Compute nonparametric estimate of spectrum using periodogram method
Estimation / Power Spectrum Estimation
dspspect3
Transforms
dspxfrm3
The Magnitude FFT block computes a nonparametric estimate of the spectrum using the periodogram method.
When the Output parameter is set
to Magnitude squared
,
the block output for an
M-by-N input
u is equivalent to
y = abs(fft(u,nfft)).^2 % M ≤ nfft
When the Output parameter is set
to Magnitude
, the block
output for an input u is
equivalent to
y = abs(fft(u,nfft)) % M ≤ nfft
When M > Nfft, the block wraps the input to Nfft before computing the FFT using one of the above equations:
y(:,k)=datawrap(u(:,k),nfft) % 1 ≤ k ≤ N
When M > Nfft, the block can also truncate the input:
y(:,k)=abs(fft(u,nfft)) % 1 ≤ k ≤ N
The block treats an M-by-N matrix input as M sequential time samples from N independent channels. The block computes a separate estimate for each of the N independent channels and generates an Nfft-by-N matrix output. Each column of the output matrix contains the estimate of the corresponding input column's power spectral density at Nfft equally spaced frequency points in the range [0,Fs), where Fs represents the signal's sample frequency. The block always outputs sample–based data.
The Magnitude FFT block supports real and complex
floating-point inputs. The block also supports
real fixed-point inputs in both
Magnitude
and
Magnitude squared
modes, and complex fixed-point inputs in the
Magnitude squared
mode.
The following diagram shows the data types used within the Magnitude FFT subsystem block for fixed-point signals.
The settings for the fixed-point parameters of the FFT block in the diagram above are as follows:
Sine table — Same word
length as input
Integer rounding mode —
Floor
Saturate on integer overflow — unchecked
Product output — Inherit
via internal rule
Accumulator — Inherit
via internal rule
Output — Inherit via
internal rule
The settings for the fixed-point parameters of the Magnitude Squared block in the diagram above are as follows:
Integer rounding mode —
Floor
Saturate on integer overflow — checked
Output — Inherit via
internal rule
Specify whether the block computes the magnitude FFT or magnitude-squared FFT of the input.
Set this parameter to
FFTW
to support an
arbitrary length input signal. The block restricts
generated code with FFTW implementation to
MATLAB® host computers.
Set this parameter to
Radix-2
for bit-reversed
processing, fixed or floating-point data, or for
portable C-code generation using the Simulink® Coder™. The first dimension
M, of the input matrix must
be a power of two. To work with other input sizes,
use the Pad block
to pad or truncate these dimensions to powers of
two, or if possible choose the FFTW
algorithm.
Set this parameter to
Auto
to let the block
choose the FFT implementation. For
non-power-of-two transform lengths, the block
restricts generated code to MATLAB host computers.
Select to use the input frame size as the number of data points, on which to perform the FFT. When you select this check box, this number must be a power of two. When you do not select this check box, the FFT length parameter specifies the number of data points.
Enter the number of data points on which to perform the FFT, Nfft. When Nfft is larger than the input frame size, each frame is zero-padded as needed. When Nfft is smaller than the input frame size, each frame is wrapped as needed. This parameter is enabled when you clear the Inherit FFT length from input dimensions check box.
When you set the FFT
implementation parameter to
Radix-2
, this value must be a
power of two.
Choose to wrap or truncate the input, depending on the FFT length. If this parameter is checked, modulo-length data wrapping occurs before the FFT operation, given FFT length is shorter than the input length. If this property is unchecked, truncation of the input data to the FFT length occurs before the FFT operation. The default is checked.
Port | Supported Data Types |
---|---|
Input |
|
Output |
|
[1] FFTW (http://www.fftw.org
)
[2] Frigo, M. and S. G. Johnson, “FFTW: An Adaptive Software Architecture for the FFT,”Proceedings of the International Conference on Acoustics, Speech, and Signal Processing, Vol. 3, 1998, pp. 1381-1384.
[3] Oppenheim, A. V. and R. W. Schafer. Discrete-Time Signal Processing. Englewood Cliffs, NJ: Prentice-Hall, 1989.
[4] Orfanidis, S. J. Introduction to Signal Processing. Englewood Cliffs, NJ: Prentice-Hall, 1995.
[5] Proakis, J. and D. Manolakis. Digital Signal Processing. 3rd ed. Englewood Cliffs, NJ: Prentice-Hall, 1996.