FlamePINN-1D: Physics-informed neural networks to solve forward and inverse problems of 1D laminar flames
Jiahao Wu, Su Zhang, Yuxin Wu, Guihua Zhang, Xin Li, Hai Zhang

TL;DR
FlamePINN-1D introduces a physics-informed neural network framework for solving forward and inverse problems in 1D laminar flames, demonstrating high accuracy, robustness, and potential for chemical mechanism optimization.
Contribution
This work develops FlamePINN-1D, a unified, mesh-free neural network approach integrating combustion physics for forward and inverse flame problems, with strategies for robust learning.
Findings
Successfully solved various flame problems with high accuracy.
Demonstrated inverse parameter inference from noisy data.
Validated potential for chemical mechanism optimization.
Abstract
Given the existence of various forward and inverse problems in combustion studies and applications that necessitate distinct methods for resolution, a framework to solve them in a unified way is critically needed. A promising approach is the integration of machine learning methods with governing equations of combustion systems, which exhibits superior generality and few-shot learning ability compared to purely data-driven methods. In this work, the FlamePINN-1D framework is proposed to solve the forward and inverse problems of 1D laminar flames based on physics-informed neural networks. Three cases with increasing complexity have been tested: Case 1 are freely-propagating premixed (FPP) flames with simplified physical models, while Case 2 and Case 3 are FPP and counterflow premixed (CFP) flames with detailed models, respectively. For forward problems, FlamePINN-1D aims to solve the…
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Taxonomy
TopicsRadiative Heat Transfer Studies · Combustion and flame dynamics · Model Reduction and Neural Networks
