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Acoustic Emission Source Localization with Generalized Regression Neural Network Based on Time Difference Mapping Method

机译:基于时差映射方法的广义回归神经网络声发射源定位

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摘要

Acoustic emission (AE) source localization is a powerful detection method. Time Difference Mapping (TDM) method is an effective method for detecting defects in complex structures. The core of this method is to search for a point with the minimum distance away from the verification point in the time difference database. In Traditional Time Difference Mapping (T-TDM) method and Improved Time Difference Mapping (I-TDM) method, the larger database and denser grids allow the higher localization accuracy. If the location points are not included in the database, the localization accuracy of the T-TDM and I-TDM methods will be greatly affected. To solve the above problems, a new AE source localization method, Generalized Regression Neural Network Based on Time Difference Mapping (GRNN-TDM), is proposed to improve the localization accuracy in the study. In the proposed method, the time difference data of the sensor path on all nodes in the time difference mapping are used as the training input data and the coordinates of grid nodes are used as the training output data. After continuous learning and training, the neural network model predicts its possible source location with the time difference data collected from the verification point. In this paper, the localization of AE sources with T-TDM, I-TDM and GRNN-TDM methods was studied in four composite plates with different fiber layers and an aluminum plate with holes. The localization results showed that the localization accuracy of the GRNN-TDM method was higher than that of T-TDM and I-TDM methods.
机译:声发射(AE)源定位是一种强大的检测方法。时间差映射(TDM)方法是用于检测复杂结构中缺陷的有效方法。该方法的核心是搜索与时差数据库中的验证点的最小距离的点。在传统的时差映射(T-TDM)方法和改进的时间差映射(I-TDM)方法中,较大的数据库和更密集网格允许更高的本地化精度。如果位置点不包含在数据库中,则TDM和I-TDM方法的本地化精度将受到很大影响。为了解决上述问题,提出了一种基于时间差映射(GRNN-TDM)的广义回归神经网络的新的AE源定位方法,以提高研究中的本地化精度。在所提出的方法中,时间差映射中所有节点上的传感器路径的时差数据用作训练输入数据,并且网格节点的坐标用作训练输出数据。在持续学习和训练之后,神经网络模型预测其可能的源位置,从验证点收集的时间差数据。本文在四个具有不同纤维层和具有孔的铝板中研究了具有T-TDM,I-TDM和GRNN-TDM方法的AE源,I-TDM和GRNN-TDM方法的定位。本地化结果表明,GRNN-TDM方法的定位精度高于T-TDM和I-TDM方法的定位精度。

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