Artificial Neural Network (ANN) have been recently proposed as a mean to speed up the optimized design procedure of printed Reflectarrays, creating a surrogate model of a patch radiator as a function of its geometric parameters, the angle of incidence and frequency. This paper presents an improvement of ANN learning procedure by hybridising classical Error Back-Propagation with Meta Particle Swarm Optimization algorithm. In this way the ANN learning procedure proved to converge in a much more effective way, i.e. with the necessity of the introduction of a smaller size set of training samples and with a significant reduction of the computational effort and of the data memory storage.

Modeling of reflectarray elements by means of MetaPSO-based Artificial Neural Network / Ho Manh, Linh; Mussetta, Marco; Pirinoli, Paola; Zich, Riccardo. - ELETTRONICO. - (2013), pp. 3450-3451. (Intervento presentato al convegno EuCAP 2013 tenutosi a Gothenburg, Sweden nel 8-12 April 2013).

Modeling of reflectarray elements by means of MetaPSO-based Artificial Neural Network

MUSSETTA, MARCO;PIRINOLI, Paola;ZICH, Riccardo
2013

Abstract

Artificial Neural Network (ANN) have been recently proposed as a mean to speed up the optimized design procedure of printed Reflectarrays, creating a surrogate model of a patch radiator as a function of its geometric parameters, the angle of incidence and frequency. This paper presents an improvement of ANN learning procedure by hybridising classical Error Back-Propagation with Meta Particle Swarm Optimization algorithm. In this way the ANN learning procedure proved to converge in a much more effective way, i.e. with the necessity of the introduction of a smaller size set of training samples and with a significant reduction of the computational effort and of the data memory storage.
2013
9781467321877
9788890701832
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/2518947
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