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WAVEFORM PATTERN RECOGNITION APPLIED TO RAPID DETECTION OF WALL-THINNING IN PIPES: A SIMULATION-BASED CASE STUDY

机译:波形模式识别在管壁稀疏快速检测中的应用:基于模拟的案例研究

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Pattern recognition using correlation analysis (Cij) method is useful for non-destructive testing of physical objects, including pipes. An evaluation of the technique based on Computer Simulation Technology (CST) models has demonstrated the advantages of using the technique to detect and classify pipe wall thinning (PWT) in pipes. Given enough increments, the technique can be refined to detect any possible combination of PWT attributes. For this research 71 different simulations were modeled for purposes of calibration of the system, based on five varied properties of the modeled PWT instances. These properties include: location (29 simulations based on distance from origin and two lengths of PWT, for a total of 58 simulations), width (standardized at 25.4mm), depth (four simulations as radius of PWT at 78.74mm, 81.28mm, 83.82mm, and 86.36mm), length (four simulations as percentage of circumference: 25%, 50%, 75% and 100% circumferential PWT) and type of defect (five simulations based on five discrete profiles). Microwaves were simulated from port 1 and port 2, with a sweeping frequency range (0.5 GHz bandwidth), analyzed as S_(11) and S_(21) for measuring and calibrating the response to the standards. The resulting waveforms became the standard patterns against which 11 unknown simulations were compared, sometimes using Sn waveforms for comparison, and at other times S21. The correlation analysis technique was able to distinguish parameters for the unknown test cases. The technique is able to determine the correlation between the resonance frequency peak (RFP) and waveform for an unknown case, and those of nearby calibration models, via pattern recognition. For example, 0.847 and 0.872 correlations to two standard patterns for an unknown RFP which appears midway between two standard RFPs, produces a peak for the unknown that is equidistant from the RFPs for the standards.
机译:使用相关分析(Cij)方法进行模式识别对于包括管道在内的物理对象的无损检测非常有用。对基于计算机仿真技术(CST)模型的技术的评估表明,使用该技术检测和分类管道中的管壁细化(PWT)的优势。给定足够的增量,可以完善该技术以检测PWT属性的任何可能组合。对于本研究,基于建模的PWT实例的五种不同属性,为系统校准的目的而对71种不同的模拟进行了建模。这些属性包括:位置(基于距原点的距离的29个模拟和两个PWT的长度,总共58个模拟),宽度(标准为25.4mm),深度(四个模拟为PWT的半径分别为78.74mm,81.28mm, 83.82mm和86.36mm),长度(四个模拟作为圆周百分比:25%,50%,75%和100%圆周PWT)和缺陷类型(五个模拟基于五个离散轮廓)。模拟了来自端口1和端口2的微波,其扫描频率范围(0.5 GHz带宽),分析为S_(11)和S_(21),用于测量和校准对标准的响应。生成的波形成为与11个未知模拟进行比较的标准模式,有时使用Sn波形进行比较,而在其他时间为S21。相关分析技术能够区分未知测试用例的参数。该技术能够通过模式识别来确定未知情况下的共振频率峰值(RFP)和波形与附近校准模型的共振频率峰值之间的相关性。例如,与一个未知RFP的两个标准模式相关的0.847和0.872相关性出现在两个标准RFP之间的中间,从而为该未知物产生一个与标准RFP等距的峰。

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