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Revision as of 14:36, 14 April 2021
The following examples show different ways of setting up and solving initial value problems in Python. It is part of the page on Ordinary Differential Equations in Python and is very much based on MATLAB:Ordinary Differential Equations/Examples.
Contents
Preamble
The examples below assume a file called ode_helpers.py
that contains the code below is in the same folder as the example codes; for the moment, this code contains a function that makes it easier to plot all the different dependent variables from a solver.
import numpy as np
import matplotlib.pyplot as plt
def state_plotter(times, states, fig_num):
num_states = np.shape(states)[0]
num_cols = int(np.ceil(np.sqrt(num_states)))
num_rows = int(np.ceil(num_states / num_cols))
plt.figure(fig_num)
plt.clf()
fig, ax = plt.subplots(num_rows, num_cols, num=fig_num, clear=True,
squeeze=False)
for n in range(num_states):
row = n // num_cols
col = n % num_cols
ax[row][col].plot(times, states[n], 'k.:')
ax[row][col].set(xlabel='Time',
ylabel='$y_{:0.0f}(t)$'.format(n),
title='$y_{:0.0f}(t)$ vs. Time'.format(n))
for n in range(num_states, num_rows * num_cols):
fig.delaxes(ax[n // num_cols][n % num_cols])
fig.tight_layout()
return fig, ax
Examples
Note - each example began with the Templates provided at this web site. Some comments may have been removed from the templates to conserve space while some comments may have been added to provide a clearer explanation of the process for a particular example. The highlighted lines are the only lines that change between examples!
Constant Rate of Change
If the dependent variable has a constant rate of change:
where \(C\) is some constant, you can provide the differential equation
in the f
function and then calculate answers using this model with the code below.
The code assumes there are 100 evenly spaced times between 0 and 10, the
initial value of \(y\) is 6, and the rate of change is 1.2:
1 # %% Imports
2 import numpy as np
3 import matplotlib.pyplot as plt
4 from scipy.integrate import solve_ivp
5 from ode_helpers import state_plotter
6
7 # %% Define independent function and derivative function
8 def f(t, y, c):
9 dydt = [c[0]]
10 return dydt
11
12 # %% Define time spans, initial values, and constants
13 tspan = np.linspace(0, 10, 100)
14 yinit = [6]
15 c = [1.2]
16
17 # %% Solve differential equation
18 sol = solve_ivp(lambda t, y: f(t, y, c),
19 [tspan[0], tspan[-1]], yinit, t_eval=tspan)
20
21 # %% Plot states
22 state_plotter(sol.t, sol.y, 1)
Time-dependent Rate of Change
If the dependent variable's rate of change is some function of time, this can be easily coded. For example, if the differential equation is some quadratic function given as:
then the function providing the values of the derivative may be
written using np.polyval
.
You could calculate answers using this model with the following code;
it assumes there are 20 evenly spaced times between 0 and 4, the
initial value of \(y\) is 6, and the polynomial is defined by the vector
[2, -6, 3]:
1 # %% Imports
2 import numpy as np
3 import matplotlib.pyplot as plt
4 from scipy.integrate import solve_ivp
5 from ode_helpers import state_plotter
6
7 # %% Define derivative function
8 def f(t, y, c):
9 dydt = np.polyval(c, t)
10 return dydt
11
12 # %% Define time spans, initial values, and constants
13 tspan = np.linspace(0, 4, 20)
14 yinit = [6]
15 c = [2, -6, 3]
16
17 # %% Solve differential equation
18 sol = solve_ivp(lambda t, y: f(t, y, c),
19 [tspan[0], tspan[-1]], yinit, t_eval=tspan)
20
21 # %% Plot states
22 state_plotter(sol.t, sol.y, 1)
Population Growth
For population growth, the rate of change of population is dependent upon the number of people as well as some constant of proportionality:
where \(C\) is again some constant. The following code will calculate the population for a span of 3 seconds with 25 points for the population model above with an initial population of 10 and a constant of proportionality of 1.02:
1 # %% Imports
2 import numpy as np
3 import matplotlib.pyplot as plt
4 from scipy.integrate import solve_ivp
5 from ode_helpers import state_plotter
6
7 # %% Define derivative function
8 def f(t, y, c):
9 dydt = [c[0] * y[0]]
10 return dydt
11
12 # %% Define time spans, initial values, and constants
13 tspan = np.linspace(0, 3, 25)
14 yinit = [10]
15 c = [1.02]
16
17 # %% Solve differential equation
18 sol = solve_ivp(lambda t, y: f(t, y, c),
19 [tspan[0], tspan[-1]], yinit, t_eval=tspan)
20
21 # %% Plot states
22 state_plotter(sol.t, sol.y, 1)
Multiple Variable Models
It is possible to solve multiple-variable systems by making sure the differential function returns values for each of the variables. For instance, in the following system the first variable's rate of change depends only on time while the second is dependent upon both time and the first variable:
The differential function f
for this system will have a 2 element list as the output.
