Void fraction measurement using modal decomposition and ensemble learning in vertical annular flow
0202 electrical engineering, electronic engineering, information engineering
02 engineering and technology
DOI:
10.1016/j.ces.2021.116929
Publication Date:
2021-07-06T14:49:11Z
AUTHORS (8)
ABSTRACT
Abstract The void fraction is a key parameter for calculating the average density and pressure gradient and analyzing the flow conditions in gas–liquid two-phase flow. However, due to the complexity and variability of gas–liquid two-phase annular flow, the void fraction measurement has been an unsolved scientific problem in scientific research and industrial applications. In this study, a new high-precision real-time void fraction prediction model is proposed by combining the energy feature extraction from the empirical modal decomposition (EMD) method, the anomaly filtering from the kernel ridge regression (KRR), and ensemble learning from the extreme gradient boosting (XGBoost). To further validate the prediction performance of the model, it is compared with the lasso regression model (LASSO) based on the EMD decomposition method and a single XGBoost model. The results show that the prediction accuracy can be guaranteed in the case of anomalous energy eigenvalues.
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