TL;DR
This paper introduces a neural network method to compute and visualize stream functions from vector fields, enabling extraction of stream surfaces for flow analysis with customizable solutions.
Contribution
It presents a novel neural implicit approach to learn stream functions with optional constraints, improving flow visualization and analysis capabilities.
Findings
Effective in synthetic and simulated vector fields
Allows customizable stream surface extraction
Outperforms existing implicit solutions
Abstract
We present a neural network approach to compute stream functions, which are scalar functions with gradients orthogonal to a given vector field. As a result, isosurfaces of the stream function extract stream surfaces, which can be visualized to analyze flow features. Our approach takes a vector field as input and trains an implicit neural representation to learn a stream function for that vector field. The network learns to map input coordinates to a stream function value by minimizing the inner product of the gradient of the neural network's output and the vector field. Since stream function solutions may not be unique, we give optional constraints for the network to learn particular stream functions of interest. Specifically, we introduce regularizing loss functions that can optionally be used to generate stream function solutions whose stream surfaces follow the flow field's…
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