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==Introduction==
 
==Introduction==
  
In this slecture I will discuss about the relations between the original signal <math> X(f) </math> (the CTFT of <math> x(t) </math>  ), sampling continuous time signal <math> X_s(f) </math> (the CTFT of <math> x_s(t) </math> ) and sampling discrete time signal <math> X_d(\omega) </math> (the DTFT of <math> x_d[n] </math> ) in frequency domain and give a specific example showing the relations.
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<math> X(f) </math> (the CTFT of <math> x(t) </math>  ), <math> X_s(f) </math> (the CTFT of <math> x_s(t) </math> ) <math> X_d(\omega) </math> (the DTFT of <math> x_d[n] </math> )
 
----
 
----
  
 
==Derivation==
 
==Derivation==
  
The first thing which need to be clarified is that there two different types of sampling signal: <math> x_s(t) </math> and <math> x_d[n] </math>. <math> x_s(t) </math> is created by multiplying a impulse train <math> P_T(t) </math> with the original signal <math> x(t) </math> and actually <math> x_s(t) </math>  is  <math> comb_T(x(t)) </math> where T is the sampling period.
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signal: <math> x_s(t) </math> and <math> x_d[n] </math>. <math> x_s(t) </math>   <math> P_T(t) </math> with the original signal <math> x(t) </math> and actually <math> x_s(t) </math>  is  <math> comb_T(x(t)) </math> where T is the sampling period.
 
However the <math> x_d[n] </math> is <math> x(nT) </math> where T is the sampling period.
 
However the <math> x_d[n] </math> is <math> x(nT) </math> where T is the sampling period.
  
Now we first concentrate on the relationship between <math> X(f) </math> and <math> X_s(f) </math>.  
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relationship between <math> X(f) </math> and <math> X_s(f) </math>.  
  
 
We know that <math> x_s(t) = x(t) \times P_T(t) </math>, we can derive the relationship between <math> x_s(t) </math> and <math> x(t) </math> in the following way:
 
We know that <math> x_s(t) = x(t) \times P_T(t) </math>, we can derive the relationship between <math> x_s(t) </math> and <math> x(t) </math> in the following way:
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==Derivation==
 
==Derivation==
  
Then we are going to find the relation between <math> X_s(f) </math> and <math> X_d(\omega) </math>
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n <math> X_s(f) </math> and <math> X_d(\omega) </math>
  
 
We know another way to express CTFT of <math> x_s(t) </math>:
 
We know another way to express CTFT of <math> x_s(t) </math>:
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<font size>
 
<font size>
  
from this equation, we can know the relationship between <math> X_s(f) </math> and <math> X_d(\omega) </math> and the relationship is showed in graph as below:
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ationship between <math> X_s(f) </math> and <math> X_d(\omega) </math> and the is showed in graph as below:
  
 
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Revision as of 09:15, 9 October 2014


Frequency domain view of the relationship between a signal and a sampling of that signal

A slecture by ECE student Yerkebulan Yeshmukhanbetov

Partly based on the ECE438 Fall 2014 lecture material of Prof. Mireille Boutin.


Outline

  1. Introduction
  2. Derivation
  3. Example
  4. Conclusion

Introduction

$  X(f)  $ (the CTFT of $  x(t)  $  ),  $  X_s(f)  $ (the CTFT of $  x_s(t)  $ )  $  X_d(\omega)  $ (the DTFT of $  x_d[n]  $ )

Derivation

signal: $  x_s(t)  $ and $  x_d[n]  $. $  x_s(t)  $   $  P_T(t)  $ with the original signal $  x(t)  $ and actually $  x_s(t)  $  is  $  comb_T(x(t))  $ where T is the sampling period.

However the $ x_d[n] $ is $ x(nT) $ where T is the sampling period.

relationship between $  X(f)  $ and $  X_s(f)  $. 

We know that $ x_s(t) = x(t) \times P_T(t) $, we can derive the relationship between $ x_s(t) $ and $ x(t) $ in the following way:

$ \begin{align} F(comb_T(x(t)) &= F(x(t) \times P_T(t))\\ &= X(f)*F(P_T(t))\\ &= X(f)*\frac{1}{T}\sum_{n = -\infty}^\infty \delta(f-\frac{n}{T})\\ &= \frac{1}{T}X(f)*P_\frac{1}{T}(f)\\ &= \frac{1}{T}rep_\frac{1}{T}X(f)\\ \end{align} $

Show this relationship in graph below:


example

Xfcbt.png

Xsfcbt.png


Derivation

n $ X_s(f) $ and $ X_d(\omega) $

We know another way to express CTFT of $ x_s(t) $:

$ \begin{align} X_s(f) &= F(\sum_{n = -\infty}^\infty x(nT)\delta(t-nT))\\ &= \sum_{n = -\infty}^\infty x(nT)F(\delta(t-nT))\\ &= \sum_{n = -\infty}^\infty x(nT)e^{-j2\pi fnT}\\ \end{align} $

compare it with DTFT of $ x_d[n] $:

$ \begin{align} X_d(\omega) &= \sum_{n = -\infty}^\infty x_d[n]e^{-j\omega n}\\ &= \sum_{n = -\infty}^\infty x(nT)e^{-j\omega n}\\ \end{align} $

we can find that:

$ \begin{align} X_d(2\pi Tf) &= X_s(f)\\ \end{align} $

if $ f = \frac{1}{T} $

we have that:

$ \begin{align} X_d(2\pi ) &= X_s(\frac{1}{T})\\ \end{align} $

ationship between $ X_s(f) $ and $ X_d(\omega) $ and the is showed in graph as below:


example

Xsfcbt.png

Xdwcbt.png


conclusion

So the relationship between $ X(f) $ and $ X_s(f) $ is that $ X_s(f) $ is a a rep of $ X(f) $ in frequency domain with period of $ \frac{1}{T} $ and magnitude scaled by $ \frac{1}{T} $. the relationship between $ X(f) $ and $ X_d(\omega) $ is that $ X_d(\omega) $ is also a a rep of $ X(f) $ in frequency domain with period $ 2\pi $ and magnitude is also scaled by $ \frac{1}{T} $, but the frequency is scaled by $ 2\pi T $


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