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Use of higher order statistics for enhancing magnetic flux leakage pipeline inspection data

机译:使用高阶统计量来增强漏磁管道检查数据

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Magnetic flux leakage (MFL) is one of the most commonly used techniques for the non-destructive evaluation of gas transmission pipelines. A major segment of this network employs seamless pipes. The data obtained from MFL inspection of seamless pipes is contaminated by various sources of noise, including the characteristic seamless pipe noise, lift-off variation of MFL sensor due to motion of the pipe and system noise due to on-board electronics, which can considerably reduce the detectability of defect signals. This paper presents a new technique to filter the correlated seamless pipe noise (SPN) and identify the defect regions in the MFL data, thereby reducing the data to be analyzed. The proposed filtering algorithm is based on higher order statistics (skewness and kurtosis), of the MFL data and is shown to be more robust than traditional filtering methods.
机译:磁通量泄漏(MFL)是气体传输管道无损评估最常用的技术之一。该网络的主要部分采用无缝管道。从无缝管的MFL检查获得的数据受到各种噪声源的污染,这些噪声包括无缝管的特征噪声,由于管子运动而引起的MFL传感器的升起变化以及由于车载电子设备而引起的系统噪声,这可能会大大降低噪声。降低缺陷信号的可检测性。本文提出了一种新技术来过滤相关的无缝管噪声(SPN)并识别MFL数据中的缺陷区域,从而减少要分析的数据。所提出的过滤算法基于MFL数据的高阶统计量(偏度和峰度),并且被证明比传统的过滤方法更健壮。

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