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An automation approach in dielectric constant prediction using machine learning

机译:利用机器学习介电常数预测自动化方法

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This paper aims at predicting dielectric constants of metal with respect to temperature interval at certain frequency using Feed forward back propagation networks, Nonlinear autoregressive exogenous inputs networks and various other algorithms. Calculating the dielectric constant is crucial in the field of engineering; up till now this task is done by manual experiments. Though there are many existing experimental approaches for predicting dielectric constant but no such established algorithms exist that can automate the process of prediction. Through this paper multiple machine learning techniques are applied for predicting dielectric constant; also to improve the correlation between the input attributes optimization is performed.
机译:本文旨在通过馈送前后传播网络,非线性自回归外源输入网络和各种其他算法预测在某些频率下预测金属的介电常数。计算介电常数在工程领域至关重要;到目前为止,这项任务是通过手动实验完成的。尽管有许多现有的实验方法来预测介电常数,但不存在这种可以自动化预测过程的既定算法。通过本文,应用多种机器学习技术以预测介电常数;另外要提高输入属性之间的相关性,请执行优化。

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