A novel method for extracting and optimizing the complex permittivity of paper-based composites based on an artificial neural network model

被引:0
|
作者
XIA ChenBin [1 ]
SHEN JunYi [2 ]
LIAO ShaoWei [2 ]
WANG Yi [1 ]
HUANG ZhengSheng [1 ]
XUE Quan [2 ]
TANG Min [1 ]
LONG Jin [1 ]
HU Jian [1 ]
机构
[1] School of Light Industry and Engineering,South China University of Technology
[2] School of Electronic and Information Engineering,South China University of
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中图分类号
TB332 [非金属复合材料]; TP183 [人工神经网络与计算];
学科分类号
摘要
Measuring the complex permittivity of ultrathin, flexible materials with a high loss tangent poses a substantial challenge with precision using conventional methods, and verifying the accuracy of test results remains difficult. In this study, we introduce a methodology based on a back-propagation artificial neural network(ANN) to extract the complex permittivity of paper-based composites(PBCs). PBCs are ultrathin and flexible materials exhibiting considerable complex permittivity and dielectric loss tangent. Given the absence of mature measurement methods for PBCs and a lack of sufficient data for ANN training, a mapping relationship is initially established between the complex permittivity of honeycomb-structured microwave-absorbing materials(HMAMs, composed of PBCs) and that of PBCs using simulated data. Leveraging the ANN model, the complex permittivity of PBCs can be extracted from that of HMAMs obtained using standard measurement. Subsequently, two published methods are cited to illustrate the accuracy and advancement of the results obtained using the proposed approach. Additionally, specific error analysis is conducted, attributing discrepancies to the conductivity of PBCs, the homogenization of HMAMs, and differences between the simulation model and actual objects. Finally, the proposed method is applied to optimize the cell length parameters of HMAMs for enhanced absorption performance. The conclusion discusses further improvements and areas for extended research.
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页码:3190 / 3204
页数:15
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