Numerical Approximation in CFD Problems Using Physics Informed Machine Learning
Siddharth Rout, Vikas Dwivedi, Balaji Srinivasan

TL;DR
This paper introduces a physics-informed neural network method called DPINN for solving advection-dominant CFD problems efficiently, demonstrating high accuracy and potential for real-time applications.
Contribution
The paper proposes the Distributed Physics Informed Neural Network (DPINN), enhancing existing methods to effectively solve advection-dominant problems in CFD with low computational cost.
Findings
DPINN successfully solves advection-dominant problems with high accuracy.
ELM-based variant improves speed and simplicity of the solution process.
The method is validated on steady and unsteady advection-diffusion problems.
Abstract
The thesis focuses on various techniques to find an alternate approximation method that could be universally used for a wide range of CFD problems but with low computational cost and low runtime. Various techniques have been explored within the field of machine learning to gauge the utility in fulfilling the core ambition. Steady advection diffusion problem has been used as the test case to understand the level of complexity up to which a method can provide solution. Ultimately, the focus stays over physics informed machine learning techniques where solving differential equations is possible without any training with computed data. The prevalent methods by I.E. Lagaris et.al. and M. Raissi et.al are explored thoroughly. The prevalent methods cannot solve advection dominant problems. A physics informed method, called as Distributed Physics Informed Neural Network (DPINN), is proposed to…
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Taxonomy
TopicsMachine Learning and ELM · Model Reduction and Neural Networks · Neural Networks and Applications
MethodsDiffusion
