Exp-4(a) Sampling of band limited signal : Nyquist theorem
Exp-4(b) Sampling of non bandlimited signal : Anti aliasing filter
Exp-4(c) Signal reconstruction from its samples
Exp-4(d) Frequency domain sampling : DFT
Exp-4(e) Spectral analysis using DFT

Exp-4(a) Sampling of band limited signal : Nyquist theorem
- Run the experiment by pressing "
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Further if we create a discrete time sequence having values same as that of the continuous-time impulse sampled signal is shown in scope 5, then its DTFT spectra is shown in scope 6 is identical to the CTFT spectra of the impulse sampled signal. This demonstrates the basic principle behind the sampling of the continuous-time signal.
Exp-4(b) Sampling of non bandlimited signal: Anti-aliasing filter

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For non-bandlimited signal for all sampling rate aliasing distortion cannot be avoided although it does reduce with increasing sampling rate.
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The choice of cut off frequency of anti-aliasing filter is higher for higher sampling rate then that for lower sampling rate. As result of this the distortion caused to the signal is reduced.
Exp-4(c) Signal reconstruction from its samples:
Exp-4(d) Frequency domain sampling : DFT
The number of sample point of the Fourier transform correspond to the reciprocal of the period of the impulse train.
The Fourier transform of a discrete time signal is continuous function of frequency. To represent with finite precision it need to be first sampled in the frequency domain.

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From scope 4, we can note that for denser sampling of the Fourier transform of the aperiodic discrete-time signal, the original signal happens repeat with greater period in time domain.
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Conversely, we can conclude that on repeating an aperiodic signal with greater period, which involves adding aditional zeros to the signal, its Fourier transform turns out to be discrete in frequency domain with frequency samples taken at a rate reciprocal to the period of the time domain signal. This process is reffered as discrete Fourier transform.
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Note that at the aliasing condition the reconstructed signal does not have similarity with the original signal.
Exp-4(e) Spectral analysis using DFT
This experiment demonstrate the spectral analysis of an analog signal performed using discrete Fourier transform (DFT). Consider analog signal consisting of three sinusoids of frequencies 0.65 Hz, 0.67 Hz and 0.69 Hz with amplitudes 0.1, 0.4 and 0.2 respectively. This composite signal is sampled at rate of 100 Hz which is well above the Nyquist rate. The resulting discrete-time signal is considered to be the output of the signal generator.
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For the spectral analysis using DFT, we need to select some finite samples of the signal which can be done by multiplying the signal by a rectangular window whose length in seconds can be set by the "Window length in seconds" arrow key. The number of samples of the selected signal corresponding to window length set is shown in "Window length in sample" indicator box. The default value of the window length is 60 sec. The selected portion of the signal is shown in scope 1.