The lyapunovExponent function in the Predictive Maintenance Toolbox gives incorrect result when the input signal has angular frequency a multiple of \pi
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The lyapunovExponent function provided in the Predictive Maintenance toolbox (https://in.mathworks.com/help/predmaint/ref/lyapunovexponent.html) works very well but fails to provide the correct answer when the signal has an angular frequency of multiple of $\pi$. Given here are two signals with angular frequency $4\pi$ and $4\pi+0.01$. It works fine when the angular frequency is slightly off the multiple of $\pi$. The expected result is the LE as close to zero. But gives erroneous positive value when the angular frequency is a multiple of $\pi$. Is there a workaround about this?
dt=0.01;
t=0:0.01:49.99;
fs=1/dt;
x=sin(4*pi*t);
y=sin(((4*pi)+0.01)*t);
lag=13;
dim=2;
lyapunovExponent(x,fs,lag,dim,'ExpansionRange',800)
lyapunovExponent(y,fs,lag,dim,'ExpansionRange',800)
1 Comment
Vishnu Ravindran
on 23 Feb 2023
If y=sin((2*pi-1e-10)*t) works similar to y given above, while x= sin((2*pi)*t) gives result similar to x above.
Accepted Answer
Bora Eryilmaz
on 23 Feb 2023
Edited: Bora Eryilmaz
on 23 Feb 2023
When the signal is periodic, with no noise, the nearest neighbor of each data point in the signal on the phase plane will be essentially at the same location on the next cycle (or very close depending on sampling rate fs). So the distance to the nearest neigbor of each point will be essentially zero. This is why you are seeing the very small y-axis values on both plots (around e^-3300 and e^-770). In such a case, the linear approximations to the Average Log Divergence curves are no longer reliable. The slope of the linear approximation is the Lyapunov Exponent, which will also be inaccurate in this case.
A quick and dirty workaround is to add a little bit of noise to the signals so that essentially zero-distance neighbors are eliminated.
dt = 0.01;
t = 0:0.01:49.99;
fs = 1/dt;
x = sin(4*pi*t);
y = sin(((4*pi)+0.01)*t);
lag = 13;
dim = 2;
noise = rand(size(x)) / 10;
lyapunovExponent(x+noise, fs, lag, dim, 'ExpansionRange', 800)
lyapunovExponent(y+noise, fs, lag, dim, 'ExpansionRange', 800)
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