Journal of Jilin University(Engineering and Technology Edition) ›› 2022, Vol. 52 ›› Issue (12): 3022-3028.doi: 10.13229/j.cnki.jdxbgxb20210440

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Structure parameter estimation of microstrip filter based on convolutional neural network

You-jun ZHANG(),Shun-yan CHENG   

  1. School of Information Engineering,Shanghai Maritime University,Shanghai 201306,China
  • Received:2021-05-17 Online:2022-12-01 Published:2022-12-08

Abstract:

Aiming at the issue of microwave modeling based on neural network, a structure parameter estimation method for microstrip bandpass filter based on convolution neural network is proposed. A dual band, three band and four band microstrip filter was designed and analyzed by adopting single open stub loaded rectangular ring resonator and transverse signal interference technology. Applying electromagnetic simulation software extracted the model training data and the S-parameters and structure parameters of microstrip filter are designed as the input and output of the proposed convolution neural network, respectively. Furthermore, the trained model was used to predict the structure parameters of microstrip filter. The proposed method adopts convolutional neural network to design the microstrip filter, which can effectively solve the problems of many input parameters, complex model caused by full connection and long time-consuming when using neural network to design microstrip filter. The simulation results show that the S-parameters of the microstrip filter designed by this method have high accuracy.

Key words: electromagnetic, ring resonator, band pass filter, convolutional neural network, structure parameter estimation

CLC Number: 

  • TN713

Fig.1

Ideal filter circuit"

Fig.2

Resonant frequency distribution versus θ"

Fig.3

Layout of proposed microstrip filter"

Fig.4

Structure of convolutional neural network"

Fig.5

Algorithm flow chart"

Fig.6

Curve of model training"

Fig.7

Comparison curve between predicted and truth"

Table 1

Comparison of partial predicted and truth"

真实值预测值误差/%
L3/mmL4/mmS/mmL3/mmL4/mmS/mm
12.0020.000.9012.4420.320.932.8
11.503.001.3010.873.101.644.9
14.0017.002.1013.7817.132.201.5

Fig.8

Comparison curves between the desired and estimated frequency responses of the microstrip filter"

Table 2

Comparison of the different optimization methods"

方法均方误差数据提取时间/h训练时间/h总耗时/h
文献[106.5913.000.2513.25
文献[11142.80-6.406.40
本文0.5113.000.1613.16
1 Pan Guang-yuan, Wu Yang, Yu Ming, et al. Inverse modeling for filters using a regularized deep neural network approach[J]. IEEE Microwave and Wireless Components Letters, 2020, 30(5): 457-460.
2 Feng Feng, Zhang Chao, Na Wei-cong, et al. Adaptive feature zero assisted surrogate-based EM optimization for microwave filter design[J]. IEEE Microwave and Wireless Components Letters, 2019, 29(1): 2-4.
3 Jin Jing, Feng Feng, Zhang Wei, et al. Recent advances in deep neural network technique for high-dimensional microwave modeling[C]∥2020 IEEE MTT-S International Conference on Numerical Electromagnetic and Multiphysics Modeling and Optimization (NEMO), Hangzhou, China, 2020: No.9343496.
4 Jin K H, Mccann M T, Froustey E, et al. Deep convolutional neural network for inverse problems in imaging[J]. IEEE Transactions on Image Processing, 2017, 26(9):4509-4522.
5 刘太君, 陈豪, 苏日娜, 等. 基于神经网络的宽带功放动态非线性行为建模[J]. 微波学报, 2020, 36(1): 131-136.
Liu Tai-jun, Chen Hao, Su Ri-na, et al. Modeling of dynamic nonlinear behavior of broadband amplifiers based on neural networks[J]. Journal of Microwaves, 2020, 36(1): 131-136.
6 Liu Wen-yuan, Na Wei-cong, Feng Feng, et al. A wiener-type dynamic neural network approach to the modeling of nonlinear microwave devices and its applications[C]∥2020 IEEE MTT-S International Conference on Numerical Electromagnetic and Multiphysics Modeling and Optimization (NEMO), Hangzhou, China, 2020: No.2657501.
7 Kazemi N, Abdolrazzaghi M, Musilek P, et al. A temperature-compensated high-resolution microwave sensor using artificial neural network[J]. IEEE Microwave and Wireless Components Letters, 2020, 30(9): 919-922.
8 Na Wei-cong, Feng Feng, Zhang Chao, et al. A unified automated parametric modeling algorithm using knowledge-based neural network and l1 optimization[J]. IEEE Transactions on Microwave Theory and Techniques, 2017, 65(3): 729-745.
9 Zhang Wei, Feng Feng, Jin Jing, et al. Parallel multiphysics optimization for microwave devices exploiting neural network surrogate[J]. IEEE Microwave and Wireless Components Letters, 2021, 31(4): 341-344.
10 Ohira M, Ao Y, Ma Z, et al. Automated microstrip bandpass filter design using feedforward and inverse models of neural network[C]∥2018 Asia-Pacific Microwave Conference (APMC), Kyoto, Japan, 2018: 1292-1294.
11 Du Hao, Yang Qian, Dai Xin-yue, et al. A structure parameter estimation method for microstrip bpf based on multilayer fcn[J]. IEEE Microwave and Wireless Components Letters, 2020, 30(6): 581-584.
12 Jin Jing, Zhang Chao, Feng Feng, et al. Deep neural network technique for high-dimensional microwave modeling and applications to parameter extraction of microwave filters[J]. IEEE Transactions on Microwave Theory and Techniques, 2019, 67(10): 4140-4155.
13 Zhao Ping, Wu Ke. Homotopy optimization of microwave and millimeter-wave filters based on neural network model.[J]. IEEE Transactions on Microwave Theory and Techniques, 2020, 68(4): 1390-1400.
14 Zhang Chao, Jin Jing, Na Wei-cong, et al. Multivalued neural network inverse modeling and applications to microwave filters[J]. IEEE Transactions on Microwave Theory and Techniques, 2018, 66(8): 1-17.
15 钟辉, 李红, 李振建, 等. 基于卷积神经网络的图像拼接篡改检测算法[J]. 吉林大学学报:工学版, 2020, 50(4): 1428-1434.
Zhong Hui, Li Hong, Li Zhen-jian, et al. Image stitching tamper detection algorithm based on convolutional neural network[J]. Journal of Jilin University (Engineering and Technology Edition), 2020, 50(4): 1428-1434.
16 Li Kai, Jiang Shui-qiao. Simple transversal signal-interference dual-/tri-/quad-band filters using single rectangular loop resonator[C]∥2019 International Conference on Communications, Information System and Computer Engineering(CISCE), National University of Defense Technology, Haikou, China, 2019: 168-170.
17 张友俊, 刘晓元. 基于信号干扰理论的差分带通滤波器[J]. 吉林大学学报:工学版, 2017, 47(3): 1003-1008.
Zhang You-jun, Liu Xiao-yuan. Novel differential wideband bandpass filter based on signal interference technology[J]. Journal of Jilin University (Engineering and Technology Edition), 2017, 47(3): 1003-1008.
18 Mikase R, Ohira M, Ma Z, et al. A novel microstrip symmetric diagonal cross-coupling quadruplet bandpass filter using even/odd- mode stepped impedance resonators[C]∥2018 IEEE/MTT-S International Microwave Symposium-IMS, Philadelphia, PA, USA, 2018: 712-715.
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