Fourier Transforms Section 3.4-3.7 Kamen and Heck.

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Presentation transcript:

Fourier Transforms Section Kamen and Heck

3.4 Fourier Transform Definition (Equation 3.30) –Exists if integral converges (Equation 3.31) Example 3.7 Constant Signal –Does not have a Fourier transform in the ordinary sense. Example 3.8 Exponential Signal –For b  0 does not have a Fourier transform in the ordinary sense. –Figure 3.12– b= 10.

3.4.1 Rectangular and Polar Form Use Euler’s formula. X(  ) = R(  ) + j I(  ) (Equation 3.33) X(  ) = |X(  )| exp [ j  X(  ) ] (Eq. 3.34)

3.4.2 Signals with Even or Odd Symmetry When a signal x(t) is even, the Fourier transform will be purely real. When a signal x(t) is odd, the Fourier transform will be purely imaginary. In such cases, the transforms can be computed using equations 3.35 and Example 3.9 Rectangular Pulse

3.4.3 Bandlimited Signals A signal is said to be bandlimited if its Fourier transform X(  ) is zero for all  >B, where B is some positive number, called the bandwidth of the signal. Bandlimited signals cannot be time limited; that is x(t) is time limited if x(t) = 0 for all t T, for some positive T. Time-limited signals cannot be bandlimited. In practice, it is always possible to assume that a time- limited signal is bandlimited for a large enough B. Example 3.10—Frequency Spectrum (of a pulse)— sidelobes get smaller and smaller, so eventually it can be approximated as being bandlimited.

3.4.4 Inverse Fourier Transform The equation for the inverse Fourier transform is given by equation In general, a transform pair is denoted as –x(t)  X(  ) One of the most fundamental transform pairs is for the pulse (Example 3.9) –p T (t)   sinc (  /2  ) (Equation 3.9)

3.5 Spectral Content of Common Signals This section uses the MATLAB Symbolic Math Toolbox to compute the Fourier transform of several common signals so that their spectral component can be compared. –fourier(f) where f is a symbolic object. –ifourier(F) where F is a symbolic object. –The command int is actually used.

Spectral Content Examples Example 3.11 Triangular Pulse –When compared to the pulse, the faster transitions in the time domain result in higher frequencies in the frequency domain. –The results in the decaying exponential illustrate a similar result--as b gets larger, the time transition is faster and the spectrum is wider. Example 3.12 Decaying Sinusoid

Spectral Content Examples Example 3.12 Decaying Sinusoid –Exponential decay rate is a = 2. –The two sinusoidal frequencies are b  = 2  and 10 .

3.6 Properties of the Fourier Transform Linearity Left or Right Shift in Time Time Scaling Time Reversal Multiplication by a Power of t Multiplication by a Complex Exponential

3.6 Properties (cont.) Multiplication by a Sinusoid Differentiation in the Time Domain Integration in the Time Domain Convolution in the Time Domain Multiplication in the Time Domain Parseval’s Theorem Duality Table 3.1 List of the Properties

3.7 Generalized Fourier Transform First, consider the transform of  (t): –  (t)  1 Consider x(t) =1 and apply the duality property: –x(t) = 1 (all t)  2  (  ) (Eq. 3.71) Using Eq and the modulation property, the generalized Fourier transform for a sinusoid is –cos(  0 t)  j  [  (  +  0 ) +  (  +  0 )] –sin(  0 t)  j  [  (  +  0 ) -  (  +  0 )]