Computer Vision Algorithm for Characterization of a Turbulent Gas–Liquid Jet

Author:

Starodumov Ilya1ORCID,Sokolov Sergey12ORCID,Mikushin Pavel1ORCID,Nikishina Margarita1ORCID,Mityashin Timofey1ORCID,Makhaeva Ksenia1ORCID,Blyakhman Felix12ORCID,Chernushkin Dmitrii3ORCID,Nizovtseva Irina1ORCID

Affiliation:

1. Laboratory of Multiphase Physical and Biological Media Modeling, Ural Federal University, Ekaterinburg 620000, Russia

2. Department of Biomedical Physics and Engineering, Ural State Medical University, Ekaterinburg 620028, Russia

3. NPO Biosintez Ltd., Moscow 109390, Russia

Abstract

A computer vision algorithm to determine the parameters of a two-phase turbulent jet of a water-gas mixture traveling at a velocity in the range of 5–10 m/s was developed in order to evaluate the hydrodynamic efficiency of mass exchange apparatuses in real time, as well as to predict the gas exchange rate. The algorithm is based on threshold segmentation, the active contours method, the regression of principal components method, and the comparison of feature overlays, which allows the stable determination of jet boundaries and is a more efficient method when working with low-quality data than traditional implementations of the Canny method. Based on high-speed video recordings of jets, the proposed algorithm allows the calculation of key characteristics of jets: the velocity, angle of incidence, structural density, etc. Both the algorithm’s description and a test application based on video recordings of a real jet created on an experimental prototype of a jet bioreactor are discussed. The results are compared with computational fluid dynamics modeling and theoretical predictions, and good agreement is demonstrated. The presented algorithm itself represents the basis for a real-time control system for aerator operation in jet bioreactors, as well as being used in laboratory jet stream installations for the accumulation of big data on the structure and dynamic properties of jets.

Funder

Ministry of Science and Higher Education of the Russian Federation (Ural Federal University Program of Development

Publisher

MDPI AG

Subject

General Engineering

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