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a2dea29304
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function power = frequencySpectrum(signal, fs, resolution)
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%%%%%%%%%%%%%%%%%%
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%function power = frequencySpectrum(signal, fs, pad)
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%
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% Task: Display the power spectrum (lin and log scale) of a given signal
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%
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% Input:
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% - signal: the input signal to process
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% - fs: the sampling rate in Hz
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% - resolution: frequency resolution in Hz, signal will be padded with zeros if necessary
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%
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% Output:
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% - power: the power spectrum
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%
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%
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% Guillaume Gibert, guillaume.gibert@ecam.fr
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% 15/03/2024
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%%%%%%%%%%%%%%%%%%
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n = length(signal); % number of samples
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current_resolution = fs / n;
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if (resolution < current_resolution)
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n_original = n;
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n = fs / resolution;
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signal = [signal zeros(1, n-n_original)];
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end
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%~ if (pad)
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%~ n_original = n;
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%~ n = 2^(nextpow2(n));
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%~ signal = [signal zeros(1, n-n_original)];
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%~ end
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y = fft(signal, n);% compute DFT of input signal
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power = abs(y).^2/n; % power of the DFT
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[val, ind] = max(power); % find the mx value of DFT and its index
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% plots
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figure;
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subplot(1,3,1) % time plot
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t=0:1/fs:(n-1)/fs; % time range
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plot(t, signal)
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xticks(0:0.1*fs:n*fs);
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xticklabels(0:0.1:n/fs);
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xlabel('Time (s)');
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ylabel('Amplitude (a.u.)');
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title('Time');
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subplot(1,3,2) % linear frequency plot
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f = (0:n-1)*(fs/n); % frequency range
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plot(f,power, 'b*'); hold on;
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plot(f,power, 'r');
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xlim([5, 20]);
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xlabel('Frequency (Hz)')
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ylabel('Power (a.u.)')
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title('Linear Frequency');
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subplot(1,3,3) % log frequency plot
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plot(f,10*log10(power/power(ind)));
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xlabel('Frequency (Hz)')
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ylabel('Power (dB)')
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title('Log Frequency');
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@ -0,0 +1,62 @@
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```% loads signal and its characteristics
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signal = csvread('unknownsignal.csv');
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%%%%%SIGNAL CHARACTERISTICS%%%%%
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% sets sampling frequency
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fps = 300; % -> freqMax of the signal should be < 150 Hz (Shannon-Nyquisit theorem), in practice freqMax < 60 Hz would be better
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% computes the duration of the signal
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duration = length(signal) / fps; % in s
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% estimates its original frequency resolution
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resolution = fps / length(signal); % in Hz
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%%%%%STATIONARITY%%%%%
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% temporal plot
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figure;
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plot(signal);
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xticks(0:0.2*fps:length(signal)*fps);
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xticklabels(0:0.2:length(signal)/fps);
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xlabel('Time (s)');
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ylabel('Amplitude (a.u.)');
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% spectrogram
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step_size = 50; %ms
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window_size = 100; %ms
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spectrogram(signal, fps, step_size, window_size);
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% ccl: signal is not stationary, it is composed of 2 parts
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%%%%%SPLIT SIGNAL INTO 2 PARTS%%%%%
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% First part: [0 1s]
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signal_1 = signal(1:end/2);
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% Second part: [1s 2s]
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signal_2 = signal(end/2+1:end);
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%%%%%SPECTRAL ANALYSIS (RECTANGULAR WINDOW)%%%%%
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%plots power spectrum with rectangular window
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% 1st part of the signal with 1 Hz resolution
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frequencySpectrum(signal_1, fps, 1);
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% 1st part of the signal with 0.5 Hz resolution
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frequencySpectrum(signal_1, fps, 0.5);
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% 2nd part of the signal with 1 Hz resolution
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frequencySpectrum(signal_2, fps, 1);
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% 2nd part of the signal with 0.5 Hz resolution
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frequencySpectrum(signal_2, fps, 0.5);
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%%%%%SPECTRAL ANALYSIS (BLACKMAN WINDOW)%%%%%
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%plots power spectrum with blackman window
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signal_1_win = blackmanWin(signal_1);
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% 1st part of the signal with 1 Hz resolution
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frequencySpectrum(signal_1_win, fps, 1);
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% 1st part of the signal with 0.5 Hz resolution
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frequencySpectrum(signal_1_win, fps, 0.5);
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signal_2_win = blackmanWin(signal_2);
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% 2nd part of the signal with 1 Hz resolution
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frequencySpectrum(signal_2_win, fps, 1);
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% 2nd part of the signal with 0.5 Hz resolution
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frequencySpectrum(signal_2_win, fps, 0.5);```
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