Recall the local truncation error of the Euler scheme applied to the model exponential decay equation (2.118), computed in (2.124) $$ \begin{align} \tau^{euler}_n = \frac{1}{2} h y''(x_n). \nonumber \end{align} $$
The error of the numerical approximation depends on \( h \) in a linear fashion, as expected for a first order scheme. However, the approximation error does also depend on the solution itself, more precisely on its second derivative. This is a property of the problem and we have no way of intervening on it. If one wants to set a maximum admissible error, then the only parameter left is the time step \( h \). The wisest manner to use this freedom is to adopt a variable time-stepping strategy, in which the time step is adapted according to estimates of the error as long as one advances in \( x \). Here we briefly present one possible approach, namely the 5-th order Runge-Kutta-Fehlberg scheme with variable time step (RKF45), as presented for example in [5]. Schematically, the main steps for implementing such scheme are listed bellow:
# src-ch1/fixed_vs_variable.py;
import numpy as np
import matplotlib.pyplot as plt
# Solve
# y' = beta * y
# y(0) = 1.
# with explicit Euler (fixed h) and RKF45
# ode coefficient
beta = -10.
# ode initial condition
y0 = 1.
# time step for Euler's scheme
h = 0.02
# domain
xL = 0.
xR = 1.
# number of intervals for Euler's scheme
N = int((xR-xL)/h)
# correct h for Euler's scheme
h = (xR-xL)/float(N)
# independent variable array for Euler's scheme
x = np.linspace(xL,xR,N)
# unknown variable array for Euler's scheme
y = np.zeros(N)
# x for exact solution
xexact = np.linspace(xL,xR,max(1000.,100*N))
# ode function
def f(x,y):
return beta * y
# exact solution
def exact(x):
return y0*np.exp(beta*x)
# Euler's method increment
def eulerIncrementFunction(x,yn,h,ode):
return ode(x,yn)
# RKF45 increment
def rkf45step(x,yn,h,ode):
# min and max time step
hmin = 1e-5
hmax = 5e-1
# min and max errors
emin = 1e-7
emax = 1e-5
# max number of iterations
nMax = 100
# match final time
if x+h > xR:
h = xR-x
# loop to find correct error (h)
update = 0
for i in range(nMax):
k1 = ode(x,yn)
k2 = ode(x+h/4.,yn+h/4.*k1)
k3 = ode(x+3./8.*h,yn+3./32.*h*k1+9./32.*h*k2)
k4 = ode(x+12./13.*h,yn+1932./2197.*h*k1-7200./2197.*h*k2+7296./2197.*h*k3)
k5 = ode(x+h,yn+439./216.*h*k1-8.*h*k2+3680./513.*h*k3-845./4104.*h*k4)
k6 = ode(x+h/2.,yn-8./27.*h*k1+2.*h*k2-3544./2565.*h*k3+1859./4140.*h*k4-11./40.*h*k5)
# 4th order solution
y4 = yn + h * (25./216*k1 + 1408./2565.*k3+2197./4104.*k4-1./5.*k5)
# fifth order solution
y5 = yn + h * (16./135.*k1 + 6656./12825.*k3 + 28561./56430.*k4 - 9./50.*k5 +2./55.*k6)
# error estimate
er = np.abs(y5-y4)
if er < emin:
# if error small, enlarge h, but match final simulation time
h = min(2.*h,hmax)
if x+h > xR:
h = xR-x
break
elif er > emax:
# if error big, reduce h
h = max(h/2.,hmin)
else:
# error is ok, take this h and y5
break
if i==nMax-1:
print("max number of iterations reached, check parameters")
return x+h, y5, h , er
# time loop for euler
y[0] = y0
for i in range(N-1):
y[i+1] = y[i] + h * eulerIncrementFunction(x[i],y[i],h,f)
# time loop for RKF45
nMax = 1000
xrk = np.zeros(1)
yrk = y0*np.ones(1)
hrk = np.zeros(1)
h = 0.5
for i in range(nMax):
xloc , yloc, h , er = rkf45step(xrk[-1],yrk[-1],h,f)
xrk = np.append(xrk,xloc)
yrk = np.append(yrk,yloc)
if i==0:
hrk[i] = h
else:
hrk = np.append(hrk,h)
if xrk[-1]==xR:
break
plt.subplot(211)
plt.plot(xexact,exact(xexact),'b-',label='Exact')
plt.plot(x,y,'rx',label='Euler')
plt.plot(xrk,yrk,'o', markersize=7,markeredgewidth=1,markeredgecolor='g',markerfacecolor='None',label='RKF45')
plt.xlabel('x')
plt.ylabel('y(x)')
plt.legend()
plt.subplot(212)
plt.plot(xrk[1:],hrk,'o', markersize=7,markeredgewidth=1,markeredgecolor='g',markerfacecolor='None',label='RKF45')
plt.ylabel('h')
plt.legend(loc='best')
#plt.savefig('fixed_vs_variable.png')
plt.show()
Figure 20: Numerical solution for the model exponential decay equation (2.118) using the Euler scheme and the RKF45 variable time step scheme (top panel) and time step used at each iteration by the variable time stepping scheme (bottom panel).