首页> 外国专利> RESIDUAL AVERAGE THICKNESS ESTIMATION METHOD BASED ON ESTIMATION OF AVERAGE CORROSION DEPTH IN GROUND-LEVEL CORROSION IMPAIRMENT PART

RESIDUAL AVERAGE THICKNESS ESTIMATION METHOD BASED ON ESTIMATION OF AVERAGE CORROSION DEPTH IN GROUND-LEVEL CORROSION IMPAIRMENT PART

机译:基于平均腐蚀深度的地基腐蚀损伤部位平均残余厚度估算方法

摘要

PROBLEM TO BE SOLVED: To efficiently estimate residual average thickness by easily implementing measurement without removing swelling coating or caulking.;SOLUTION: A flaw detection waveform is computed from vortex flaw detection data measured in a nondestructive manner by scanning a ground-level portion of a steel material on the ground in a direction orthogonal to a direction of extension by means of a vortex flaw detection sensor. A stochastic density function approximate to the flaw detection waveform is computed by nonlinear regression analysis using a Gaussian function. The stochastic density function of standard regular distribution is compared with the Gaussian function to estimate parameters for a maximum voltage amplitude of the Gaussian function, standard deviation of voltage amplitudes, a position of the maximum amplitude and an initial value of amplitudes. While assuming accumulation of the stochastic density function as a defect sectional area, conversion is performed for modeling the defect sectional area from a stochastic density curve of the stochastic density function. A virtual corrosion width obtained from the formed model is calculated on the basis of the standard deviation of voltage amplitudes, and average corrosion depth is estimated from the corrected virtual corrosion width and the defect sectional area.;COPYRIGHT: (C)2015,JPO&INPIT
机译:解决的问题:通过轻松执行测量而不会消除溶胀涂层或填隙来有效地估计残留平均厚度;解决方案:通过以非破坏性方式测量的涡流探伤数据,通过扫描工件的地面部分来计算探伤波形借助涡流探伤传感器,在垂直于延伸方向的方向上将钢材铺在地面上。通过使用高斯函数的非线性回归分析来计算近似于探伤波形的随机密度函数。将标准正态分布的随机密度函数与高斯函数进行比较,以估计高斯函数的最大电压幅度,电压幅度的标准偏差,最大幅度的位置和幅度的初始值的参数。在假定随机密度函数的累积为缺陷截面积的同时,进行转换以根据随机密度函数的随机密度曲线对缺陷截面积进行建模。根据电压幅值的标准偏差计算从形成的模型获得的虚拟腐蚀宽度,并从校正后的虚拟腐蚀宽度和缺陷截面积估算平均腐蚀深度。;版权所有:(C)2015,JPO&INPIT

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