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PCA-based Neural Network Modeling of MBE-grown HfO2Thin Film Characteristics

机译:基于PCA的MBE生长HfO 2 薄膜特性的神经网络建模

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In this paper, the neural network based modeling for the HfO2thin film characteristics, such as the accumulation capacitance and the hysteresis index, grown by metal organic molecular beam epitaxy was investigated. In order to build the process model, the error back-propagation neural network was carried out and the X-ray diffraction data were used to analyze the characteristic variation for the different process conditions and predict the response models for the electrical characteristics. Principal component analysis was selected to reduce the dimension of the data sets. The compressed data were then used in the neural network. Those initial weights and biases are selected by Latin Hypercube Sampling method. This modeling methodology can allow us to optimize the process recipes and improve the manufacturability.
机译:本文研究了基于神经网络的金属有机分子束外延生长HfO 2 薄膜特性的模型,例如累积电容和磁滞指数。为了建立过程模型,建立了误差反向传播神经网络,并使用X射线衍射数据分析了不同过程条件下的特性变化,并预测了电气特性的响应模型。选择主成分分析以减少数据集的规模。然后将压缩后的数据用于神经网络。这些初始权重和偏差是通过Latin Hypercube Sampling方法选择的。这种建模方法可以使我们优化工艺配方并提高可制造性。

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