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首页> 外文期刊>Key Engineering Materials >Artificial Neural Network Modeling of Ferroelectric Hysteresis: An Application to Soft Lead Zirconate Titanate Ceramics
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Artificial Neural Network Modeling of Ferroelectric Hysteresis: An Application to Soft Lead Zirconate Titanate Ceramics

机译:铁电磁滞的人工神经网络建模:在锆钛酸铅软陶瓷中的应用

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摘要

In this work, the Artificial Neural Network (ANN) was used to model ferroelectric hysteresis using data measured from soft lead zirconate titanate [Pb (Zr_(1-x)Ti_x)O_3 or PZT] ceramics as an application. Data from experiments were split into training, testing and validation dataset. Four ANN models were developed separately to predict output of the hysteresis area, remnant, coercivity and squareness. Each model has two neurons in the input layer, which represent field amplitude and field frequency. The ANNs were trained with varying number of hidden layer and number of neurons in each layer to find the best network architecture with highest accuracy. After the networks have been trained, they were used to predict hysteresis properties of the unseen testing patterns of input. The predicted and the testing data were found to match very well which suggests the ANN success in modeling ferroelectric hysteresis properties obtained from experiments.
机译:在这项工作中,使用人工神经网络(ANN)建模铁电磁滞,使用从锆酸钛酸铅软铅[Pb(Zr_(1-x)Ti_x)O_3或PZT]陶瓷测量的数据作为应用。来自实验的数据被分为训练,测试和验证数据集。分别开发了四个ANN模型,以预测磁滞面积,剩余量,矫顽力和矩形度的输出。每个模型在输入层中都有两个神经元,分别代表场振幅和场频率。用不同数量的隐藏层和每层神经元的数量对ANN进行训练,以找到具有最高准确性的最佳网络体系结构。在对网络进行训练之后,将它们用于预测看不见的输入测试模式的磁滞特性。发现预测数据与测试数据非常匹配,这表明ANN成功地模拟了从实验中获得的铁电磁滞特性。

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