metadata
language:
- en
license: mit
tags:
- physics
- pde
- pino
- fno
- neural-operator
- burgers-equation
- scientific-computing
- fluid-dynamics
pretty_name: PIFNO-LAW (Learned Adaptive Weighting for Physics-Informed FNO)
size_categories:
- 1GB<n<10GB
π Dataset Description
This dataset provides comprehensive one-dimensional inviscid Burgers' equation simulations, explicitly generated for training and evaluating advanced operator learning architectures.
1D Inviscid Burgers' Equation
- Equation:
- Initial Conditions: Drawn from a Gaussian Random Field (GRF) with a squared exponential kernel ( ).
- Solver: High-fidelity Fifth-order WENO (WENO5) with an HLL Riemann solver and RK3 time integration.
- Goal: Evaluate accurate resolution of nonlinear wave steepening and shock formation.
π Data Structure
1D Benchmark (burgers.h5)
- Resolution: 1,024 spatial points, 51 time steps.
- Fields:
x: Spatial gridt: Temporal gridu: Scalar solution field