Tutorial update and small fixes * Tutorials update + Tutorial FNO * Create a metric tracker callback * Update PINN for logging * Update plotter for plotting * Small fix LabelTensor * Small fix FNO --------- Co-authored-by: Dario Coscia <dariocoscia@cli-10-110-13-250.WIFIeduroamSTUD.units.it> Co-authored-by: Dario Coscia <dariocoscia@dhcp-176.eduroam.sissa.it>
191 lines
7.1 KiB
ReStructuredText
191 lines
7.1 KiB
ReStructuredText
Tutorial 3: resolution of wave equation with hard constraint PINNs.
|
|
===================================================================
|
|
|
|
The problem solution
|
|
~~~~~~~~~~~~~~~~~~~~
|
|
|
|
In this tutorial we present how to solve the wave equation using hard
|
|
constraint PINNs. For doing so we will build a costum torch model and
|
|
pass it to the ``PINN`` solver.
|
|
|
|
The problem is written in the following form:
|
|
|
|
:raw-latex:`\begin{equation}
|
|
\begin{cases}
|
|
\Delta u(x,y,t) = \frac{\partial^2}{\partial t^2} u(x,y,t) \quad \text{in } D, \\\\
|
|
u(x, y, t=0) = \sin(\pi x)\sin(\pi y), \\\\
|
|
u(x, y, t) = 0 \quad \text{on } \Gamma_1 \cup \Gamma_2 \cup \Gamma_3 \cup \Gamma_4,
|
|
\end{cases}
|
|
\end{equation}`
|
|
|
|
where :math:`D` is a square domain :math:`[0,1]^2`, and
|
|
:math:`\Gamma_i`, with :math:`i=1,...,4`, are the boundaries of the
|
|
square, and the velocity in the standard wave equation is fixed to one.
|
|
|
|
First of all, some useful imports.
|
|
|
|
.. code:: ipython3
|
|
|
|
import torch
|
|
|
|
from pina.problem import SpatialProblem, TimeDependentProblem
|
|
from pina.operators import laplacian, grad
|
|
from pina.geometry import CartesianDomain
|
|
from pina.solvers import PINN
|
|
from pina.trainer import Trainer
|
|
from pina.equation import Equation
|
|
from pina.equation.equation_factory import FixedValue
|
|
from pina import Condition, Plotter
|
|
|
|
Now, the wave problem is written in PINA code as a class, inheriting
|
|
from ``SpatialProblem`` and ``TimeDependentProblem`` since we deal with
|
|
spatial, and time dependent variables. The equations are written as
|
|
``conditions`` that should be satisfied in the corresponding domains.
|
|
``truth_solution`` is the exact solution which will be compared with the
|
|
predicted one.
|
|
|
|
.. code:: ipython3
|
|
|
|
class Wave(TimeDependentProblem, SpatialProblem):
|
|
output_variables = ['u']
|
|
spatial_domain = CartesianDomain({'x': [0, 1], 'y': [0, 1]})
|
|
temporal_domain = CartesianDomain({'t': [0, 1]})
|
|
|
|
def wave_equation(input_, output_):
|
|
u_t = grad(output_, input_, components=['u'], d=['t'])
|
|
u_tt = grad(u_t, input_, components=['dudt'], d=['t'])
|
|
nabla_u = laplacian(output_, input_, components=['u'], d=['x', 'y'])
|
|
return nabla_u - u_tt
|
|
|
|
def initial_condition(input_, output_):
|
|
u_expected = (torch.sin(torch.pi*input_.extract(['x'])) *
|
|
torch.sin(torch.pi*input_.extract(['y'])))
|
|
return output_.extract(['u']) - u_expected
|
|
|
|
conditions = {
|
|
'gamma1': Condition(location=CartesianDomain({'x': [0, 1], 'y': 1, 't': [0, 1]}), equation=FixedValue(0.)),
|
|
'gamma2': Condition(location=CartesianDomain({'x': [0, 1], 'y': 0, 't': [0, 1]}), equation=FixedValue(0.)),
|
|
'gamma3': Condition(location=CartesianDomain({'x': 1, 'y': [0, 1], 't': [0, 1]}), equation=FixedValue(0.)),
|
|
'gamma4': Condition(location=CartesianDomain({'x': 0, 'y': [0, 1], 't': [0, 1]}), equation=FixedValue(0.)),
|
|
't0': Condition(location=CartesianDomain({'x': [0, 1], 'y': [0, 1], 't': 0}), equation=Equation(initial_condition)),
|
|
'D': Condition(location=CartesianDomain({'x': [0, 1], 'y': [0, 1], 't': [0, 1]}), equation=Equation(wave_equation)),
|
|
}
|
|
|
|
def wave_sol(self, pts):
|
|
return (torch.sin(torch.pi*pts.extract(['x'])) *
|
|
torch.sin(torch.pi*pts.extract(['y'])) *
|
|
torch.cos(torch.sqrt(torch.tensor(2.))*torch.pi*pts.extract(['t'])))
|
|
|
|
truth_solution = wave_sol
|
|
|
|
problem = Wave()
|
|
|
|
After the problem, a **torch** model is needed to solve the PINN.
