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Improving the Reliability of Automated Non-Destructive Inspection

机译:提高自动化非破坏性检查的可靠性

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In automated NDE a region of an inspected component is often interrogated several times, be it within a single data channel, across multiple channels or over the course of repeated inspections. The systematic combination of these diverse readings is recognized to provide a means to improve the reliability of the inspection, for example by enabling noise suppression. Specifically, such data fusion makes it possible to declare regions of the component defect-free to a very high probability whilst readily identifying indications. Registration, aligning input datasets to a common coordinate system, is a critical pre-computation before meaningful data fusion takes place. A novel scheme based on a multi-objective optimization is described. The developed data fusion framework, that is able to identify and rate possible indications in the dataset probabilistically, based on local data statistics, is outlined. The process is demonstrated on large data sets from the industrial ultrasonic testing of aerospace turbine disks, with major improvements in the probability of detection and probability of false call being obtained.
机译:在自动化的NDE被检查部件的区域通常询问几次,无论是单个数据信道内,在多个信道或在重复检查的过程。认识到这些各种读数的系统组合,以提供提高检查可靠性的方法,例如通过实现噪声抑制。具体地,这种数据融合使得可以在容易识别指示时,可以将组件的区域宣布无缺陷到非常高的概率。注册,将输入数据集对齐至公共坐标系,是在有意义的数据融合之前的关键预算。描述了一种基于多目标优化的新方案。概述了开发的数据融合框架,即能​​够根据本地数据统计数据识别和衡量数据集可能的可能指示。从航空航天汽轮机盘的工业超声波检测的大数据集上证明了该过程,具有对所获得的检测概率和概率的主要改进。

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