Accelerating high order discontinuous Galerkin solvers using neural networks: Wall bounded flows
Journal of Physics: Conference Series, ISSN: 1742-6596, Vol: 2753, Issue: 1
2024
- 1Citations
- 6Captures
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Conference Paper Description
High order solvers are accurate but computationally expensive as they require small time steps to advance the solution in time. In this work we include a corrective forcing to a low order solution to improve the accuracy while advancing in time with larger time steps, and achieve fast computations. The work uses a discontinuous Galerkin framework, where the polynomial order, inside each mesh element, can be varied to provide low or high accuracy. The corrective forcing is included for each high order Gauss nodal point in the mesh. This work is a continuation of [1, 2], where we extend the methodology to wall bounded flows. Namely, we adapt the methodology to a turbulent channel at Reτ = 182. In this case, we use three neural networks to correct different regions of the flow, which are distinguished by their y+ distance to the wall. The methodology is able to correct the low resolution simulation to attain flow statistics that are comparable to high order simulations. We include comparisons for the mean, Reynolds stresses and shear stress on the wall. We achieve good predictions using the corrected low order solution, in mean velocity and its corresponded fluctuations, as well as the shear stress on the wall.
Bibliographic Details
http://www.scopus.com/inward/record.url?partnerID=HzOxMe3b&scp=85193062538&origin=inward; http://dx.doi.org/10.1088/1742-6596/2753/1/012023; https://iopscience.iop.org/article/10.1088/1742-6596/2753/1/012023; https://dx.doi.org/10.1088/1742-6596/2753/1/012023; https://validate.perfdrive.com/9730847aceed30627ebd520e46ee70b2/?ssa=4bf9beec-8806-43b5-9f9f-8aeae8758d4f&ssb=66342256772&ssc=https%3A%2F%2Fiopscience.iop.org%2Farticle%2F10.1088%2F1742-6596%2F2753%2F1%2F012023&ssi=ce9dbf65-cnvj-49d9-a780-7f7503ff6ad2&ssk=botmanager_support@radware.com&ssm=99777282416004782788059430867952389&ssn=d82dec1b1acb660dc9c4227d9495bad38b581bcddbfa-b2e6-4a73-96e899&sso=3c1bf11c-e6be629105801bc26fbd31e5364c646c48195cfa454b55d2&ssp=26171014421739317269173996734710334&ssq=39789738814435759872979322554569788075613&ssr=NTIuMy4yMTcuMjU0&sst=com.plumanalytics&ssu=&ssv=&ssw=&ssx=eyJ1em14IjoiN2Y5MDAwODczZGY4ZmMtMDBkZC00MzI3LThlZGYtZWU0N2FlMDJiNzBkOC0xNzM5Mzc5MzIyOTI0NjA4ODIxMzUxLWFiYmQ3MDk4MjcyMWRlMDI3ODgwMiIsIl9fdXptZiI6IjdmNjAwMDc3Nzk5YTEzLWQ5MWUtNDA4Ny1iMmJkLTk4NDhkOTE5NGE2MzE3MzkzNzkzMjI5MjQ2MDg4MjEzNTEtYWIyNzRkOWY0NTgxZjg1Nzc4ODAyIiwicmQiOiJpb3Aub3JnIn0=
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