涡流远场传感器异常检测的熵滤波

D. Spinello, W. Gueaieb, Roderick Lee
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引用次数: 5

摘要

研究了从多通道远场涡流传感器产生的噪声信号中提取特定特征的问题。该传感器安装在移动机器人上,其任务是检测金属管道中的异常区域。考虑到数据序列中存在噪声,异常信号可能被噪声掩盖,因此在某些情况下难以识别。为了增强可能识别异常的信号峰值,我们考虑建立在与数据序列相关的后验概率密度函数上的熵滤波器。基于假设检验的Neyman-Pearson准则的阈值被导出。该算法工具用于分析部分管道的数据,这些数据在预定位置引入了一组异常。识别异常的关键区域捕获了一组损坏位置,证明了滤波器在远程场涡流传感器检测中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Entropy filter for anomaly detection with eddy current remote field sensors
We consider the problem of extracting a specific feature from a noisy signal generated by a multi-channels Remote Field Eddy Current Sensor. The sensor is installed on a mobile robot whose mission is the detection of anomalous regions in metal pipelines. Given the presence of noise that characterizes the data series, anomaly signals could be masked by noise and therefore difficult to identify in some instances. In order to enhance signal peaks that potentially identify anomalies we consider an entropy filter built on a-posteriori probability density functions associated with data series. Thresholds based on the Neyman-Pearson criterion for hypothesis testing are derived. The algorithmic tool is applied to the analysis of data from a portion of pipeline with a set of anomalies introduced at predetermined locations. Critical areas identifying anomalies capture the set of damaged locations, demonstrating the effectiveness of the filter in detection with Remote Field Eddy Current Sensor.
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