Performances analysis of PSO-based optimization procedures for adaptive nulling in time-modulated linear arrays (MinPwr and SINR-based approaches comparison)

Piccardi, L. (2014) Performances analysis of PSO-based optimization procedures for adaptive nulling in time-modulated linear arrays (MinPwr and SINR-based approaches comparison). Masters thesis, University of Trento.

[img]
Preview
Text
Abstract.A456.pdf

Download (72kB) | Preview

Abstract

Nulling techniques in adaptive arrays aim to the maximization of the power received associated to the desired signal despite a minimization of the power associated at the interferences signals, placing nulls in the direction of arrivals (DoAs) of interferences in the synthesis process of the power pattern. Many techniques has been proposed in literature to determine the optimal configuration of the element's excitations based on the maximization of the Signal-to-Noise-plus-Interference-Ratio (SINR-based), or on the minimization of the total power received (MinPwr). In this scenario has been recently proposed an adaptive nulling technique adopting time-modulated linear array: this type of array introduces an additional degree of freedom (time) in the process synthesis increasing flexibility in the antenna design and in the power pattern shaping problem. The major inconvenient of time-modulated arrays is the generation of unwanted harmonics, the so called sideband radiation that represent a loss in term of radiated power. This project proposes study through a comparison of two techniques (SINR-based and MinPwr) based on the particle swarm algorithm to determine the optimal dynamic configuration of the array excitations in order to receive correctly the desired signal minimizing the interferences contributes and in the same time limiting the drawbacks of time-modulated array (stated before) considering a time-varying scenario: particle swarm algorithm shown its effectiveness in electromagnetics problems solution, in particular on the problem of synthesis of adaptive arrays in time-varying scenarios and on the problem time modulated array synthesis with low SR.

Item Type: Student Project Guidelines (Masters)
Uncontrolled Keywords: Evolutionary Optimization, Array Synthesis, Time Modulated Arrays
Subjects: D Didactics > DM Master Degree
M Methodologies > M EA Evolutionary Algorithms
URI: http://www.eledia.org/students-reports/id/eprint/671

Actions (login required)

View Item View Item