Enhancing Arterial Blood Flow Simulations through Physics-Informed Neural Networks
Shivam Bhargava, Nagaiah Chamakuri

TL;DR
This paper presents advanced physics-informed neural network techniques for efficient, mesh-free simulation of arterial blood flow, overcoming traditional CFD limitations and improving stability and accuracy in hemodynamic modeling.
Contribution
Introduction of weighted PINNs and WCPINNs with domain decomposition for improved arterial blood flow simulation accuracy and computational efficiency.
Findings
Weighted PINNs outperform traditional PINNs in blood flow simulations.
PINNs naturally mitigate backflow instabilities in complex flow models.
Parallel training of sub-domain neural networks enhances computational efficiency.
Abstract
This study introduces a computational approach leveraging Physics-Informed Neural Networks (PINNs) for the efficient computation of arterial blood flows, particularly focusing on solving the incompressible Navier-Stokes equations by using the domain decomposition technique. Unlike conventional computational fluid dynamics methods, PINNs offer advantages by eliminating the need for discretized meshes and enabling the direct solution of partial differential equations (PDEs). In this paper, we propose the weighted Extended Physics-Informed Neural Networks (WXPINNs) and weighted Conservative Physics-Informed Neural Networks (WCPINNs), tailored for detailed hemodynamic simulations based on generalized space-time domain decomposition techniques. The inclusion of multiple neural networks enhances the representation capacity of the weighted PINN methods. Furthermore, the weighted PINNs can be…
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Taxonomy
TopicsCardiovascular Health and Disease Prevention
