw evaluation in the weld jointsparticularly while carrying out remote ultrasonic testingof pressure vessels. Recently, successful attempts are being made in applying machine learning techniques for accurate flaw detection, sizing and location of weld joints. In this work, a 42 mm thick single “V” butt weld joint was fabricated and A-scan ultrasonic signals (time domain signals) were acquired at the weld centre and across the weld joint at the 5 mm distance interval and stored for further analysis using Decision tree algorithm. Critically refracted longitudinal (Lcr) wave probe at 2 MHz was used for this purpose. Decision tree algorithm which is an artificial Intelligence technique, classified under supervised machine learning algorithms, was used for training theacquired A-scan data and to reliably identify the centre line in the weld region for the purpose finding flaw location during remote ultrasonic testing. The developed procedure/ technique is first of its kind, simple to use and straight forward and useful for identifying the weld centre line and for accurate flaw location in the weld regions during ultrasonic testing of ASS weld joints.
机译:奥氏体不锈钢(ASS)在化学和核工业中是首选,主要是因为它们的高耐腐蚀性和独特的高温蠕变性能。奥氏体不锈钢焊接是印度核组件的组成部分,超声无损检测技术(NDT)在测试焊接接头的完整性方面起着重要作用。缺陷/缺陷/不连续性的手动超声测试(UT)的概念现已被计算机化,自动化和机械化的概念所取代。远程超声波NDT检查在工业系统中具有很大的尺寸,尤其是对由多个焊接接头制成的压力容器的测试。焊缝中心线的识别非常重要,尤其是在对压力容器进行远程超声波测试时,对焊缝的缺陷评估非常重要。近来,在将机器学习技术应用于准确的缺陷检测,焊缝的尺寸确定和定位方面进行了成功的尝试。在这项工作中,制造了一个42毫米厚的单个“ V”对接焊缝,并以5毫米的距离间隔在焊缝中心和整个焊缝处获取了A扫描超声信号(时域信号),并进行了存储以供进一步分析使用决策树算法。为此,使用了2 MHz的临界折射纵向(Lcr)波探头。决策树算法是一种人工智能技术,属于有监督的机器学习算法,用于训练获取的A扫描数据并可靠地识别焊接区域的中心线,以便在远程超声测试中发现缺陷位置。所开发的程序/技术是同类中的首例,易于使用且简单明了,可用于在ASS焊接接头的超声测试过程中识别焊缝中心线和准确确定焊缝区域中的缺陷位置。

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