用卷积神经网络预测储能复合电介质的相对介电常数:一种快速准确的有限元方法

iEnergy Pub Date : 2022-12-01 DOI:10.23919/IEN.2022.0049
Shao-Long Zhong;Di-Fan Liu;Lei Huang;Yong-Xin Zhang;Qi Dong;Zhi-Min Dang
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引用次数: 1

摘要

相对介电常数是决定纳米复合电介质在许多应用中的物理极化行为的基本参数之一,特别是在电容储能方面。从微观结构预测颗粒/聚合物纳米复合材料的相对介电常数具有重要意义。然而,对于复杂结构和非线性问题,以有限元法为代表的经典有效介质理论和基于物理的数值计算既费时又繁琐。该工作探索了一种将卷积神经网络(ConvNet)和有限元方法(FEM)相结合的新架构,以预测在聚偏氟乙烯(PVDF)基体中掺入钛酸钡(BT)颗粒的纳米复合电介质的相对介电常数。ConvNet在大数据集上进行了训练和评估,其中14266个训练数据和3514个测试数据由编程算法生成。通过数值实验,我们证明了训练后的网络可以有效地在ConvNet模型和FEM之间提供准确的一致性,这得益于显著的评估指标$R^{2}$,在训练和测试数据上分别高达0.9783和0.9375。所提出的方法具有很强的通用性,可以扩展到快速准确地预测纳米复合电介质的其他性质。
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Prediction on the relative permittivity of energy storage composite dielectrics using convolutional neural networks: A fast and accurate alternative to finite-element method
The relative permittivity is one of the essential parameters determines the physical polarization behaviors of the nanocomposite dielectrics in many applications, particularly for capacitive energy storage. Predicting the relative permittivity of particle/polymer nanocomposites from the microstructure is of great significance. However, the classical effective medium theory and physics-based numerical calculation represented by finite element method are time-consuming and cumbersome for complex structures and nonlinear problem. The work explores a novel architecture combining the convolutional neural network (ConvNet) and finite element method (FEM) to predict the relative permittivity of nanocomposite dielectrics with incorporated barium titanite (BT) particles in polyvinylidene fluoride (PVDF) matrix. The ConvNet was trained and evaluated on big datasets with 14266 training data and 3514 testing data generated form a programmatic algorithm. Through numerical experiments, we demonstrate that the trained network can efficiently provide an accurate agreement between the ConvNet model and FEM by virtue of the significant evaluation metrics $R^{2}$ , which reaches as high as 0.9783 and 0.9375 on training and testing data, respectively. The strong universality of the presented method allows for an extension to fast and accurately predict other properties of the nanocomposite dielectrics.
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