2nd order butterworth filter and PCA
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Good morning, I am performing a FFT on my accelerometer data, but I am having issues with the 2nd-order Butterworth filter and pca interpretation. Please find a snippet of my code below.
RE the 2nd-order Butterworth filter, I am trying to first, downsample to 100 Hz (haven't managed to do this yet), and then bandpass filter using a second-order Butterworth filter between 3-15 Hz. However, I keep getting the error: "The cutoff frequencies must be within the interval of (0,1). Would anyone be able to assist me with this - specifically, highlight where in the code I am going wrong?
Regarding the pca, the anwser below (bolded) is the anwser from the pca. The columns represent 'x, z, y' - does this suggest that the Y is the most dominant (movement-centred) axis of tremor acceleration? From plotting, this seems correct but I'd like some confirmation (plot not included in the code provided below).
PCA ans = 0.9780 -0.1221 0.1694
-0.0357 0.7013 0.7120
0.2057 0.7023 -0.6815
Code:
t = data(:,1); % column corresponding to time (block of 60s)
Accel = data(:,2:end); % three columns corresponding to x, y, z (accelerometer data)
srate = 5000; % Hz (need to figure out how to downsample to 100Hz)
Fs = 1/srate; % Sampling Rate (in Hz)
Fn =Fs/2; % Nyquist Frequency (in Hz)
coeff = pca(Accel); % Need to obtain the most dominant (movement-centred) axis of tremor acceleration; use first component for all subsequent analyses
%2nd order Butterworth filter between 3-15 Hz
Wp = [3 15]/Fn; % Norrmalised Passband Frequencies
Ws = [1.5 15.99]/Fn; % Normalised Stopband Frequencies
Rp = 1; % Passband Ripple (dB)
Rs = 25; % Stopband Ripple (dB)
[n,Wn] = buttord(Wp, Ws, Rp, Rs); % Optimal Filter Order
[b,a] = butter(n, Wn); % Calculate Filter Coefficients
[sos,g] = tf2sos(b,a); % Convert To Second-Order Sections For Stability
figure(1)
freqz(sos, 4096, Fs) % Filter Bode Plot
Many thanks in advance for any assistance :)
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Star Strider
el 7 de Oct. de 2020
With respect to downsampling, use the resample function. I wouldn’t downsample the signal unless you absolutely must for some reason. Most of the time, I use resample to create a unifformly-sampled signal from a non-uniformly-sampled signal, since all signal processing requires uniform sampling. If you do decide to downsample, be sure to change ‘Fs’ to reflect that, if you’re doing the filtering after the downsampling.
I don’t understand this assignmment:
srate = 5000;
If ‘srate’ is your sampling rate, it’s actually ‘Fs’, the sampling frequency, so assign it to ‘Fs’ instead. That’s also the indirect cause of the error you’re getting.
With that correction, the rest of your code should work. (It looks like I wrote it!)
I would also make two change these assignments:
[b,a] = butter(n, Wn); % Calculate Filter Coefficients
[sos,g] = tf2sos(b,a); % Convert To Second-Order Sections For Stability
to:
[z.p,k]] = butter(n, Wn); % Calculate Filter Coefficients
[sos,g] = zp2sos(b,a); % Convert To Second-Order Sections For Stability
That will design a better filter that the code I originally wrote.
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Star Strider
el 7 de Oct. de 2020
As always, my pleasure!
I very much appreciate your compliment!
If there is no specific need to downsample, I would reccommend against doing it. I don’t know what you’re doing, however more data is always better.
That was a typo in the conversion to the zero-pole-gain representation (it’s been a long day).
That line should be:
[sos,g] = zp2sos(z,p,k); % Convert To Second-Order Sections For Stability
The code should now work correctly.
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