Authors
IE Poletaev, Konstantin S Pervunin, Mikhail P Tokarev
Publication date
2016/10/1
Journal
Journal of Physics: Conference Series
Volume
754
Issue
7
Pages
072002
Publisher
IOP Publishing
Description
Two-phase bubble flows have been used in many technological and energy processes as processing oil, chemical and nuclear reactors. This explains large interest to experimental and numerical studies of such flows last several decades. Exploiting of optical diagnostics for analysis of the bubble flows allows researchers obtaining of instantaneous velocity fields and gaseous phase distribution with the high spatial resolution non-intrusively. Behavior of light rays exhibits an intricate manner when they cross interphase boundaries of gaseous bubbles hence the identification of the bubbles images is a complicated problem. This work presents a method of bubbles images identification based on a modern technology of deep learning called convolutional neural networks (CNN). Neural networks are able to determine overlapping, blurred, and non-spherical bubble images. They can increase accuracy of the bubble …
Total citations
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Scholar articles
IE Poletaev, KS Pervunin, MP Tokarev - Journal of Physics: Conference Series, 2016