Efficient resonant frequency modeling for dual-band microstrip antennas by Gaussian process regression

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Jacobs, Jan Pieter

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Institute of Electrical and Electronics Engineers

Abstract

A methodology based on Gaussian process regression (GPR) for accurately modeling the resonant frequencies of dual-band microstrip antennas is presented. Two kinds of dual-band antennas were considered, namely a U-slot patch and a patch with a center square slot. Predictive results of high accuracy were achieved (normalized root-mean-square errors of below 0.6% in all cases), even for the square-slot patch modeling problem where all antenna dimensions and parameters were allowed to vary, resulting in a seven-dimensional input space. Training data requirements for achieving these accuracies were relatively modest. Furthermore, the automatic relevance determination property of GPR provided (at no additional cost) a mechanism for enhancing qualitative understanding of the antennas’ resonance characteristics—a facility not offered by neural network-based strategies used in related studies.

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Modeling, Gaussian process regression (GPR), Resonant frequencies, Dual-band microstrip antennas

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Citation

Jacobs, JP 2015, 'Efficient resonant frequency modeling for dual-band microstrip antennas by Gaussian process regression', IEEE Antennas and Wireless Propagation Letters, vol. 14, pp. 337-341.