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Multi-Sensor Data Integration Using Deep Learning for Characterization of Defects in Steel Elements

机译:使用深度学习进行多传感器数据集成以表征钢元素中的缺陷

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摘要

Nowadays, there is a strong demand for inspection systems integrating both high sensitivity under various testing conditions and advanced processing allowing automatic identification of the examined object state and detection of threats. This paper presents the possibility of utilization of a magnetic multi-sensor matrix transducer for characterization of defected areas in steel elements and a deep learning based algorithm for integration of data and final identification of the object state. The transducer allows sensing of a magnetic vector in a single location in different directions. Thus, it enables detecting and characterizing any material changes that affect magnetic properties regardless of their orientation in reference to the scanning direction. To assess the general application capability of the system, steel elements with rectangular-shaped artificial defects were used. First, a database was constructed considering numerical and measurements results. A finite element method was used to run a simulation process and provide transducer signal patterns for different defect arrangements. Next, the algorithm integrating responses of the transducer collected in a single position was applied, and a convolutional neural network was used for implementation of the material state evaluation model. Then, validation of the obtained model was carried out. In this paper, the procedure for updating the evaluated local state, referring to the neighboring area results, is presented. Finally, the results and future perspective are discussed.
机译:如今,对检查系统的强烈需求是将在各种测试条件下的高灵敏度与先进的处理能力结合起来,以允许自动识别被检查对象的状态并检测威胁。本文提出了利用磁性多传感器矩阵换能器表征钢中缺陷区域的可能性,以及基于深度学习的数据集成和最终识别物体状态的算法。换能器允许在单个位置上沿不同方向感测磁矢量。因此,它能够检测和表征影响磁性的任何材料变化,而不论其相对于扫描方向的定向如何。为了评估系统的一般应用能力,使用了具有矩形人造缺陷的钢元件。首先,考虑数值和测量结果构建数据库。有限元方法用于运行模拟过程,并为不同的缺陷布置提供换能器信号模式。接下来,应用整合在单个位置收集的换能器响应的算法,并使用卷积神经网络实现材料状态评估模型。然后,对获得的模型进行验证。本文提出了一种参考邻近区域结果更新评估局部状态的过程。最后,讨论了结果和未来展望。

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