This is a computational project to help understand probability distributions and wave natures of particles. By adding a bunch of sinusoid together, it's possible to arrive at a probability distribution for a particle. The proceeding text and pictures are code (python) being used in the mathematical model and images of the program in work. Following the final stage of the model and pictures, a series of questions will be addressed.
Code (in python)
from pylab import *
#Define constantsConstants
w=1 #sets the frequancey coefficient
Fourier_Series=[] #initialize the list of sine functions
sigma = 10
coeff = 1
numberofharmonics=50
center = numberofharmonics/2
#Calculate the harmonics of the sine functions
for i in range(1,50):#every time the loop repeats this will change the harmonic
x = [] # plots from -pi to +pi
gauss = coeff*exp(-(i-center)**2/(2.*sigma**2))#Define the amplitude of the sin function
sin_list = [] #this includes the sine functions
for t in arange (-3.14, 3.14, 0.01): # create tsh range of the graph and incriments
sine= gauss*sin(i*w*t) #the function to be plotted
sin_list.append(sine) # Adds the calculated vale from the sine function to the list appendex
x.append(t)
#plot(x,sin_list)# plots values
#show()
Fourier_Series.append(sin_list)
superposition = zeros(len(sin_list))
for function in Fourier_Series:
for i in range(len(function)):
superposition[i]+=function[i]
plot(x,superposition)
show()
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An early step in the program showing waves of different types. |
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Further along in the program with many waves displayed. |
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The envelope for the waves. |
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The program with a limiting factor included to make the wave superposition approach zero. |
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The final result: a super position of many waves limited to a given region, this can model wave packets. |
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Questions:
C) 1.00 L
D) 2.00 L
E) Duplicate Question.
F) h, plank's constant is the answer.
G) h, plank's constant is the answer.
H)The questions in part F and G tie in strongly to the Uncertainty Principle. Both answers for part F and part G come out to be h. This shows there is a constraint on the accuracy to position and momentum which shows a strong parallel to the Uncertainty Principle.