Modelo de predição para análise comparativa de técnicas neuro-fuzzy e de regressão
Data
Autores
Título da Revista
ISSN da Revista
Título de Volume
Editor
Resumo
We investigate strategies to define prediction models for a quality parameter of an industrial process. We estimate this variable using computational intelligence and in special regression methods. The main contribution of this paper is the comparative analysis of heuristic training models to create the prediction system. We propose two main paradigms to obtain the system, machine learning and hybrid artificial neural networks. The resulting system is a prototype for the intelligent supervision of a real-time production process. Statistical tools are used to compare the performance of the regression based predictor and the neuro-fuzzy based predictor, considering the degree of adaptation of the system to the problem and its generalization ability.
