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I want to create a simple animation of how bad the Forward Time Central Space (FTCS) solves the flux conservation equation for a Gaussian velocity distribution ("Physics... yeah!"). I have written a small animation based on this tutorial. I have attached the code below. I'm satisfied with it (given that I don't really know anything about matplotlib's animation package), but I cannot get the animation to be slow enough so that I can actually see something.

This boils down to me not understanding how to set the parameters in the animation.FuncAnimation in the last line of the code. Could anybody explain, help?

import math
import numpy as np
import scipy as sci
import matplotlib.pyplot as plt
from matplotlib import animation

#generate velocity distribution
sigma = 1.
xZero = 0.
N = 101
x = np.linspace(-10,10,N)
uZero = 1. / math.sqrt(2 * math.pi * (sigma**2)) * np.exp(-0.5*((x - xZero)/(2*sigma))**2)


v = 1
xStep = x[2]-x[1]
tStep = 0.1
alpha = v * tStep/xStep * 0.5

#include boundary conditions
u = np.hstack((0.,uZero,0.))
uNext = np.zeros(N + 2)

#solve with forward time central space and store each outer loop in data
#so it can be used in the animation
data = []
data.append(u[1:-1])
for n in range(0,100):
    for i in range(1,N+1):
        uNext[i] = -alpha * u[i+1] + u[i] + alpha*u[i-1] 
    u = uNext
    data.append(u[1:-1])
data = np.array(data)

#launch up the animation
fig = plt.figure()
ax = plt.axes(xlim=(-10,10),ylim=(-1,1))
line, = ax.plot([],[],lw=2)

def init():
    line.set_data([],[])
    return line,

#get the data for animation from the data array
def animate(i):
    y = data[i]
    line.set_data(x,y)
    return line,

#the actual animation
anim = animation.FuncAnimation(fig,animate,init_func=init,frames=200,interval=2000,blit=True)

plt.show()
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1 Answer 1

up vote 1 down vote accepted

Explore your data variable first. If i run your code, only data[0] and data[1] are different, from data[1] onwards all data (thus frames) are the same.

np.allclose(data[1], data[100])
True
share|improve this answer
    
thank you! I put uNext = np.zeros(N + 2) inside the outer for loop and that fixes it. –  smalldata May 17 '13 at 12:42
    
Yes, that's it! –  Rutger Kassies May 17 '13 at 12:58

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