Airfoil Optimization using a physics-constrained neural network
Duration: 9 mins 50 secs
Share this media item:
Embed this media item:
Embed this media item:
About this item
Description: | Presentation to the American Physical Society at the 2021 meeting of the Division of Fluid Dynamics |
---|
Created: | 2021-11-25 20:48 |
---|---|
Collection: | Matthew Juniper conference presentations |
Publisher: | University of Cambridge |
Copyright: | Dr Yubiao Sun |
Language: | eng (English) |
Keywords: | PINN; Neural Networks; Optimization; |
Abstract: | Shape optimization, which involves modelling and optimization of a designed geometry to achieve targeted goals, is a prominent but challenging topic. The complexity and high dimensionality of the search space make some existing methods computationally expensive. In this talk, we propose a physics-informed neural networks (PINN) as a solver for the flow around an object and also a provider of gradient information for shape optimization. In this study a PINN is employed to solve the flow around an airfoil and to optimize its shape to maximize lift over drag. The point cloud used for training the PINN is adapted using the gradient of the objective functions so that accurate flow fields can be obtained for geometries closer to the optimal shape. |
---|
Available Formats
Format | Quality | Bitrate | Size | |||
---|---|---|---|---|---|---|
MPEG-4 Video | 640x360 | 825.13 kbits/sec | 59.43 MB | View | Download | |
WebM | 640x360 | 350.56 kbits/sec | 25.29 MB | View | Download | |
iPod Video | 480x360 | 472.23 kbits/sec | 34.01 MB | View | Download | |
MP3 | 44100 Hz | 249.94 kbits/sec | 18.28 MB | Listen | Download | |
Auto * | (Allows browser to choose a format it supports) |