Digital rheometer twins: Learning the hidden rheology of complex fluids through rheology-informed graph neural networks.
Mohammadamin MahmoudabadbozchelouKrutarth M KamaniSimon A RogersSafa JamaliPublished in: Proceedings of the National Academy of Sciences of the United States of America (2022)
SignificanceScience-based data-driven methods that can describe the rheological behavior of complex fluids can be transformative across many disciplines. Digital rheometer twins, which are developed here, can significantly reduce the cost, time, and energy required to characterize complex fluids and predict their future behavior. This is made possible by combining two different methods of informing neural networks with the rheological underpinnings of a system, resulting in quantitative recovery of a gel's response to different flow protocols. The platform developed here is general enough that it can be extended to areas well beyond complex fluids modeling.
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