2024
DOI: 10.1002/cjce.25556
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Development of a deep neural network and empirical model for predicting local gas holdup profiles in bubble columns

Sebastián Uribe,
Ahmed Alalou,
Mario E. Cordero
et al.

Abstract: Estimating local gas holdup profiles in bubble columns is key for their performance evaluation and optimization, as well as for design and scale‐up tasks. Up to the current day, there are important limitations in the accuracy and range of applicability of the available models in literature. Two alternatives for the prediction of such local fields can be found in the application of empirical models and the development of deep neural networks (DNN). The main drawback preventing the application of these technique… Show more

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