12-267/Numerical Methods: Difference between revisions

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==Summary of Numerical Methods==

Based largely off of a note available [http://imgur.com/a/uLSlM here] [[User:Simon1|Simon1]] --[[User:Twine|Twine]] 20:55, 25 October 2012 (EDT)

Numerical methods: <math>\frac{dy}{dt} = f(t, y)</math> and <math>y(t_0) = y_0</math>, <math>y = \Phi(t)</math> is a solution.
Numerical methods: <math>\frac{dy}{dt} = f(t, y)</math> and <math>y(t_0) = y_0</math>, <math>y = \Phi(t)</math> is a solution.


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Global truncation error is proportional to <math>h^4</math>.
Global truncation error is proportional to <math>h^4</math>.


==Python Example of Euler's Method==
In class on October 15th we discussed Euler's Method to numerically compute a solution to a differential equation. <math>x_0</math> and <math>y_0</math> are given as well as an increment amount <math>h</math>, <math>x_{n+1} = x_n + h</math>, and we use the guess <math>y_{n+1} = y_n + f(x_n, y_n)*h</math> where f computes the derivative as a function of x and y.


Here is an example of code (written in Python) which carries out Euler's Method for the example we discussed in class, <math>y' = -y</math>:


def f(x, y):
Based largely off of a note available [http://imgur.com/a/uLSlM here] [[User:Simon1|Simon1]] --[[User:Twine|Twine]] 20:55, 25 October 2012 (EDT)
return -y
def euler(x, y, f, h, x_max):
"""Take in coordinates x and y, a function f(x, y) which calculates
dy/dx at (x, y), an increment h, and a maximum value of x.
Return a list containing coordinates in the Euler's Method computation
of the solution to Phi' = f(x, Phi(x)), Phi(x) = y, with the x
values of those coordinates separated by h, and not exceeding x_max.
"""
if x > x_max: # we have already calculated all our values
return []
x_next, y_next = (x + h, y + f(x, y)*h) # calculate the next x, y values
# return the current coordinates, and every coordinates following it, in a list
return [(x_next, y_next)] + euler(x_next, y_next, f, h, x_max)
if __name__ == '__main__':
print euler(0, 1, f, 0.01, 1)[-1]

Revision as of 20:59, 25 October 2012

Summary of Numerical Methods

Based largely off of a note available here Simon1 --Twine 20:55, 25 October 2012 (EDT)

Numerical methods: and , is a solution.

1. Using the proof of Picard's Theorem:


2. The Euler Method:

if h is constant

Backward Euler formula:

Local truncation error: where

Local error is proportional to .

Global error is proportional to h.


3. Improved Euler Formula (or Heun Formula):

Local truncation error is proportional to

Global truncation error is proportional to


4. The Runge-Kutta Method:

where

Local truncation error is proportional to .

Global truncation error is proportional to .

Python Example of Euler's Method

In class on October 15th we discussed Euler's Method to numerically compute a solution to a differential equation. and are given as well as an increment amount , , and we use the guess where f computes the derivative as a function of x and y.

Here is an example of code (written in Python) which carries out Euler's Method for the example we discussed in class, :

   def f(x, y):
       return -y
   
   def euler(x, y, f, h, x_max):
       """Take in coordinates x and y, a function f(x, y) which calculates
          dy/dx at (x, y), an increment h, and a maximum value of x.
          
          Return a list containing coordinates in the Euler's Method computation
          of the solution to Phi' = f(x, Phi(x)), Phi(x) = y, with the x
          values of those coordinates separated by h, and not exceeding x_max.
       """
       if x > x_max: # we have already calculated all our values
           return []
       x_next, y_next = (x + h, y + f(x, y)*h) # calculate the next x, y values
       # return the current coordinates, and every coordinates following it, in a list
       return [(x_next, y_next)] + euler(x_next, y_next, f, h, x_max) 
   
   if __name__ == '__main__':
       print euler(0, 1, f, 0.01, 1)[-1]