TY - JOUR
T1 - Development and evaluation of data-driven modeling for bubble size in turbulent air-water bubbly flows using artificial multi-layer neural networks
AU - Jung, Hokyo
AU - Yoon, Serin
AU - Kim, Youngjae
AU - Lee, Jun Ho
AU - Park, Hyungmin
AU - Kim, Dongjoo
AU - Kim, Jungwoo
AU - Kang, Seongwon
N1 - Publisher Copyright:
© 2019 Elsevier Ltd
PY - 2020/2/23
Y1 - 2020/2/23
N2 - In the present study, we consider a new reliable model of the bubble size based on multi-layer artificial neural networks (ANN). A multi-layer ANN is used to establish a function for the bubble size without any assumption on the form. In the training procedure, the proposed ANN is trained using data sets collected from open literature and experiments performed in the present study. An excellent agreement was obtained between the trained ANN and experimental data in the bubble size. Also, sensitivity analyses along with principal component analysis and random forest method provide important physical parameters for the bubble size. Next, in order to rigorously evaluate the prediction capability of the present model, flow simulations were conducted for turbulent bubbly flows, for which experimental data are available. The present validation results show that a regime-adaptive data-driven model for the bubble size achieves successful estimation for both wall and core peaking regimes.
AB - In the present study, we consider a new reliable model of the bubble size based on multi-layer artificial neural networks (ANN). A multi-layer ANN is used to establish a function for the bubble size without any assumption on the form. In the training procedure, the proposed ANN is trained using data sets collected from open literature and experiments performed in the present study. An excellent agreement was obtained between the trained ANN and experimental data in the bubble size. Also, sensitivity analyses along with principal component analysis and random forest method provide important physical parameters for the bubble size. Next, in order to rigorously evaluate the prediction capability of the present model, flow simulations were conducted for turbulent bubbly flows, for which experimental data are available. The present validation results show that a regime-adaptive data-driven model for the bubble size achieves successful estimation for both wall and core peaking regimes.
KW - Artificial neural network
KW - Bubble size
KW - Turbulent bubbly flows
KW - Two-fluid model
UR - https://www.scopus.com/pages/publications/85076022487
U2 - 10.1016/j.ces.2019.115357
DO - 10.1016/j.ces.2019.115357
M3 - Article
AN - SCOPUS:85076022487
SN - 0009-2509
VL - 213
JO - Chemical Engineering Science
JF - Chemical Engineering Science
M1 - 115357
ER -