Continuous Time Fourier Transformation

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1. Representation of non-cyclic signals: Continuous Time Fourier Transformation

In order to have a deeper understanding of the essence of Fourier transformation, we first start with the representation of Fourier series of a continuous time period square wave. That is, within a period

\ [X (t) = \ begin {cases} 1, & \ Text | T | <T_1 \ 0, & \ Text T_1 <| T | <t/2 \ end {cases} \]

Recurrence by period \ (T \), as shown in.

The Fourier series coefficient \ (A_k \) of the square wave signal is

\ [\ Tag {1} A_k = \ frac {2sin (k \ omega_0t_1)} {k \ omega_0t} \]
Formula \ (\ omega_0 = 2 \ PI/T \).

Another way to understand (1) is to treat it as a sample of an envelope function, that is

\ [\ Tag {2} ta_k = \ frac {2sin \ Omega T_1} {\ Omega} \ lvert _ {\ Omega = k \ omega_0} \]

This is,If \ (\ Omega \) is considered as a continuous variable, the $ {(2sin \ Omega t_1)}/{\ Omega} $ function represents the envelope of \ (ta_k, these coefficients are the samples obtained at the upper interval of the envelope.. If \ (T_1 \) is fixed, the envelope of \ (ta_k \) is independent of \ (T \), as shown in.

As shown in the figure, with the increase of \ (T \), the envelope is sampled at an increasingly intensive interval. As \ (T \) becomes arbitrary, the original periodic square wave approaches a rectangular pulse (that is, a non-periodic signal is retained in the time domain, it corresponds to a period of the original square wave ).

At the same time, Fourier series (multiplied by \ (T \) as samples on the envelope also become increasingly intensive. In a sense, with \ (T \ To \ infty \), the Fourier series approaches this envelope function.

This example illustrates the basic idea of building Fourier representation for non-cyclic signals,We can regard Non-cyclic signals as the limit of any large period..

Now let's consider a signal \ (X (t) \), which has a limited duration \ (2t_1 \), starting from this cycle signal, it can constitute a cycle signal \ (\ Tilde x (t) \), SO \ (X (t) \) is a cycle of \ (\ Tilde x (t. When \ (T \) is selected as a large value, \ (X (t) \) is connected to \ (\ Tilde x (t) \ for a longer period of time )\) consistent, and with \ (T \ To \ infty \), for any finite time value \ (T \), \ (\ Tilde x (t )\) it is equal to \ (X (t )\).

In this case, we consider representing \ (\ Tilde x (t) \) as Fourier series, select \ (-T/2 \ leqslant t \ leqslant T/2 \) as the integral range \).

\ [\ Tag {3} \ Tilde x (t) = \ sum _ {k =-\ infty} ^ {+ \ infty} a_ke ^ {JK \ omega_0t} \]

\ [\ Tag {4} A_k = \ frac {1} {t} \ int _ {-\ frac {t} {2 }}^ {\ frac {t} {2 }}\ Tilde x (t) e ^ {-JK \ omega_0t} DT \]

Formula \ (\ omega_0 = 2 \ PI/T \), due to \ (| T | <t/2 \), \ (\ Tilde x (t) = x (t) \), and in other places, \ (X (t) = 0 \), SO (4) can be rewritten

\ [\ Tag {5} A_k = \ frac {1} {t} \ int _ {-\ frac {t} {2 }}^ {\ frac {t} {2} x (t) e ^ {-JK \ omega_0t} dt = \ frac {1} {t} \ int _ {-\ infty} ^ {+ \ infty} x (t) e ^ {-JK \ omega_0t} DT \]

Therefore, define the envelope \ (x (J \ Omega) \) of \ (ta_k \)

\ [\ Tag {6} X (J \ Omega) =\int _ {-\ infty} ^ {+ \ infty} x (t) e ^ {-J \ omega t} DT \]

At this time, the coefficient \ (A_k \) can be written

\ [\ Tag {7} A_k = \ frac {1} {t} X (jk \ omega_0) \]

