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首页> 外文期刊>Ferroelectrics: Letters Section >Use of Neural Networks to Solve the Integral Equation of the Laser Intensity Modulation Method (LIMM)
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Use of Neural Networks to Solve the Integral Equation of the Laser Intensity Modulation Method (LIMM)

机译:使用神经网络求解激光强度调制方法(LIMM)的积分方程

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Determination of the polarization distribution in ferroelectrics using LIMM requires the solution of a Fredholm integral equation of the 1st kind. The constrained regularization method which has been used successfully to solve this problem for single-layer ferroelectrics fails when applied to thin films on a multi-layer substrate. A new approach based on neural networks has been developed to alleviate these problems. In this method, a functional form containing a small number of undetermined parameters is selected to represent the unknown polarization. The LIMM equation is used to synthesize a very large number of data sets (current vs frequency), each one corresponding to a polarization distribution with a different set of parameters. These data are used to "train" the neural network. Then the neural network is used to predict parameters for data sets on which it was not "trained."
机译:使用LIMM确定铁电体中的极化分布需要第一类Fredholm积分方程的解。成功应用于单层铁电体中的约束正则化方法在应用于多层基板上的薄膜时失败了。已经开发出一种基于神经网络的新方法来减轻这些问题。在这种方法中,选择包含少量不确定参数的函数形式来表示未知极化。 LIMM公式用于合成大量数据集(电流与频率),每个数据集对应于一组具有不同参数的极化分布。这些数据用于“训练”神经网络。然后,将神经网络用于预测未对其进行“训练”的数据集的参数。

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