FFT of a frequency sweep using logarithmic spacing.
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Hello,
I've been trying to obtain the FFT of a frequnecy sweep performed using a logarithmic progression. The signal was generated using a waveform generator, but is similar to that obtained using the chirp function as in the example below.
% Define parameters
Fs = 10000; % Sampling frequency (Hz)
T = 1/Fs; % Sampling period
L = Fs*2; % Length of signal
t = (0:L-1)*T; % Time vector
% Generate frequency sweep signal
f1 = 1; % Start frequency (Hz)
f2 = 2000; % End frequency (Hz)
y = 0.5*chirp(t, f1, T*L, f2, 'logarithmic');
% Calculate FFT
Y = fft(y);
% Calculate the frequency axis
f = Fs*(0:(L/2))/L;
% Normalize the FFT result by the amplitude of the original signal
P2 = abs(Y/L);
P1_arb = P2(1:L/2+1);
P1_arb(2:end-1) = 2*P1_arb(2:end-1);
% Plot signal and FFT
figure;
subplot(1, 2, 1)
plot(t, y)
title('Generated Signal')
xlabel('Time (s)');
ylabel('Amplitude (V)');
subplot(1, 2, 2)
plot(f, P1_arb);
title('Log Chirp');
xlabel('Frequency (Hz)');
ylabel('|Y(f)|');
When plotting the signal it's clear that the amplitude is 0.5. However, the FFT shows a variable amplitude which is nowhere close to the value of 0.5 expected.
If instead the chirp function is set to 'linear' the result is a constant amplitude across the frequency range but the amplitude is 0.008, which I don't understand how it is related to the inital value of 0.5.
y = 0.5*chirp(t, f1, T*L, f2, 'linear');
% Calculate FFT
Y = fft(y);
% Calculate the frequency axis
f = Fs*(0:(L/2))/L;
% Normalize the FFT result by the amplitude of the original signal
P2 = abs(Y/L);
P1_arb = P2(1:L/2+1);
P1_arb(2:end-1) = 2*P1_arb(2:end-1);
% Plot signal and FFT
figure;
subplot(1, 2, 1)
plot(t, y)
title('Generated Signal')
xlabel('Time (s)');
ylabel('Amplitude (V)');
subplot(1, 2, 2)
plot(f, P1_arb);
title('Linear Chirp');
xlabel('Frequency (Hz)');
ylabel('|Y(f)|');
Could you help me normalize the resulting FFT in order to obtain the expected amplitude.
Thank you,
Nuno
4 Comments
Pat Gipper
on 14 May 2024
Thanks Nuno. I found the solution to the linear case using emperical methods and do not have an analytical means to get to the answer that I did. Using the same method for the logarithmic case would involve a lot of trial and error. So I'll leave that one for some smart person out there!
Accepted Answer
Pat Gipper
on 17 May 2024
Here is some code to perform the logarithmic chirp normalization.
% Define parameters
clear norm
N = 1; % Chirp duration (sec)
Fs = 20000; % Sampling frequency (Hz)
T = 1/Fs; % Sampling period
L = Fs*N; % Length of signal
t = (0:L-1)*T; % Time vector
% Generate frequency sweep signal
f1 = 1; % Start frequency (Hz)
f2 = 2000; % End frequency (Hz)
y = 0.5*chirp(t, f1, T*L, f2, 'logarithmic');
% Calculate FFT
Y = fft(y);
% Calculate the frequency axis
f = Fs*(0:(L/2))/L;
% This section of code calculates a correction factor for a given fft bin
% whereby it adjusts inversely for the time the chirp is within that bin
% frequency range versus the total chirp duration
B = (f2/f1)^(1/N); % chirp constant for logarithmic sweep
for i = 1:size(f,2)-1
flow = f(i);
fhigh = f(i+1);
thigh = log((fhigh/f1))/log(B);% Solve for the end time of this fft bin
tlow = log((flow/f1))/log(B);% Solve for the start time of this fft bin
norm(i) = N / (thigh - tlow);% Normalization factor of this fft bin
end
% Normalize the FFT result by the amplitude of the original signal
P2 = abs(Y/L);
P1_arb = P2(1:L/2+1);
P1_arb(2:end-1) = 2*P1_arb(2:end-1);% Adjust non-DC terms for negative freq
P1_arb(1:end-1) = P1_arb(1:end-1) .* sqrt(norm);% Logrithmic normalization
% Plot signal and FFT
figure;
subplot(1, 2, 1)
plot(t, y)
title('Generated Signal')
xlabel('Time (s)');
ylabel('Amplitude (V)');
subplot(1, 2, 2)
plot(f, P1_arb);
title('Log Chirp');
xlabel('Frequency (Hz)');
ylabel('|Y(f)|');
2 Comments
Pat Gipper
on 20 May 2024
Your welcome Nuno. I really wanted to give a complete answer to your original question, and not leave things half done.
More Answers (1)
Pat Gipper
on 14 May 2024
Moved: Rena Berman
on 5 Jun 2024
The correction factor for a linear chirp is sqrt(beta) / df, where beta is the chirp rate in Hz/sec and df is the FFT bin size in Hz. Here is the modified code that includes this added correction factor.
% Define parameters
N = 2; % Chirp duration (sec)
Fs = 10000; % Sampling frequency (Hz)
T = 1/Fs; % Sampling period
%L = Fs*2; % Length of signal
L = Fs*N; % Length of signal
t = (0:L-1)*T; % Time vector
% Generate frequency sweep signal
f0 = 1; % Start frequency (Hz)
f1 = 2000; % End frequency (Hz)
y = 0.5*chirp(t, f0, T*L, f1, 'linear');
% What is the sweep rate Beta
beta = (f1-f0)/max(t); % f(t) f1+beta*t
% Calculate FFT
Y = fft(y);
% Calculate the frequency axis
f = Fs*(0:(L/2))/L; % Only plot out to the Nyquist rate
df = f(2); % Frequency bin width (Hz)
% Normalize the FFT result by the amplitude of the original signal
P2 = abs(Y/L); % Normalize by the number of samples
P1_arb = P2(1:L/2+1); % Plot out to the Nyquist rate
P1_arb(2:end-1) = 2*P1_arb(2:end-1); % Double to include negative freqs
P1_arb(2:end-1) = P1_arb(2:end-1) * sqrt(beta) / df; % Correction factor
% Plot signal and FFT
figure;
subplot(1, 2, 1)
plot(t, y)
title('Generated Signal')
xlabel('Time (s)');
ylabel('Amplitude (V)');
subplot(1, 2, 2)
plot(f, P1_arb);
title('Linear Chirp');
xlabel('Frequency (Hz)');
ylabel('|Y(f)|');
3 Comments
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