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首页> 外文期刊>CERAMICS INTERNATIONAL >Modeling for electrical impedance spectroscopy of (4E)-2-amino-3-cyanobenzo[b]oxocin-6-one by artificial neural network
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Modeling for electrical impedance spectroscopy of (4E)-2-amino-3-cyanobenzo[b]oxocin-6-one by artificial neural network

机译:(4E)-2-氨基-3-氰基苯[B]氧气-6-1的电阻抗光谱型建模

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摘要

The efficiency of artificial neural networks (ANNs) for modeling the electrical impedance spectroscopy of (4E)-2-amino-3-cyanobenzo[b] oxocin-6-one was investigated. The experimental data for electrical impedance and dissipation factor were used as input data for the model. The optimum network structure was obtained by testing different numbers of neurons with altered transfer functions to normalize the data. This structure simulated the experimental data with a very high accuracy and predicted new values that were untested experimentally. A nonlinear equation indicates the relation between inputs and output was introduced based on ANN model. The performances of the optimum network are obtained. Finally, this study showed that neural networks are a very effective tool in modeling and are able to follow the patterns of the experimental data with a high precision.
机译:研究了用于对(4E)-2-氨基-3-氨基苯基苯苯基苯苯基苯苯苯基苯苯基苯苯基苯苯基苯苯基苯并氧苯脲[B]氧气-6-on的模拟电阻光谱的人工神经网络(ANNS)的效率。 电阻抗和耗散因子的实验数据被用作模型的输入数据。 通过使用改变的传递函数测试不同数量的神经元来获得最佳网络结构以使数据归一化。 这种结构模拟了具有非常高的准确度和预测实验未经测试的新值的实验数据。 非线性方程表示基于ANN模型引入了输入和输出之间的关系。 获得最佳网络的性能。 最后,这项研究表明,神经网络是建模中具有非常有效的工具,并且能够以高精度遵循实验数据的模式。

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