Artificial neural networks for impact force reconstruction on composite plates

G. Sarego, M. Zaccariotto, U. Galvanetto
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引用次数: 2

Abstract

Impacts are one of the main causes of damage in composite panels. The determination of the impact location and the reconstruction of impact force are necessary to evaluate the health of the structure. These data may be measured indirectly from the measurements of responses of sensors located on the system subjected to the impact. In this study, a composite panel model developed in Abaqus/CAE is first validated and then numerical simulations based on the model are used to obtain data for several impacts, characterized by different impact locations, different impactor velocities and masses. Subsequently, these data are used to model the complex nonlinear behavior of the composite laminate by a nonlinear system identification approach. This is based on the use of artificial neural networks, which are employed to accurately reconstruct the impact forces and the impact locations.
复合材料板冲击力重建的人工神经网络
冲击是复合板损伤的主要原因之一。撞击位置的确定和冲击力的重建是评价结构健康状况的必要条件。这些数据可以通过位于受冲击系统上的传感器的响应测量间接测量出来。本研究首先对在Abaqus/CAE中开发的复合板模型进行了验证,然后基于该模型进行了数值模拟,获得了不同撞击位置、不同撞击体速度和质量的若干次撞击数据。随后,利用这些数据,采用非线性系统辨识方法对复合材料层合板的复杂非线性行为进行建模。这是基于人工神经网络的使用,它被用来精确地重建冲击力和冲击位置。
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