masterThesis
Meta-heurísticas aplicadas à identificação de sistemas
Fecha
2017-12-08Registro en:
SEVERINO, Alcemy Gabriel Vitor. Meta-heurísticas aplicadas à identificação de sistemas. 2017. 73f. Dissertação (Mestrado em Engenharia Mecatrônica) - Centro de Tecnologia, Universidade Federal do Rio Grande do Norte, Natal, 2017.
Autor
Severino, Alcemy Gabriel Vitor
Resumen
System identification has the goal to determine mathematical models to describe dynamic
characteristics of systems from observations. The identification process is generally
divided into the following steps: i) experimental data collection, ii) determination
of model structure, iii) parameter estimation and iv) model validation. In this work, the
problem determining of structures is investigated. An algorithm was developed to determine
the structure of polynomial NARX models using optimization techniques known as
meta-heuristics. Unlike traditional methods, metaheuristics use a set of possible solutions
and strategies, usually based on nature, to find the solution of the case applied. Among
the techniques studied are the genetic algorithm, the particle swarm optimization, and
the bat algorithm. The methodology proposed in this work was applied to identify three
experimental examples: an electric heater, a buck converter and a pneumatic valve. The
results demonstrate that metaheuristics can be applied to the problem of the selection of
polynomial NARX model structures.