Physics-informed PointNet: A deep learning solver for steady-state incompressible flows and thermal fields on multiple sets of irregular geometries

We present a novel physics-informed deep learning framework for solving steady-state incompressible flow on multiple sets of irregular geometries by incorporating two main elements: using a point-cloud based neural network to capture geometric features of computational domains, and using the mean sq...

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Veröffentlicht in:Journal of computational physics 2022-11, Vol.468, p.111510, Article 111510
Hauptverfasser: Kashefi, Ali, Mukerji, Tapan
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description We present a novel physics-informed deep learning framework for solving steady-state incompressible flow on multiple sets of irregular geometries by incorporating two main elements: using a point-cloud based neural network to capture geometric features of computational domains, and using the mean squared residuals of the governing partial differential equations, boundary conditions, and sparse observations as the loss function of the network to capture the physics. While the solution of the continuity and Navier-Stokes equations is a function of the geometry of the computational domain, current versions of physics-informed neural networks have no mechanism to express this functionally in their outputs, and thus are restricted to obtain the solutions only for one computational domain with each training procedure. Using the proposed framework, three new facilities become available. First, the governing equations are solvable on a set of computational domains containing irregular geometries with high variations with respect to each other but requiring training only once. Second, after training the introduced framework on the set, it is now able to predict the solutions on domains with unseen geometries from seen and unseen categories as well. The former and the latter both lead to savings in computational costs. Finally, all the advantages of the point-cloud based neural network for irregular geometries, already used for supervised learning, are transferred to the proposed physics-informed framework. The effectiveness of our framework is shown through the method of manufactured solutions and thermally-driven flow for forward and inverse problems. •PIPN is a novel physics-informed deep learning framework.•PIPN solves forward and inverse time-independent problems on several irregular domains by training only once.•PIPN overcomes the shortcoming of regular PINNs that need to be retrained for any single domain with a new geometry.•Applications of PIPN are shown for incompressible flows and thermal fields.
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subjects Automatic differentiation
Boundary conditions
Cloud computing
Computational physics
Computing costs
Deep learning
Domains
Equilibrium flow
Fluid flow
Incompressible flow
Inverse problems
Irregular geometries
Neural networks
Partial differential equations
Physics
Physics-informed deep learning
PointNet
Steady state
Thermally-driven flow
Training
title Physics-informed PointNet: A deep learning solver for steady-state incompressible flows and thermal fields on multiple sets of irregular geometries
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