2.19. Custom Class for coupled PDEs

This example shows how to solve a set of coupled PDEs, the spatially coupled FitzHugh–Nagumo model, which is a simple model for the excitable dynamics of coupled Neurons:

\[\begin{split}\partial_t u &= \nabla^2 u + u (u - \alpha) (1 - u) + w \\ \partial_t w &= \epsilon u\end{split}\]

Here, \(\alpha\) denotes the external stimulus and \(\epsilon\) defines the recovery time scale. We implement this as a custom PDE class below.

pde coupled
  0%|          | 0/100.0 [00:00<?, ?it/s]
Initializing:   0%|          | 0/100.0 [00:00<?, ?it/s]
  0%|          | 0/100.0 [00:00<?, ?it/s]
  0%|          | 0.23/100.0 [00:00<01:37,  1.02it/s]
  1%|          | 0.72/100.0 [00:00<00:37,  2.65it/s]
  3%|2         | 2.94/100.0 [00:00<00:16,  6.03it/s]
  8%|7         | 7.73/100.0 [00:00<00:11,  8.20it/s]
 15%|#4        | 14.82/100.0 [00:01<00:09,  9.21it/s]
 24%|##3       | 23.51/100.0 [00:02<00:07,  9.66it/s]
 33%|###3      | 33.09/100.0 [00:03<00:06,  9.93it/s]
 43%|####3     | 43.18/100.0 [00:04<00:05, 10.08it/s]
 54%|#####3    | 53.52/100.0 [00:05<00:04, 10.16it/s]
 64%|######3   | 63.97/100.0 [00:06<00:03, 10.24it/s]
 75%|#######4  | 74.51/100.0 [00:07<00:02, 10.28it/s]
 85%|########5 | 85.06/100.0 [00:08<00:01, 10.32it/s]
 96%|#########5| 95.63/100.0 [00:09<00:00, 10.35it/s]
 96%|#########5| 95.63/100.0 [00:09<00:00,  9.91it/s]
100%|##########| 100.0/100.0 [00:09<00:00, 10.36it/s]
100%|##########| 100.0/100.0 [00:09<00:00, 10.36it/s]

from pde import FieldCollection, PDEBase, UnitGrid


class FitzhughNagumoPDE(PDEBase):
    """FitzHugh–Nagumo model with diffusive coupling"""

    def __init__(self, stimulus=0.5, τ=10, a=0, b=0, bc="auto_periodic_neumann"):
        super().__init__()
        self.bc = bc
        self.stimulus = stimulus
        self.τ = τ
        self.a = a
        self.b = b

    def evolution_rate(self, state, t=0):
        v, w = state  # membrane potential and recovery variable

        v_t = v.laplace(bc=self.bc) + v - v**3 / 3 - w + self.stimulus
        w_t = (v + self.a - self.b * w) / self.τ

        return FieldCollection([v_t, w_t])


grid = UnitGrid([32, 32])
state = FieldCollection.scalar_random_uniform(2, grid)

eq = FitzhughNagumoPDE()
result = eq.solve(state, t_range=100, dt=0.01)
result.plot()

Total running time of the script: ( 0 minutes 10.027 seconds)