I wonder how can I draw elliptical orbit by using the equation ay2 + bxy + cx + dy + e = x2 ?
I have first determined the a,b,c,d,e constants and now I assume by giving x values I will obtain y and this will give me the graph I want but I couldn't do it by using matplotlib.
I would really appreciate, if you could help me!
EDIT: I added the code here.
from numpy import linalg
from numpy import linspace
import numpy as np
from numpy import meshgrid
import random
import matplotlib.pyplot as plt
from scipy import optimize
x = [1.02, 0.95, 0.87, 0.77, 0.67, 0.56, 0.44, 0.30, 0.16, 0.01]
y = [0.39, 0.32, 0.27, 0.22, 0.18, 0.15, 0.13, 0.12, 0.12, 0.15]
my_list = [] #It is the main list.
b = [0] * len(x) # That is the list that contains the results that are given as x^2 from the equation.
def fxn(): # That is the function that solves the given equation to find each parameter.
global my_list
global b
for z in range(len(x)):
w = [0] * 5
w[0] = y[z] ** 2
w[1] = x[z] * y[z]
w[2] = x[z]
w[3] = y[z]
w[4] = 1
my_list.append(w)
b[z] = x[z] ** 2
t = linalg.lstsq(my_list, b)[0]
print 'List of list representation is', my_list
print 'x^2, the result of the given equation is', b
print '\nThe list that contains the parameters is', t
fxn()
t = linalg.lstsq(my_list, b)[0]
print '\nThe constant a is', t[0]
print 'The constant b is', t[1]
print 'The constant c is', t[2]
print 'The constant d is', t[3]
print 'The constant e is', t[4]
EDIT: Here are the constant values:
a = -4.10267300566
b = 1.10642410023
c = 0.39735696603
d = 3.05101004127
e = -0.370426134994
The problem can be solved for y as a function of x
The catch is that there are 2 values of y for every valid x, and no (or imaginary) y solutions outside the range of x the ellipse spans
below is 3.5 code, sympy 1.0 should be fine but print, list comps may not be backwards compatable to 2.x
from numpy import linalg
from numpy import linspace
import numpy as np
from numpy import meshgrid
import random
import matplotlib.pyplot as plt
from scipy import optimize
from sympy import *
xs = [1.02, 0.95, 0.87, 0.77, 0.67, 0.56, 0.44, 0.30, 0.16, 0.01]
ys = [0.39, 0.32, 0.27, 0.22, 0.18, 0.15, 0.13, 0.12, 0.12, 0.15]
b = [i ** 2 for i in xs] # That is the list that contains the results that are given as x^2 from the equation.
def fxn(x, y): # That is the function that solves the given equation to find each parameter.
my_list = [] #It is the main list.
for z in range(len(x)):
w = [0] * 5
w[0] = y[z] ** 2
w[1] = x[z] * y[z]
w[2] = x[z]
w[3] = y[z]
w[4] = 1
my_list.append(w)
return my_list
t = linalg.lstsq(fxn(xs, ys), b)
def ysolv(coeffs):
x,y,a,b,c,d,e = symbols('x y a b c d e')
ellipse = a*y**2 + b*x*y + c*x + d*y + e - x**2
y_sols = solve(ellipse, y)
print(*y_sols, sep='\n')
num_coefs = [(a, f) for a, f in (zip([a,b,c,d,e], coeffs))]
y_solsf0 = y_sols[0].subs(num_coefs)
y_solsf1 = y_sols[1].subs(num_coefs)
f0 = lambdify([x], y_solsf0)
f1 = lambdify([x], y_solsf1)
return f0, f1
f0, f1 = ysolv(t[0])
y0 = [f0(x) for x in xs]
y1 = [f1(x) for x in xs]
plt.scatter(xs, ys)
plt.scatter(xs, y0, s=100, color = 'red', marker='+')
plt.scatter(xs, y1, s=100, color = 'green', marker='+')
plt.show()
when the above is ran in Spyder:
runfile('C:/Users/john/mypy/mySE_answers/ellipse.py', wdir='C:/Users/john/mypy/mySE_answers')
(-b*x - d + sqrt(-4*a*c*x - 4*a*e + 4*a*x**2 + b**2*x**2 + 2*b*d*x + d**2))/(2*a)
-(b*x + d + sqrt(-4*a*c*x - 4*a*e + 4*a*x**2 + b**2*x**2 + 2*b*d*x + d**2))/(2*a)

The generated functions for the y values aren't valid everywhere:
f0(0.1), f1(0.1)
Out[5]: (0.12952825130864626, 0.6411040771593166)
f0(2)
Traceback (most recent call last):
File "<ipython-input-6-9ce260237dcd>", line 1, in <module>
f0(2)
File "<string>", line 1, in <lambda>
ValueError: math domain error
In [7]:
The domain error would require a try/execpt to "feel out" the valid x range or some more math
like the try/except below: (Edited to "close" drawing re comment )
def feeloutXrange(f, midx, endx):
fxs = []
x = midx
while True:
try: f(x)
except:
break
fxs.append(x)
x += (endx - midx)/100
return fxs
midx = (min(xs) + max(xs))/2
