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Neural network modeling of the cellgap process for liquid crystal display fabricated on plastic substrates

机译:在塑料基板上制造的液晶显示器的能隙工艺的神经网络建模

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In this paper, a neural network model is presented to characterize the thickness and the uniformity of the cellgap process for flexible liquid crystal display (LCD). Input factors are explored via a D-optimal design with 15 runs and used as training data in the neural network. In order to verify the fitness of the model, three more runs are added as test data. Latin hypercube sampling and error back-propagation algorithm are used to build the model. Latin hypercube sampling is used to generate initial weights and biases of the network. The thickness of cellgap is measured at five points: one at the center and four at the edges. The average thickness is used as cellgap thickness, and the uniformity is obtained by comparing the thickness at the center and edge points.
机译:本文提出了一种神经网络模型来表征柔性液晶显示器(LCD)的单元间隙工艺的厚度和均匀性。通过具有15次运行的D最优设计来探索输入因子,并将其用作神经网络中的训练数据。为了验证模型的适用性,又添加了三个运行作为测试数据。使用拉丁超立方体采样和误差反向传播算法来构建模型。拉丁超立方体采样用于生成网络的初始权重和偏差。细胞间隙的厚度在五个点测量:一个在中心,四个在边缘。将平均厚度用作单元间隙厚度,并且通过比较中心点和边缘点的厚度来获得均匀性。

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