Combine (3) and (7), \ (\ Tilde x (t) \) can be expressed

\ [\ Tag {8} \ Tilde x (t) = \ sum _ {k =-\ infty} ^ {+ \ infty} \ frac {1} {t} X (jk \ omega_0) e ^ {JK \ omega_0t }=\ frac {1} {2 \ PI} \ sum _ {k =-\ infty} ^ {+ \ infty} X (jk \ omega_0) e ^ {JK \ omega_0t} \ omega_0 \]

With \ (T \ To \ infty \), \ (\ Tilde x (t) \) approaches \ (X (t) \), formula (8) the limit is changed to the \ (X (t) \) expression. In addition, when \ (T \ To \ infty \) has \ (\ omega_0 \ to 0 \), the right side of formula (8) is transitioned to a point.

Each item on the right can be regarded as the area of the rectangle with the height of \ (x (jk \ omega_0) e ^ {JK \ omega_0t} \) and the width of \ (\ omega_0. Formula (8) and formula (6) are changed

\ [\ Tag {9} \ boxed {x (t) = \ frac {1} {2 \ PI} \ int _ {-\ infty} ^ {+ \ infty} X (J \ Omega) e ^ {J \ omega t} d \ Omega} \]

\ [\ Tag {10} \ boxed {x (J \ Omega) =\int _ {-\ infty} ^ {+ \ infty} x (t) e ^ {-J \ omega t} DT} \]

(9) and (10) are calledFourier transform pair. Function \ (x (J \ Omega) \) is called \ (X (t) \)Fourier transform or Fourier Integral, Also knownSpectrumAnd (9) is calledFourier Inversion.

  • Example 1

  • Example 2

Sinc FunctionsThe common form is

\ [\ Tag {11} SiNc (\ theta) = \ frac {sin \ pi \ Theta} {\ pi \ Theta} \]

2. Fourier transformation of Periodic Signals

Consider a signal \ (X (t) \), and its Fourier transform \ (x (J \ Omega) \) is an area of \ (2 \ pi \), an independent impulse that appears at \ (\ Omega = \ omega_0 \), that is

\ [\ Tag {12} X (J \ Omega) = 2 \ pi \ delta (\ omega-\ omega_0) \]

To obtain the \ (X (t) \) corresponding to \ (x (J \ Omega) \), you can apply the inverse transformation formula of formula (9) to obtain

\ [\ Tag {13} x (t) = \ frac {1} {2 \ PI} \ int _ {-\ infty} ^ {+ \ infty} 2 \ pi \ delta (\ omega-\ omega_0) e ^ {J \ omega t} d \ Omega = e ^ {J \ omega_0 t} \]

Promote the above results. If \ (x (J \ Omega) \) is a linear combination of a group of Impulse functions at the same frequency interval, that is

\ [\ Tag {14} X (J \ Omega) = \ sum _ {k =-\ infty} ^ {+ \ infty} 2 \ PI A_k \ delta (\ omega-k \ omega_0) \]

Then formula 9 is available.

\ [\ Tag {15} x (t) = \ sum _ {k =-\ infty} ^ {+ \ infty} a_ke ^ {JK \ omega_0 t} \]

We can see that formula (15) represents the Fourier series given by a periodic signal. Therefore,The Fourier transformation of a periodic signal with a Fourier series coefficient of \ (\ {A_k \} \) can be seen as a series of Impulse functions appearing at the frequency of the harmonic relationship., The area of the Impulse Function on the \ (k \) subharmonic frequency \ (k \ omega_0 \) is \ (k \) the \ ({2 \ PI} \) times of the Fourier series coefficient \ (A_k.

3. Continuous Time Fourier Transformation

For convenience, we use the following symbol to represent the Fourier Transformations \ (X (t) \) and \ (x (J \ Omega) \).

