首页> 外文会议>2017 18th International Symposium on Electromagnetic Fields in Mechatronics, Electrical and Electronic Engineering Book of Abstracts >Application of deep learning procedure to magnetic multi-sensor matrix transducer data for the need of defect characterization in steel elements
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Application of deep learning procedure to magnetic multi-sensor matrix transducer data for the need of defect characterization in steel elements

机译:深度学习过程在磁性多传感器矩阵换能器数据中的应用,以识别钢元素中的缺陷

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摘要

In this paper a machine learning algorithm was applied to analyze the integrated data responses of magnetic multi-sensor matrix transducer. In order to proceed the algorithm, a large database was prepared considering measurement as well as simulation results. A finite element method was utilized to conduct a numerical calculation and provide transducers response signals for the various configurations of defects. The deep artificial neural network was used for implementation of machine learning algorithm and then the model was verified.
机译:本文采用机器学习算法来分析磁性多传感器矩阵传感器的综合数据响应。为了进行该算法,准备了一个大型数据库,其中考虑了测量和仿真结果。利用有限元方法进行数值计算,并为各种缺陷配置提供换能器响应信号。该深度人工神经网络用于实现机器学习算法,然后对该模型进行了验证。

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