DETERMINATING APPROXIMATION SOLUTION OF PARTIAL DIFFERENTIAL EQUATION USING PHYSICS-INFORMED NEURAL NETWORK (PINN)

We discuss the implementation of physics-informed neural network (abbreviated as PINN), which is neural networks that are trained to solve supervised learning problems, with the additional requirement of obeying certain physical laws expressed as partial differential equations. This is a relative...

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Main Author: Agnes Priscilla, Cyntia
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/82343
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:82343
spelling id-itb.:823432024-07-08T08:28:11ZDETERMINATING APPROXIMATION SOLUTION OF PARTIAL DIFFERENTIAL EQUATION USING PHYSICS-INFORMED NEURAL NETWORK (PINN) Agnes Priscilla, Cyntia Indonesia Final Project physics-informed neural network, partial differential equation, transport, burger, KdV INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/82343 We discuss the implementation of physics-informed neural network (abbreviated as PINN), which is neural networks that are trained to solve supervised learning problems, with the additional requirement of obeying certain physical laws expressed as partial differential equations. This is a relatively new approach to obtaining approximate solutions to a partial differential equations. The neural network model first needs to be trained using data solution of the differential equation, in the form of analytical or numerical solutions, which must be obtained first. In this final project, the neural network (PINN) approach is implemented through several partial differential equations, including the transport equation, the nonlinear Burger equation, and the solitary wave propagation from the KdV equation. We also discuss the influence of computational parameters on the quality of the approximation solution. Experimental results show that PINN method effectively provides predictions of partial differential equation solutions that closely approximate the exact solutions. Furthermore, increasing the number of iterations, training data, and collocation points leads to more accurate solution predictions. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description We discuss the implementation of physics-informed neural network (abbreviated as PINN), which is neural networks that are trained to solve supervised learning problems, with the additional requirement of obeying certain physical laws expressed as partial differential equations. This is a relatively new approach to obtaining approximate solutions to a partial differential equations. The neural network model first needs to be trained using data solution of the differential equation, in the form of analytical or numerical solutions, which must be obtained first. In this final project, the neural network (PINN) approach is implemented through several partial differential equations, including the transport equation, the nonlinear Burger equation, and the solitary wave propagation from the KdV equation. We also discuss the influence of computational parameters on the quality of the approximation solution. Experimental results show that PINN method effectively provides predictions of partial differential equation solutions that closely approximate the exact solutions. Furthermore, increasing the number of iterations, training data, and collocation points leads to more accurate solution predictions.
format Final Project
author Agnes Priscilla, Cyntia
spellingShingle Agnes Priscilla, Cyntia
DETERMINATING APPROXIMATION SOLUTION OF PARTIAL DIFFERENTIAL EQUATION USING PHYSICS-INFORMED NEURAL NETWORK (PINN)
author_facet Agnes Priscilla, Cyntia
author_sort Agnes Priscilla, Cyntia
title DETERMINATING APPROXIMATION SOLUTION OF PARTIAL DIFFERENTIAL EQUATION USING PHYSICS-INFORMED NEURAL NETWORK (PINN)
title_short DETERMINATING APPROXIMATION SOLUTION OF PARTIAL DIFFERENTIAL EQUATION USING PHYSICS-INFORMED NEURAL NETWORK (PINN)
title_full DETERMINATING APPROXIMATION SOLUTION OF PARTIAL DIFFERENTIAL EQUATION USING PHYSICS-INFORMED NEURAL NETWORK (PINN)
title_fullStr DETERMINATING APPROXIMATION SOLUTION OF PARTIAL DIFFERENTIAL EQUATION USING PHYSICS-INFORMED NEURAL NETWORK (PINN)
title_full_unstemmed DETERMINATING APPROXIMATION SOLUTION OF PARTIAL DIFFERENTIAL EQUATION USING PHYSICS-INFORMED NEURAL NETWORK (PINN)
title_sort determinating approximation solution of partial differential equation using physics-informed neural network (pinn)
url https://digilib.itb.ac.id/gdl/view/82343
_version_ 1822009744553934848