Compare commits
2 Commits
f6f18d9497
...
9da003ca98
| Author | SHA1 | Date |
|---|---|---|
|
|
9da003ca98 | |
|
|
a1a7c8effb |
|
|
@ -0,0 +1,36 @@
|
|||
function signal_win = blackmanWin(signal)
|
||||
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
||||
%function signal_win = blackmanWin(signal)
|
||||
%
|
||||
% Inputs:
|
||||
% - signal: signal of interest
|
||||
%
|
||||
% Output:
|
||||
% - signal_win: signal of interest on which a blackman window was applied
|
||||
%
|
||||
% Author: Guillaume Gibert, guillaume.gibert@ecam.fr
|
||||
% Date: 15/03/2024
|
||||
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
|
||||
|
||||
blackmanWin = zeros(1, length(signal));
|
||||
for l_sample=1:length(signal)
|
||||
blackmanWin(l_sample) = (0.42 - 0.5 * cos(2*pi*(l_sample)/length(signal)) + 0/08*cos(4*pi*(l_sample)/length(signal)));
|
||||
end
|
||||
|
||||
% plot Blackman window
|
||||
%~ figure;
|
||||
%~ plot(blackmanWin);
|
||||
|
||||
% apply the Blackman window
|
||||
for l_sample=1:length(signal)
|
||||
signal_win(l_sample) = signal(l_sample) * blackmanWin(l_sample);
|
||||
end
|
||||
|
||||
%~ figure;
|
||||
%~ plot(signal);
|
||||
%~ hold on;
|
||||
%~ plot(signal_win);
|
||||
|
||||
|
||||
|
||||
|
||||
|
|
@ -0,0 +1,57 @@
|
|||
function power = frequencySpectrum(signal, fs, pad)
|
||||
%%%%%%%%%%%%%%%%%%
|
||||
%function power = frequencySpectrum(signal, fs, pad)
|
||||
%
|
||||
% Task: Display the power spectrum (lin and log scale) of a given signal
|
||||
%
|
||||
% Input:
|
||||
% - signal: the input signal to process
|
||||
% - fs: the sampling rate
|
||||
% - pad: pad the signal with zeros to the next power of 2
|
||||
%
|
||||
% Output:
|
||||
% - power: the power spectrum
|
||||
%
|
||||
%
|
||||
% Guillaume Gibert, guillaume.gibert@ecam.fr
|
||||
% 25/04/2022
|
||||
%%%%%%%%%%%%%%%%%%
|
||||
|
||||
n = length(signal); % number of samples
|
||||
|
||||
if (pad)
|
||||
n_original = n;
|
||||
n = 2^(nextpow2(n));
|
||||
signal = [signal zeros(1, n-n_original)];
|
||||
end
|
||||
|
||||
y = fft(signal, n);% compute DFT of input signal
|
||||
power = abs(y).^2/n; % power of the DFT
|
||||
|
||||
[val, ind] = max(power); % find the mx value of DFT and its index
|
||||
|
||||
% plots
|
||||
figure;
|
||||
|
||||
subplot(1,3,1) % time plot
|
||||
t=0:1/fs:(n-1)/fs; % time range
|
||||
plot(t, signal)
|
||||
xticks(0:0.1*fs:n*fs);
|
||||
xticklabels(0:0.1:n/fs);
|
||||
xlabel('Time (s)');
|
||||
ylabel('Amplitude (a.u.)');
|
||||
|
||||
subplot(1,3,2) % linear frequency plot
|
||||
f = (0:n-1)*(fs/n); % frequency range
|
||||
plot(f,power, 'b*'); hold on;
|
||||
plot(f,power, 'r');
|
||||
xlabel('Frequency (Hz)')
|
||||
ylabel('Power (a.u.)')