|
|
Usually many models are already implemented in ``PINA``, but the user
|
|
has the possibility to build his/her own model in ``pyTorch``. The hard
|
|
constraint we impose are on the boundary of the spatial domain.
|
|
Specificly our solution is written as:
|
|
|
|
.. math:: u_{\rm{pinn}} = xy(1-x)(1-y)\cdot NN(x, y, t),
|
|
|
|
where :math:`NN` is the neural net output. This neural network takes as
|
|
input the coordinates (in this case :math:`x`, :math:`y` and :math:`t`)
|
|
and provides the unkwown field of the Wave problem. By construction it
|
|
is zero on the boundaries. The residual of the equations are evaluated
|
|
at several sampling points (which the user can manipulate using the
|
|
method ``discretise_domain``) and the loss minimized by the neural
|
|
network is the sum of the residuals.
|
|
|
|
.. code:: ipython3
|
|
|
|
class HardMLP(torch.nn.Module):
|
|
|
|
def __init__(self, input_dim, output_dim):
|
|
super().__init__()
|
|
|
|
self.layers = torch.nn.Sequential(torch.nn.Linear(input_dim, 20),
|
|
torch.nn.Tanh(),
|
|
torch.nn.Linear(20, 20),
|
|
torch.nn.Tanh(),
|
|
torch.nn.Linear(20, output_dim))
|
|
|
|
# here in the foward we implement the hard constraints
|
|
def forward(self, x):
|
|
hard = x.extract(['x'])*(1-x.extract(['x']))*x.extract(['y'])*(1-x.extract(['y']))
|
|
return hard*self.layers(x)
|
|
|
|
In this tutorial, the neural network is trained for 3000 epochs with a
|
|
learning rate of 0.001 (default in ``PINN``). Training takes
|
|
approximately 1 minute.
|
|
|
|
.. code:: ipython3
|
|
|
|
pinn = PINN(problem, HardMLP(len(problem.input_variables), len(problem.output_variables)))
|
|
problem.discretise_domain(1000, 'random', locations=['D','t0', 'gamma1', 'gamma2', 'gamma3', 'gamma4'])
|
|
trainer = Trainer(pinn, max_epochs=3000)
|
|
trainer.train()
|
|
|
|
|
|
.. parsed-literal::
|
|
|
|
GPU available: False, used: False
|
|
TPU available: False, using: 0 TPU cores
|
|
IPU available: False, using: 0 IPUs
|
|
HPU available: False, using: 0 HPUs
|
|
|
|
| Name | Type | Params
|
|
----------------------------------------
|
|
0 | _loss | MSELoss | 0
|
|
1 | _neural_net | Network | 521
|
|
----------------------------------------
|
|
521 Trainable params
|
|
0 Non-trainable params
|
|
521 Total params
|
|
0.002 Total estimated model params size (MB)
|
|
|
|
|
|
.. parsed-literal::
|
|
|
|
Epoch 2999: : 1it [00:00, 79.33it/s, v_num=5, mean_loss=0.00119, D_loss=0.00542, t0_loss=0.0017, gamma1_loss=0.000, gamma2_loss=0.000, gamma3_loss=0.000, gamma4_loss=0.000]
|
|
|
|
.. parsed-literal::
|
|
|
|
`Trainer.fit` stopped: `max_epochs=3000` reached.
|
|
|
|
|
|
.. parsed-literal::
|
|
|
|
Epoch 2999: : 1it [00:00, 68.62it/s, v_num=5, mean_loss=0.00119, D_loss=0.00542, t0_loss=0.0017, gamma1_loss=0.000, gamma2_loss=0.000, gamma3_loss=0.000, gamma4_loss=0.000]
|
|
|
|
|
|
Notice that the loss on the boundaries of the spatial domain is exactly
|
|
zero, as expected! After the training is completed one can now plot some
|
|
results using the ``Plotter`` class of **PINA**.
|
|
|
|
.. code:: ipython3
|
|
|
|
plotter = Plotter()
|
|
|
|
# plotting at fixed time t = 0.0
|
|
plotter.plot(trainer, fixed_variables={'t': 0.0})
|
|
|
|
# plotting at fixed time t = 0.5
|
|
plotter.plot(trainer, fixed_variables={'t': 0.5})
|
|
|
|
# plotting at fixed time t = 1.
|
|
plotter.plot(trainer, fixed_variables={'t': 1.0})
|
|
|
|
|
|
|
|
|
|
.. image:: tutorial_files/tutorial_12_0.png
|
|
|
|
|
|
|
|
.. image:: tutorial_files/tutorial_12_1.png
|
|
|
|
|
|
|
|
.. image:: tutorial_files/tutorial_12_2.png
|
|
|