A novel physics informed deep learning method for simulation-based modelling

Date

2021-01-04

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Publisher

AIAA

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Conference paper

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Citation

Karali H, Umut Demirezen M, et al., (2021) A novel physics informed deep learning method for simulation-based modelling. In: AIAA SciTech Forum 2021, 11-15 and 19-21 January 2021, Virtual Event

Abstract

In this paper, we present a brief review of the state of the art physics informed deep learning methodology and examine its applicability, limits, advantages, and disadvantages via several applications. The main advantage of this method is that it can predict the solution of the partial differential equations by using only boundary and initial conditions without the need for any training data or pre-process phase. Using physics informed neural network algorithms, it is possible to solve partial differential equations in many different problems encountered in engineering studies with a low cost and time instead of traditional numerical methodologies. A direct comparison between the initial results of the current model, analytical solutions, and computational fluid dynamics methods shows very good agreement. The proposed methodology provides a crucial basis for solution of more advance partial differential equation systems and offers a new analysis and mathematical modelling tool for aerospace applications

Description

Software Description

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Github

Keywords

Modeling and Simulation Technologies

DOI

Rights

Attribution-NonCommercial 4.0 International

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