Detection of Horizontal Two-Phase Flow Patterns Through a Neural Network Model


Autoria(s): Crivelaro,K. C. O.; Seleghim Jr.,P.; Hervieu,E.
Data(s)

01/03/2002

Resumo

One of the main problems related to the transport and manipulation of multiphase fluids concerns the existence of characteristic flow patterns and its strong influence on important operation parameters. A good example of this occurs in gas-liquid chemical reactors in which maximum efficiencies can be achieved by maintaining a finely dispersed bubbly flow to maximize the total interfacial area. Thus, the ability to automatically detect flow patterns is of crucial importance, especially for the adequate operation of multiphase systems. This work describes the application of a neural model to process the signals delivered by a direct imaging probe to produce a diagnostic of the corresponding flow pattern. The neural model is constituted of six independent neural modules, each of which trained to detect one of the main horizontal flow patterns, and a last winner-take-all layer responsible for resolving when two or more patterns are simultaneously detected. Experimental signals representing different bubbly, intermittent, annular and stratified flow patterns were used to validate the neural model.

Formato

text/html

Identificador

http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0100-73862002000100009

Idioma(s)

en

Publicador

The Brazilian Society of Mechanical Sciences

Fonte

Journal of the Brazilian Society of Mechanical Sciences v.24 n.1 2002

Palavras-Chave #multiphase flow #flow patterns #neural networks #signal analysis
Tipo

journal article