TL;DR
This paper introduces a frame-independent, nonlocal neural network model for constitutive modeling that can handle arbitrary grid arrangements, improving robustness and flexibility in complex fluid dynamics simulations.
Contribution
The paper presents a novel vector-cloud neural network that is invariant to translation, rotation, and point ordering, enabling effective nonlocal modeling on unstructured grids.
Findings
Demonstrated effectiveness on scalar transport PDEs in complex geometries
Achieved invariance to coordinate transformations and point ordering
Suitable for unstructured meshes in fluid simulations
Abstract
Constitutive models are widely used for modeling complex systems in science and engineering, where first-principle-based, well-resolved simulations are often prohibitively expensive. For example, in fluid dynamics, constitutive models are required to describe nonlocal, unresolved physics such as turbulence and laminar-turbulent transition. However, traditional constitutive models based on partial differential equations (PDEs) often lack robustness and are too rigid to accommodate diverse calibration datasets. We propose a frame-independent, nonlocal constitutive model based on a vector-cloud neural network that can be learned with data. The model predicts the closure variable at a point based on the flow information in its neighborhood. Such nonlocal information is represented by a group of points, each having a feature vector attached to it, and thus the input is referred to as vector…
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