Communications and Network

Volume 13, Issue 1 (February 2021)

ISSN Print: 1949-2421   ISSN Online: 1947-3826

Google-based Impact Factor: 0.63  Citations  

Physics-Aware Deep Learning on Multiphase Flow Problems

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DOI: 10.4236/cn.2021.131001    647 Downloads   2,114 Views  Citations
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ABSTRACT

In this article, a physics aware deep learning model is introduced for multiphase flow problems. The deep learning model is shown to be capable of capturing complex physics phenomena such as saturation front, which is even challenging for numerical solvers due to the instability. We display the preciseness of the solution domain delivered by deep learning models and the low cost of deploying this model for complex physics problems, showing the versatile character of this method and bringing it to new areas. This will require more allocation points and more careful design of the deep learning model architectures and residual neural network can be a potential candidate.

Share and Cite:

Lin, Z. (2021) Physics-Aware Deep Learning on Multiphase Flow Problems. Communications and Network, 13, 1-11. doi: 10.4236/cn.2021.131001.

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