2023
DOI: 10.48550/arxiv.2301.04998
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Machine learning methods for prediction of breakthrough curves in reactive porous media

Abstract: Reactive flows in porous media play an important role in our life and are crucial for many industrial, environmental and biomedical applications. Very often the concentration of the species at the inlet is known, and the so-called breakthrough curves, measured at the outlet, are the quantities which could be measured or computed numerically. The measurements and the simulations could be time-consuming and expensive, and machine learning and Big Data approaches can help to predict breakthrough curves at lower c… Show more

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