Revista: | Journal of the Brazilian Society of Mechanical Sciences and Engineering |
Base de datos: | PERIÓDICA |
Número de sistema: | 000312356 |
ISSN: | 1678-5878 |
Autores: | Zarate, Luis E1 |
Instituciones: | 1Pontificia Universidade Catolica de Minas Gerais, Departamento de Ciencia da Computacao, Belo Horizonte, Minas Gerais. Brasil |
Año: | 2006 |
Periodo: | Ene-Mar |
Volumen: | 28 |
Número: | 1 |
Paginación: | 111-117 |
País: | Brasil |
Idioma: | Inglés |
Tipo de documento: | Artículo |
Enfoque: | Experimental |
Resumen en inglés | The mathematical modeling of the rolling process involves several parameters that may lead to non-linear equations of difficult analytical solution. Such is the case of Alexander's model (Alexander 1972), considered one of the most complete in the rolling theory. This model requires excessive computational time, which prevents its application in on-line control and supervision systems. In this paper, the representation of the cold rolling process through Neural Networks trained with data obtained by Alexander's model is presented. This representation is based in sensitivity factors obtained by differentiating a neural network previously trained. The representation allows to obtain equations of the process for different operation points with low computational time. On the other hand, the representation based in sensitivity factors has predictive characteristics that can be used in predictive control techniques. Through predictive model, it is possible to eliminate the time delay in the feedback loop introduced by measurements of the outgoing thickness, normally with X-ray sensors. The predictive model can work as a virtual sensor implemented via software. An example of the application to a single stand rolling mill is presented |
Disciplinas: | Ingeniería, Matemáticas, Ciencias de la computación |
Palabras clave: | Ingeniería de control, Ingeniería mecánica, Laminado, Acero, Redes neuronales, Control predictivo, Software |
Keyword: | Engineering, Mathematics, Computer science, Control engineering, Mechanical engineering, Rolling, Steel, Neural networks, Predictive control, Software |
Texto completo: | Texto completo (Ver PDF) |