求解逆问题评估无损检测系统可靠性的统计模型

A. Alexandrov, S. Borisov, L. Bunina, S. Bikovsky, I. V. Stepanova, A. P. Titov
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A binomial model for assessing the reliability of monitoring, comprising the Berens-Hovey parametric model of the probability of detection of defects and a parametric model based on studying test samples, was analyzed. As an alternative to this binomial model, a computational method for assessing the reliability of non-destructive testing systems by solving an inverse problem was proposed. To determine the parameters of the defect detection probability curve, the model uses data obtained by various monitoring teams over a long period of power plant operation. To serve as initial data, the defect distribution density over one or more of the following characteristics can be used: depth, length, and/or cross-sectional area of the defect. Using the proposed mathematical model, a series of test calculations was performed based on nine combinations of initial data. 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摘要

目标。电厂特别是核电站管道金属结构构件的磨损监测是保证其安全运行的重要手段。通过直接检查来监测管道的状态需要相当多的人工,在某些情况下,还需要暂停发电厂的运行。为了降低监测措施中的成本,提出了采用数学建模的方法。本工作旨在建立一个诊断系统的数学模型,通过求解逆问题来评估缺陷检测的概率。分析了一种用于监测可靠性评估的二项模型,该模型包括缺陷发现概率的Berens-Hovey参数模型和基于测试样本研究的参数模型。作为该二项模型的替代方案,提出了一种通过求解逆问题来评估无损检测系统可靠性的计算方法。为了确定缺陷检测概率曲线的参数,该模型使用了各个监测小组在电厂长时间运行中获得的数据。作为初始数据,可以使用以下一个或多个特征上的缺陷分布密度:深度、长度和/或缺陷的横截面积。利用提出的数学模型,对初始数据的9种组合进行了一系列的试验计算。两种组合在初始监测系统的置信度系数、缺陷分布参数和监测系统的灵敏度上存在差异。利用计算数据构建检测缺陷概率密度与缺陷尺寸的函数曲线,恢复各种试验条件下缺陷分布参数的值,并估计恢复参数的误差。利用某一监测系统对缺陷的检测概率曲线来估计系统的缺陷程度。在数据样本量的限制下,拟议的方法使金属监测结果的应用比目前使用的方法更有信心,同时评价个别测试小组或实验室进行监测的效率。在将来,这可以用来形成建议某个特定团队参与执行诊断工作的基础。
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Statistical model for assessing the reliability of non-destructive testing systems by solving inverse problems
Objectives. The wear monitoring of metal structural elements of power plants—in particular, pipelines of nuclear power plants—is an essential means of ensuring safety during their operation. Monitoring the state of the pipeline by direct inspection requires a considerable amount of labor, as well as, in some cases, the suspension of power plant operation. In order to reduce costs during monitoring measures, it is proposed to use mathematical modeling. This work aimes to develop a mathematical model of a diagnostic system for assessing the probability of detection of defects by solving inverse problems.Methods. A binomial model for assessing the reliability of monitoring, comprising the Berens-Hovey parametric model of the probability of detection of defects and a parametric model based on studying test samples, was analyzed. As an alternative to this binomial model, a computational method for assessing the reliability of non-destructive testing systems by solving an inverse problem was proposed. To determine the parameters of the defect detection probability curve, the model uses data obtained by various monitoring teams over a long period of power plant operation. To serve as initial data, the defect distribution density over one or more of the following characteristics can be used: depth, length, and/or cross-sectional area of the defect. Using the proposed mathematical model, a series of test calculations was performed based on nine combinations of initial data. The combinations differed in the confidence coefficient of the initial monitoring system, the parameters of the distribution of defects, and the sensitivity of the monitoring system.Results. The calculation data were used to construct curves of the probability density of detected defects as a function of the defect size, recover the values of the defect distribution parameters under various test conditions, and estimate the error of recovering the parameters. The degree of imperfection of the system was estimated using the curve of the detection probability of a defect by a certain monitoring system.Conclusions. Under constraints on the data sample size, the proposed methodology allows the metal monitoring results to be applied with greater confidence than currently used methods at the same time as evaluating the efficiency of monitoring carried out by individual test teams or laboratories. In future, this can be used to form the basis of a recommendation of the involvement of a particular team to perform diagnostic work.
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