Fast Modeling and Understanding Fluid Dynamics Systems with Encoder-Decoder Networks
Rohan Thavarajah, Xiang Zhai, Zheren Ma, David Castineira

TL;DR
This paper demonstrates that deep learning models can accurately simulate two-dimensional fluid dynamics governed by physical laws, offering much faster predictions and aiding in inverse problem solving through efficient training and sensitivity analysis.
Contribution
The study introduces a deep learning approach for fluid dynamics simulation that respects physical laws, compares different temporal treatments, and applies adversarial methods for improved accuracy.
Findings
Deep learning models can be trained quickly with limited data.
The models achieve high accuracy in simulating fluid dynamics.
Faster forward computation enables efficient inverse problem solving.
Abstract
Is a deep learning model capable of understanding systems governed by certain first principle laws by only observing the system's output? Can deep learning learn the underlying physics and honor the physics when making predictions? The answers are both positive. In an effort to simulate two-dimensional subsurface fluid dynamics in porous media, we found that an accurate deep-learning-based proxy model can be taught efficiently by a computationally expensive finite-volume-based simulator. We pose the problem as an image-to-image regression, running the simulator with different input parameters to furnish a synthetic training dataset upon which we fit the deep learning models. Since the data is spatiotemporal, we compare the performance of two alternative treatments of time; a convolutional LSTM versus an autoencoder network that treats time as a direct input. Adversarial methods are…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings · Solana Customer Service Number +1-833-534-1729 · Sigmoid Activation · Tanh Activation · Long Short-Term Memory