xpos = feeloutXrange(f0, midx, max(xs))
xnegs = feeloutXrange(f0, midx, min(xs))
xs_ellipse = xnegs[::-1] + xpos[1:]
y0s = [f0(x) for x in xs_ellipse]
y1s = [f1(x) for x in xs_ellipse]
ys_ellipse = y0s + y1s[::-1] + [y0s[0]] # add y start point to end to close drawing
xs_ellipse = xs_ellipse + xs_ellipse[::-1] + [xs_ellipse[0]] # added x start point
plt.scatter(xs, ys)
plt.scatter(xs, y0, s=100, color = 'red', marker='+')
plt.scatter(xs, y1, s=100, color = 'green', marker='+')
plt.plot(xs_ellipse, ys_ellipse)
plt.show()
Edit: added duplicate start point to the end of ellipse point lists to close the plot figure
ys_ellipse = y0s + y1s[::-1] + [y0s[0]] # add y start point to end to close drawing
xs_ellipse = xs_ellipse + xs_ellipse[::-1] + [xs_ellipse[0]] # added x start point
Intro
Easiest thing would be to parametrize this equation. As @Escualo suggests, you could introduce a variable t
and parametrize x
and y
along that. Parametrizing means separating your equation into two separate equations for x
and y
individually in terms of t
. So you would have x = f(t)
and y = g(t)
for some values of t
. You could then plot the x, y
pairs that result for each value of t
.
The catch here is that your ellipse is rotated (the x*y
coupling term is an indication of that). To separate the equations, you have to first transform the equation to get rid of the coupling term. This is the same as finding a set of axes that are rotated by the same angle as the ellipse, parametrzing along those axes, then rotating the result back. Check out this forum post for a general overview.
Math
You first need to find the angle of rotation of the ellipse's axes with respect to the x-y coordinate plane.
Your equation then transforms to
where
To find the (nearly) standard form of the ellipse, you can complete the squares for the
and portions and rearrange the equation slightly:where
Since you know
, you can now parametrize the equations for and :You would then rotate back into normal x-y space using the formulas
and
Code
The code to get the x- and y- arrays to pass to plt.plot
is now relatively straightforward:
def computeEllipse(a, b, c, d, e):
"""
Returns x-y arrays for ellipse coordinates.
Equation is of the form a*y**2 + b*x*y + c*x + d*y + e = x**2
"""
# Convert x**2 coordinate to +1
a = -a
b = -b
c = -c
d = -d
e = -e
# Rotation angle
theta = 0.5 * math.atan(b / (1 - a))
# Rotated equation
sin = math.sin(theta)
cos = math.cos(theta)
aa = cos**2 + b * sin * cos + a * sin**2
bb = sin**2 - b * cos * sin + a * cos**2
cc = c * cos + d * sin
dd = -c * sin + d * cos
ee = e
# Standard Form
axMaj = 1 / math.sqrt(aa)
axMin = 1 / math.sqrt(bb)
scale = math.sqrt(cc**2 / (4 * aa) + dd**2 / (4 * bb) - ee)
h = -cc / (2 * aa)
k = -dd / (2 * bb)
# Parametrized Equation
t = np.linspace(0, 2 * math.pi, 1000)
xx = h + axMaj * scale * np.sin(t)
yy = k + axMin * scale * np.cos(t)
# Un-rotated coordinates
x = xx * cos - yy * sin
y = xx * sin + yy * cos
return x, y
To actually use the code:
from matplotlib import pyplot as plt
a = -4.10267300566
b = 1.10642410023
c = 0.39735696603
d = 3.05101004127
e = -0.370426134994
lines = plt.plot(*computeEllipse(a, b, c, d, e))
To overplot your original points on the ellipse:
x = [1.02, 0.95, 0.87, 0.77, 0.67, 0.56, 0.44, 0.30, 0.16, 0.01]
y = [0.39, 0.32, 0.27, 0.22, 0.18, 0.15, 0.13, 0.12, 0.12, 0.15]
ax = lines[0].axes
ax.plot(x, y, 'r.')
The result is the following image:
Note
Keep in mind that the forum post I linked to uses a different notation than the one you do. Their equation is Ax2 + Bxy + Cy2 + Dx + Ey + F = 0. This is a bit more standard than your form of ay2 + bxy - x2 + cx + dy + e = 0. All of the math is in terms of your notation.
The easiest thing to do is rewrite in parametric form so that you end up with the expressions x = A cos(t)
; y = B sin(t)
. You then create a full ellipse by assigning t = [0, 2 * pi]
and calculating the corresponding x
and y
.
Read this article which explains how to move from a general quadratic form into a parametric form.
来源:https://stackoverflow.com/questions/41225893/drawing-elliptical-orbit-in-python-using-numpy-matplotlib