|
||||
xlim([30,40]);
|
||||
|
||||
subplot(1,3,3) % log frequency plot
|
||||
plot(f,10*log10(power/power(ind)));
|
||||
xlabel('Frequency (Hz)')
|
||||
ylabel('Power (dB)')
|
||||
xlim([30,40]);
|
||||
|
||||
|
|
@ -0,0 +1,74 @@
|
|||
%%%%%%%%%%%%%%%%%%%%%%
|
||||
% UNKNOWN SIGNAL
|
||||
% Sampling frequency: 200 Hz
|
||||
% Duration; 2 s
|
||||
% First second: 6.25Hz, 13.28 Hz, 17.19 Hz
|
||||
% Second second: 17.97Hz, 6.25 Hz, 8.59 Hz, 13.28 Hz
|
||||
%%%%%%%%%%%%%%%%%%%%%%
|
||||
|
||||
% loads the signal package on Octave
|
||||
% pkg load signal
|
||||
|
||||
% loads signal and its characteristics
|
||||
signal = csvread('unknownsignal.csv');
|
||||
|
||||
%%%%%SIGNAL CHARACTERISTICS%%%%%
|
||||
% sets sampling frequency
|
||||
fps = 300; % -> freqMax of the signal should be < 150 Hz (Shannon-Nyquisit theorem), in practice freqMax < 60 Hz would be better
|
||||
|
||||
% computes the duration of the signal
|
||||
duration = length(signal) / fps; % in s
|
||||
|
||||
% estimates its original frequency resolution
|
||||
resolution = fps / length(signal); % in Hz
|
||||
|
||||
%%%%%STATIONARITY%%%%%
|
||||
% temporal plot
|
||||
figure;
|
||||
plot(signal);
|
||||
xticks(0:0.2*fps:length(signal)*fps);
|
||||
xticklabels(0:0.2:length(signal)/fps);
|
||||
xlabel('Time (s)');
|
||||
ylabel('Amplitude (a.u.)');
|
||||
|
||||
% spectrogram
|
||||
step_size = 50; %ms
|
||||
window_size = 100; %ms
|
||||
spectrogram(signal, fps, step_size, window_size);
|
||||
|
||||
% ccl: signal is not stationary, it is composed of 2 parts
|
||||
|
||||
%%%%%SPLIT SIGNAL INTO 2 PARTS%%%%%
|
||||
% First part: [0 1s]
|
||||
signal_1 = signal(1:end/2);
|
||||
% Second part: [1s 2s]
|
||||
signal_2 = signal(end/2+1:end);
|
||||
|
||||
%%%%%SPECTRAL ANALYSIS (RECTANGULAR WINDOW)%%%%%
|
||||
%plots power spectrum with rectangular window
|
||||
% 1st part of the signal with 1 Hz resolution
|
||||
frequencySpectrum(signal_1, fps, 1);
|
||||
|
||||
|
||||
% 2nd part of the signal with 1 Hz resolution
|
||||
frequencySpectrum(signal_2, fps, 1);
|
||||
|
||||
|
||||
|
||||
|
||||
%%%%%SPECTRAL ANALYSIS (BLACKMAN WINDOW)%%%%%
|
||||
%plots power spectrum with blackman window
|
||||
signal_1_win = blackmanWin(signal_1);
|
||||
% 1st part of the signal with 1 Hz resolution
|
||||
frequencySpectrum(signal_1_win, fps, 1);
|
||||
|
||||
|
||||
signal_2_win = blackmanWin(signal_2);
|
||||
% 2nd part of the signal with 1 Hz resolution
|
||||
frequencySpectrum(signal_2_win, fps, 1);
|
||||
|
||||
|
||||
|
||||
|
||||
|
||||
|
||||
|
|
@ -0,0 +1,38 @@
|
|||
function spectrogram(signal, samplingFreq, step_size, window_size)
|
||||
%%%%%%%%%%%%%%%%%%%%%%%
|
||||
%function spectrogram(signal, samplingFreq, step_size, window_size)
|
||||
% ex.: spectrogram(signal, 300, 50, 1000)
|
||||
%
|
||||
% Task: Plot the spectrogram of a given signal
|
||||
%
|
||||
% Inputs:
|
||||
% -signal: temporal signal to analyse
|
||||
% -samplingFreq: sampling frequency of the temporal signal
|
||||
% -step_size: how often the power spectrum will be computed in ms
|
||||
% -window_size: size of the analysing window in ms
|
||||
%
|
||||
% Ouput: None
|
||||
%
|
||||
% author: Guillaume Gibert (guillaume.gibert@ecam.fr)
|
||||
% date: 14/03/2023
|
||||
%%%%%%%%%%%%%%%%%%%%%%%
|
||||
|
||||
figure;
|
||||
subplot(2,1,1);
|
||||
t=0:1/samplingFreq:length(signal)/samplingFreq-1/samplingFreq;
|
||||
plot(t, signal');
|
||||
xlim([0 length(signal)/samplingFreq-1/samplingFreq]);
|
||||
ylabel('amplitude (norm. unit)');
|
||||
subplot(2,1,2);
|
||||
step = fix(step_size*samplingFreq/1000); % one spectral slice every step_size ms
|
||||
window = fix(window_size*samplingFreq/1000); % window_size ms data window
|
||||
fftn = 2^nextpow2(window); % next highest power of 2
|
||||
[S, f, t] = specgram(signal, fftn, samplingFreq, window, window-step);
|
||||
S = abs(S(2:fftn*samplingFreq/2/samplingFreq,:)); % magnitude in range 0<f<=4000 Hz.
|
||||
S = S/max(S(:)); % normalize magnitude so that max is 0 dB.
|
||||
S = max(S, 10^(-40/10)); % clip below -40 dB.
|
||||
S = min(S, 10^(-3/10)); % clip above -3 dB.
|
||||
imagesc (t, f, log(S)); % display in log scale
|
||||
set (gca, "ydir", "normal"); % put the 'y' direction in the correct direction
|
||||
xlabel('time (s)');
|
||||
ylabel('frequency (Hz)');
|
||||
Loading…
Reference in New Issue