\ [X (t) \ overset {{\ displaystyle {\ mathcal {f }}}{\ leftrightarrow} X (J \ Omega) \]

3.1. Linear

If

\ [X (t) \ overset {{\ displaystyle {\ mathcal {f }}}{\ leftrightarrow} X (J \ Omega) \]

And

\ [Y (t) \ overset {{\ displaystyle {\ mathcal {f }}}{\ leftrightarrow} y (J \ Omega) \]

Then

\ [\ Tag {16} \ boxed {ax (t) + by (t) \ overset {\ displaystyle {\ mathcal {f }}}{ \ leftrightarrow} ax (J \ Omega) + by (J \ Omega)} \]

3.2. time shifting

If

\ [X (t) \ overset {{\ displaystyle {\ mathcal {f }}}{\ leftrightarrow} X (J \ Omega) \]

Then

\ [\ Tag {17} \ boxed {x (t-t_0) \ overset {\ displaystyle {\ mathcal {f }}}{ \ leftrightarrow} e ^ {-J \ Omega T_0} X (J \ Omega)} \]

This property indicates that the signal shifts in time and does not change its Fourier transform modulus.

3.3. condensed and condensed Symmetry

If

\ [X (t) \ overset {{\ displaystyle {\ mathcal {f }}}{\ leftrightarrow} X (J \ Omega) \]

Then

\ [\ Tag {18} \ boxed {x ^ * (t) \ overset {{\ displaystyle {\ mathcal {f }}}{\ leftrightarrow} x ^ * (-J \ Omega)} \]

If \ (X (t) \) is a real function, then \ (x (J \ Omega) \) has a bounded symmetry, that is

\ [\ Tag {19} \ boxed {x (-J \ Omega) = x ^ * (J \ Omega) \ qquad [x (t) is real]} \]

That is to say,The real part of Fourier transformation is the occasional function of frequency, while the imaginary part is the odd function of frequency..

3.4. Differentiation and integration

\ [\ Tag {20} \ boxed {\ frac {dx (t )} {DT} \ overset {\ displaystyle {\ mathcal {f }}}{ \ leftrightarrow} J \ Omega X (J \ Omega)} \]

\ [\ Tag {21} \ boxed {\ int _ {-\ infty} ^ {t} X (\ Tau) d \ Tau \ overset {\ displaystyle {\ mathcal {f }}{\ leftrightarrow} \ frac {1} {J \ Omega} X (J \ Omega) + \ pi x (0) \ delta (\ Omega)} \]

3.5. Time and Frequency Scaling

If

\ [X (t) \ overset {{\ displaystyle {\ mathcal {f }}}{\ leftrightarrow} X (J \ Omega) \]

\ [\ Tag {22} \ boxed {x () \ overset {{\ displaystyle {\ mathcal {f }}}{\ leftrightarrow }\ frac {1 }{| A |}x (\ frac {J \ Omega} {})} \]

If order \ (A =-1 \),

\ [\ Tag {23} \ boxed {x (-T) \ overset {{\ displaystyle {\ mathcal {f }}}{\ leftrightarrow} X (-J \ Omega) }\]

3.6. Parity

3.7. passal Theorem

If

\ [X (t) \ overset {{\ displaystyle {\ mathcal {f }}}{\ leftrightarrow} X (J \ Omega) \]

Then

\ [\ Tag {24} \ boxed {\ int _ {-\ infty} ^ {+ \ infty} | x (t) | ^ 2dt = \ frac {1} {2 \ PI} \ int _ {-\ infty} ^ {+ \ infty} | x (J \ Omega) | ^ 2D \ Omega} \]

3.8. convolution

\ [\ Tag {25} \ boxed {Y (t) = h (t) * x (t) \ overset {{\ displaystyle {\ mathcal {f }}}{\ leftrightarrow} y (J \ Omega) = H (J \ Omega) x (J \ Omega )} \]

The convolution of two signals in the time domain is equal to the product of their Fourier transformation.

3.9. Multiplication

\ [\ Tag {27} \ boxed {r (t) = S (t) p (t) \ overset {{\ displaystyle {\ mathcal {f }}}{\ leftrightarrow} r (J \ Omega) = \ frac {1} {2 \ PI} [S (J \ Omega) * P (J \ Omega)]} \]

The multiplication of two signals in the time domain corresponds to Convolution in the frequency domain.

4. Fourier transform properties and basic Fourier variation list


For more information, see seniusen 」!

Continuous Time Fourier Transformation

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