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Estimation of composite damage model parameters using spectral finite element and neural network

机译:基于谱有限元和神经网络的复合损伤模型参数估计

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A multi-layer perceptron (MLP) network using error back propagation algorithm is employed in this paper to estimate the damage parameters from broad-band spectral data as diagnostic signal. Various existing models of damage in laminated composite and the resulting stiffness degradation are discussed from comparative view-point. Degradation of ply properties can be considered to be one of the damage model parameters while monitoring transverse matrix cracks in cross-ply, splitting in longitudinal ply, and evolution of consecutive stages of damage, such as delaminations and fiber fracture. The stiffness degradation factor, the location and size of the damaged zone in laminated composite beam are considered as damage model parameters in the present paper. Fourier spectral data, which is typical to most of the diagnostic wave measurements, are used as input to the neural network. Since, training the neural network in such case involves many data sets and all of these data are difficult to generate using experiments, a spectral finite element model (SFEM) with embedded degraded zone in laminated composite beam is developed. Numerical simulation using this element is carried out, which shows the nature of temporal signal that are likely to be measured. Analytical studies on the performance of the neural network are presented based on numerically simulated data. Effect of measurement noise on the network performance is also reported.
机译:本文采用基于误差反向传播算法的多层感知器(MLP)网络,以宽带频谱数据作为诊断信号来估计损伤参数。从比较的角度讨论了各种现有的层压复合材料损伤模型以及由此导致的刚度降低。在监视交叉层中的横向基体裂纹,纵向层中的裂开以及连续破坏阶段(例如分层和纤维断裂)的演变时,层特性的退化可以视为破坏模型参数之一。刚度退化因子,层压复合材料梁损伤区域的位置和大小被认为是损伤模型参数。对于大多数诊断波测量来说,典型的傅立叶光谱数据都用作神经网络的输入。由于在这种情况下训练神经网络涉及许多数据集,并且所有这些数据都难以通过实验生成,因此开发了在复合层合梁中嵌入退化区的光谱有限元模型(SFEM)。使用此元素进行了数值模拟,显示了可能要测量的时间信号的性质。基于数值模拟数据,对神经网络的性能进行了分析研究。还报告了测量噪声对网络性能的影响。

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