2022
DOI: 10.1109/access.2022.3158976
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Machine Learning-Aided Design of Dielectric-Filled Slotted Waveguide Antennas With Specified Sidelobe Levels

Abstract: This paper presents the use of machine learning (ML) to facilitate the design of dielectric-filled Slotted Waveguide Antennas (SWAs) with specified sidelobe levels. Conventional design methods for air-filled SWAs require the simultaneous solving of complex equations to deduce the antenna's design parameters, which typically requires further manual simulation-based optimization to reach the desired resonance frequency and sidelobe level ratio (SLR). The few works that investigated the design of filled SWAs, did… Show more

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Cited by 4 publications
(3 citation statements)
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“…SVR is motivated by the ubiquitous Support vector Machines (SVMs) classifier and is the most frequently opted type of support vector machine in regression analysis. Optimal hyperplane calculation is the basic idea in Support Vector Machines (SVM) to find an that best separates the data into two classes and then use this hyperplane to determine the regression function [12]. SVR is characterized by the use of margin control and the kernel.…”
Section: Support Vector Regression(svr)mentioning
confidence: 99%
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“…SVR is motivated by the ubiquitous Support vector Machines (SVMs) classifier and is the most frequently opted type of support vector machine in regression analysis. Optimal hyperplane calculation is the basic idea in Support Vector Machines (SVM) to find an that best separates the data into two classes and then use this hyperplane to determine the regression function [12]. SVR is characterized by the use of margin control and the kernel.…”
Section: Support Vector Regression(svr)mentioning
confidence: 99%
“…All the operations were performed on Intel Core i7-7700 3.6 GHz processor with 8 GB RAM. Moreover, The GPR, RF, SVR, and DT ML models were developed and trained using the Scikit Library whereas the ANN model for this work was developed using the Tensor flow library and trained using ADAM algorithm [12]- [16].…”
Section: Training and Validationmentioning
confidence: 99%
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