Artificial Neural Networks for Gas‐Liquid Flow Regime Classification in Small Channels

Author:

Haase Stefan12ORCID,May Henry2,Hiller Andreas2,Schubert Markus2ORCID

Affiliation:

1. Hochschule für Technik und Wirtschaft Dresden Chair of Process Engineering Friedrich‐List‐Platz 1 01069 Dresden Germany

2. Technische Universität Dresden Chair of Chemical Process Engineering 01062 Dresden Germany

Abstract

AbstractThe reliable design of multiphase micro‐structured apparatus requires a precise knowledge of the internal flow regime. Previous research indicated that classifiers based on artificial neural networks (ANN) are relatively simple to develop and provide a reasonable accuracy when trained with data for specific inlet designs. This paper introduces advanced ANN classifiers capable of predicting all relevant flow regimes regardless of the inlet design with a recall of 94 % and above for Taylor, churn, dispersed, rivulet, and parallel flows, between 89 % and 94 % for annular and bubbly flows, and 83 % for Taylor‐annular flow. These classifiers were trained and validated by using more than 13,000 experimental data points extracted from 97 flow maps.

Publisher

Wiley

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