Title :
Modeling of planar dual-band microstrip patch antenna using Gaussian process regression
Author :
Jacobs, JP ; De Villiers, JP
Author_Institution :
Dept. of Electr., Electron. & Comput. Eng., Univ. of Pretoria, Pretoria, South Africa
Abstract :
Gaussian process (GP) regression, a structured supervised learning alternative to neural networks for the fast modeling of antenna characteristics, is applied to modeling S11 and gain against frequency of a dual-band microstrip patch antenna with separate tuning strips on a three-layer substrate. Since the two frequency bands of the antenna are relatively narrow, the function underlying the variation of S11 with four geometry variables and frequency is challenging to map. Predictions using large test data sets yielded results of an accuracy comparable to the target moment-method-based full-wave simulations; highly favourable mean square errors were obtained. The GP methodology has various inherent advantages that include ease of implementation and the need to learn only a handful of (hyper) parameters.
Keywords :
Gaussian processes; electrical engineering computing; learning (artificial intelligence); mean square error methods; method of moments; microstrip antennas; multifrequency antennas; neural nets; planar antennas; tuning; GP methodology; GP regression; Gaussian process regression; antenna characteristics; frequency bands; large test data sets; mean square errors; moment-method-based full-wave simulations; neural networks; planar dual-band microstrip patch antenna; structured supervised learning alternative; tuning strips; Coplanar waveguides; Gaussian processes; neural networks; regression; slot antennas;
Conference_Titel :
Microwave Conference (EuMC), 2010 European
Conference_Location :
Paris
Print_ISBN :
978-1-4244-7232-1