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FlamePINN-1D

Physics-informed neural networks to solve forward and inverse problems of 1D laminar flames.

Codes for the paper: FlamePINN-1D: Physics-informed neural networks to solve forward and inverse problems of 1D laminar flames.

Preprint version: https://arxiv.org/abs/2406.09071.

The mechanism file (1S_CH4_MP.yaml) must be copied to the mechanism folder of Cantera. (When using Windows with Anaconda, the folder path is: "...\anaconda\Lib\site-packages\cantera\data\".)

Framework:

framework

Flames:

Case 1 (simplified freely-propagating premixed flames):

Case 1

Case 2 (detailed freely-propagating premixed flames):

Case 2

Case 3 (detailed counterflow premixed flames):

Case 3