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Neural Network With Fourier Series-Based Transfer Functions for Filter Modeling

Zhixian Liu, Wei Shao, Xiao Ding, Lin Peng, Baojun Jiang

2022IEEE Microwave and Wireless Components Letters12 citationsDOI

Abstract

The Fourier series is introduced as a transfer function (TF) in the artificial neural network (ANN) for parametric modeling of microwave filters in this letter. The reported pole-residue-based TF leads to an order-changing problem of input samples from vector fitting, which is usually solved with an order-tracking technique or data classification. The proposed Fourier series-based TF does not have to carry out the time-consuming operation because the only coefficient order can be determined for all input samples in an iterative process. Compared with the pole-residue-based TF, moreover, the ANN training involves a small number of TF coefficients in the proposed method. The predicted electromagnetic (EM) response is obtained from the coefficients of the ANN output. An example of the ultrawideband (UWB) filter is employed to verify the effectiveness of the Fourier series-based TF.

Topics & Concepts

Fourier seriesTransfer functionArtificial neural networkFourier transformSeries (stratigraphy)Parametric statisticsAlgorithmComputer scienceDiscrete Fourier seriesFilter (signal processing)Control theory (sociology)Fourier analysisMathematicsShort-time Fourier transformArtificial intelligenceEngineeringMathematical analysisElectrical engineeringBiologyComputer visionPaleontologyStatisticsControl (management)Microwave Engineering and WaveguidesMillimeter-Wave Propagation and ModelingAdvanced Adaptive Filtering Techniques
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