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首页> 外文期刊>International Journal of Engineering Technologies >Artificial Neural Networks Study on Prediction of Dielectric Permittivity of Basalt/PANI Composites
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Artificial Neural Networks Study on Prediction of Dielectric Permittivity of Basalt/PANI Composites

机译:人工神经网络预测玄武岩/ PANI复合材料介电常数的研究

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摘要

In the present study, the dielectric permittivity change of basalt (two type basa CM-1, KYZ-13) reinforced PANI composites were studied to determine the effects of PANI additivities (10.0, 25.0, 50.0 wt.%) at several frequencies from 100 Hz to 17.5 MHz by a dielectric spectroscopy method at the room temperature and artificial neural networks (ANNs) simulation. Also, the dielectric permittivity at 30.0 wt.% of PANI additivity was obtained by ANNs without experimental process. That process, a significant predictive instrument was produced which allows optimization of dielectric properties for numerous composites without substantial experimentation. It has been observed that PANI additivities decreased to dielectric constant of composites at low frequencies. Furthermore, the ANNs method have satisfactory accuracy for prediction of dielectric parameters.
机译:在本研究中,研究了玄武岩(两种类型的玄武岩; CM-1,KYZ-13)增强的PANI复合材料的介电常数变化,以确定PANI添加量(10.0、25.0、50.0 wt。%)在多个频率下的影响。在室温下通过电介质光谱法和人工神经网络(ANN)模拟100 Hz至17.5 MHz。同样,通过ANN无需实验过程即可获得PANI加成率为30.0重量%的介电常数。在此过程中,生产了一种重要的预测仪器,无需进行大量实验即可优化众多复合材料的介电性能。已经观察到,PANI的添加量在低频下降低至复合材料的介电常数。此外,人工神经网络方法对于介电参数的预测具有令人满意的精度。

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