Also, if you have systems with multiple dependent variables, just
be sure to put the initial conditions in a list. For
example, with the system defined as:
you could use the following script to solve for both \(y_0\) and \(y_1\); the code assumes \(y_0\) starts as 0 and \(y_1\) starts at -3:
1 # %% Imports
2 import numpy as np
3 import matplotlib.pyplot as plt
4 from scipy.integrate import solve_ivp
5 from ode_helpers import state_plotter
6
7 # %% Define derivative function
8 def f(t, y, c):
9 dydt = [c[0]*np.cos(c[1]*t), c[2]*y[0]+c[3]*t]
10 return dydt
11
12 # %% Define time spans, initial values, and constants
13 tspan = np.linspace(0, 5, 100)
14 yinit = [0, -3]
15 c = [4, 3, -2, 0.5]
16
17 # %% Solve differential equation
18 sol = solve_ivp(lambda t, y: f(t, y, c),
19 [tspan[0], tspan[-1]], yinit, t_eval=tspan)
20
21 # %% Plot states
22 state_plotter(sol.t, sol.y, 1)
Higher Order Differential Equations
The system must be written in terms of first-order differential equations only. To solve a system with higher-order derivatives, you will first write a cascading system of simple first-order equations then use them in your differential function. For example, assume you have a system characterized by constant jerk:
The first thing to do is write three first-order differential equations to represent the third-order equation:
Notice how the derivatives cascade so that the constant jerk equation
can now be written as a set of three first-order equations. Note that in this system,
y[0]
represents the position, y[1]
represents the velocity, and
y[2]
represents the acceleration. This type of cascading system will
show up often when modeling equations of motion.
The following script, RunJerkDiff.m
, calculates the position,
velocity, and speed over a period of 8 seconds assuming an initial
position of 6, and initial velocity of 2, an initial acceleration of
-4, and a constant jerk of 1.3:
1 # %% Imports
2 import numpy as np
3 import matplotlib.pyplot as plt
4 from scipy.integrate import solve_ivp
5 from ode_helpers import state_plotter
6
7 # %% Define derivative function
8 def f(t, y, c):
9 dydt = [y[1], y[2], c[0]]
10 return dydt
11
12 # %% Define time spans, initial values, and constants
13 tspan = np.linspace(0, 8, 50)
14 yinit = [6, 2, -4]
15 c = [1.3]
16
17 # %% Solve differential equation
18 sol = solve_ivp(lambda t, y: f(t, y, c),
19 [tspan[0], tspan[-1]], yinit, t_eval=tspan)
20
21 # %% Plot states
22 state_plotter(sol.t, sol.y, 1)
Questions
Post your questions by editing the discussion page of this article. Edit the page, then scroll to the bottom and add a question by putting in the characters *{{Q}}, followed by your question and finally your signature (with four tildes, i.e. ~~~~). Using the {{Q}} will automatically put the page in the category of pages with questions - other editors hoping to help out can then go to that category page to see where the questions are. See the page for Template:Q for details and examples.