Periodogram.... Which best method does reduce variance and bias of periodogram in these two states : finite length of noisy sound signal and several pure and noisy signals?

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Which best method does reduce variance and bias of periodogram in these two states :
finite length of noisy sound signal and several pure and noisy signals?

回答 (1 件)

Sudarsanan A K
Sudarsanan A K 2024 年 5 月 2 日
Hi Najim,
To reduce the variance and bias of the periodogram in the two states you mentioned, you can use the Welch's method or the multitaper method.
  1. Welch's method: This method divides the signal into overlapping segments and computes the periodogram for each segment. The individual periodograms are then averaged to obtain a smoother estimate with reduced variance. You can use the "pwelch" function in MATLAB to implement Welch's method.
  2. Multitaper method: This method uses a set of orthogonal tapers (also known as windows) to compute multiple periodograms. The individual periodograms are then combined using a weighted average to reduce bias and variance. MATLAB provides the "pmtm" function to implement the multitaper method.
Here is an example to visualize the performance of these methods:
% Simulation Parameters
fs = 1000; % Sampling frequency (Hz)
t = 0:1/fs:1-1/fs; % Time vector for 1 second
f = 50; % Frequency of sine wave (Hz)
nfft = 1024; % Number of FFT points
% Generate a noisy signal
signal = sin(2*pi*f*t) + 0.5*randn(size(t));
% Periodogram
[pxx_periodogram, f_periodogram] = periodogram(signal, [], nfft, fs);
% Welch's Method - Using a Hamming window of 256 samples and 50% overlap
[pxx_welch, f_welch] = pwelch(signal, hamming(256), 128, nfft, fs);
% Multitaper Method - Using time-halfbandwidth product of 3.5 and 5 tapers
[pxx_multitaper, f_multitaper] = pmtm(signal, 3.5, nfft, fs);
% Plot the PSD estimates
figure;
plot(f_periodogram, 10*log10(pxx_periodogram), 'LineWidth', 1, 'DisplayName', 'Periodogram');
hold on;
plot(f_welch, 10*log10(pxx_welch), 'LineWidth', 1, 'DisplayName', 'Welch');
plot(f_multitaper, 10*log10(pxx_multitaper), 'LineWidth', 1, 'DisplayName', 'Multitaper');
hold off;
xlabel('Frequency (Hz)');
ylabel('Power/Frequency (dB/Hz)');
title('PSD Estimates Comparison');
legend('show');
grid on;
Welch's and Multitaper methods generally offer better bias and variance than the Periodogram due to averaging and multiple tapers, respectively. However, the best choice depends on signal characteristics, accuracy-complexity trade-offs, and specific application requirements. Experimentation with various methods and settings on representative data is advised to identify the optimal approach. Here are some resources that you may find useful:
I hope this helps!

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