Tuning model for microwave filter by using improved back‐propagation neural network based on gauss kernel clustering

Given the difficulty of a single model in dealing with complex systems. In this study, we propose a tuning model that uses a probabilistic fusion of sub‐optimal back‐propagation neural network based on the Gauss kernel clustering. This study focused mainly three aspects of work compared with the tra...

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Veröffentlicht in:International journal of RF and microwave computer-aided engineering 2019-08, Vol.29 (8), p.n/a
Hauptverfasser: Wu, Sheng‐Biao, Cao, Wei‐Hua
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description Given the difficulty of a single model in dealing with complex systems. In this study, we propose a tuning model that uses a probabilistic fusion of sub‐optimal back‐propagation neural network based on the Gauss kernel clustering. This study focused mainly three aspects of work compared with the traditional tuning model. First, the calculation of the coupling matrix of scattering parameters is achieved by solving polynomial coefficients after eliminating the inconsistent phase shift and resonant cavity loss. Second, the best clustering center and a number were obtained by mapping the scattered data to high‐dimensional space, and the prediction of multi‐output variables were realized by sub‐model probability fusion. Third, an improved shuffled frog leaping algorithm was introduced to optimize the initial weights of the back‐propagation neural network, and a differential operation significantly improved the diversity of the population and the searchability of the algorithm. Finally, the experiment of nine‐order cross‐coupled filters shows that the proposed method has a better capability to train the weights and thresholds, which improves the generalization performance of the system.
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subjects Back propagation
Back propagation networks
Clustering
Complex systems
Kernels
Mapping
microwave filter
Microwave filters
Neural networks
Optimization
Polynomials
Propagation
SFLA
Statistical analysis
S‐parameters
Tuning
tuning model
title Tuning model for microwave filter by using improved back‐propagation neural network based on gauss kernel clustering
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