# Find phase difference between two (inharmonic) waves

I have two datasets listing the average voltage outputs of two assemblies of neural networks at times t, that look something like this:

A = [-80.0, -80.0, -80.0, -80.0, -80.0, -80.0, -79.58, -79.55, -79.08, -78.95, -78.77, -78.45,-77.75, -77.18, -77.08, -77.18, -77.16, -76.6, -76.34, -76.35]

B = [-80.0, -80.0, -80.0, -80.0, -80.0, -80.0, -78.74, -78.65, -78.08, -77.75, -77.31, -76.55, -75.55, -75.18, -75.34, -75.32, -75.43, -74.94, -74.7, -74.68]


When two neural assemblies are "in phase" to a reasonable extent, that means that they are interrelated. What I want to do is calculate the phase difference between A and B, preferably over the whole time of the simulation. Since two assemblies are unlikely to be totally in phase, I want to compare that phase difference to a certain threshold.

These are inharmonic oscillators and I don't know their functions, only these values, so I have no idea how to determine the phase or the respective phase difference.

I am doing this project in Python, using numpy and scipy (the two assemblies are numpy arrays).

Any suggestions would be greatly appreciated!

Example datafile for assembly 1

Example datafile for assembly 2

Here is a plot of what the two datasets look like:

• Please check your data files. They are full of "80"s ! – Dr. belisarius May 30 '11 at 18:52

Perhaps you are looking for the cross-correlation:

scipy.​signal.​signaltools.correlate(A, B)


The position of the peak in the cross-correlation will be an estimate of the phase difference.

EDIT 3: Update now that I have looked at the real data files. There are two reasons that you find a phase shift of zero. First, the phase shift really is zero between your two time series. You can see this clearly if you zoom in horizontally on your matplotlib graph. Second, it is important to regularize the data first (most importantly, subtract off the mean), otherwise the effect of zero-padding at the ends of the arrays swamps the real signal in the cross-correlation. In the following example, I verify that I am finding the "true" peak by adding an artificial shift and then checking that I recover it correctly.

import numpy, scipy
from scipy.signal import correlate

# Load datasets, taking mean of 100 values in each table row

nsamples = A.size

# regularize datasets by subtracting mean and dividing by s.d.
A -= A.mean(); A /= A.std()
B -= B.mean(); B /= B.std()

# Put in an artificial time shift between the two datasets
time_shift = 20
A = numpy.roll(A, time_shift)

# Find cross-correlation
xcorr = correlate(A, B)

# delta time array to match xcorr
dt = numpy.arange(1-nsamples, nsamples)

recovered_time_shift = dt[xcorr.argmax()]

print "Added time shift: %d" % (time_shift)
print "Recovered time shift: %d" % (recovered_time_shift)

# SAMPLE OUTPUT:
# Recovered time shift: 20


EDIT: Here is an example of how it works with fake data.

EDIT 2: Added a graph of the example.

import numpy, scipy
from scipy.signal import square, sawtooth, correlate
from numpy import pi, random

period = 1.0                            # period of oscillations (seconds)
tmax = 10.0                             # length of time series (seconds)
nsamples = 1000
noise_amplitude = 0.6

phase_shift = 0.6*pi                   # in radians

# construct time array
t = numpy.linspace(0.0, tmax, nsamples, endpoint=False)

# Signal A is a square wave (plus some noise)
A = square(2.0*pi*t/period) + noise_amplitude*random.normal(size=(nsamples,))

# Signal B is a phase-shifted saw wave with the same period
B = -sawtooth(phase_shift + 2.0*pi*t/period) + noise_amplitude*random.normal(size=(nsamples,))

# calculate cross correlation of the two signals
xcorr = correlate(A, B)

# The peak of the cross-correlation gives the shift between the two signals
# The xcorr array goes from -nsamples to nsamples
dt = numpy.linspace(-t[-1], t[-1], 2*nsamples-1)
recovered_time_shift = dt[xcorr.argmax()]

# force the phase shift to be in [-pi:pi]
recovered_phase_shift = 2*pi*(((0.5 + recovered_time_shift/period) % 1.0) - 0.5)

relative_error = (recovered_phase_shift - phase_shift)/(2*pi)

print "Original phase shift: %.2f pi" % (phase_shift/pi)
print "Recovered phase shift: %.2f pi" % (recovered_phase_shift/pi)
print "Relative error: %.4f" % (relative_error)

# OUTPUT:
# Original phase shift: 0.25 pi
# Recovered phase shift: 0.24 pi
# Relative error: -0.0050

# Now graph the signals and the cross-correlation

from pyx import canvas, graph, text, color, style, trafo, unit
from pyx.graph import axis, key

text.set(mode="latex")
text.preamble(r"\usepackage{txfonts}")
figwidth = 12
gkey = key.key(pos=None, hpos=0.05, vpos=0.8)
xaxis = axis.linear(title=r"Time, $$t$$")
yaxis = axis.linear(title="Signal", min=-5, max=17)
g = graph.graphxy(width=figwidth, x=xaxis, y=yaxis, key=gkey)
plotdata = [graph.data.values(x=t, y=signal+offset, title=label) for label, signal, offset in (r"$$A(t) = \mathrm{square}(2\pi t/T)$$", A, 2.5), (r"$$B(t) = \mathrm{sawtooth}(\phi + 2 \pi t/T)$$", B, -2.5)]
linestyles = [style.linestyle.solid, style.linejoin.round, style.linewidth.Thick, color.gradient.Rainbow, color.transparency(0.5)]
plotstyles = [graph.style.line(linestyles)]
g.plot(plotdata, plotstyles)
g.text(10*unit.x_pt, 0.56*figwidth, r"\textbf{Cross correlation of noisy anharmonic signals}")
g.text(10*unit.x_pt, 0.33*figwidth, "Phase shift: input $$\phi = %.2f \,\pi$$, recovered $$\phi = %.2f \,\pi$$" % (phase_shift/pi, recovered_phase_shift/pi))
xxaxis = axis.linear(title=r"Time Lag, $$\Delta t$$", min=-1.5, max=1.5)
yyaxis = axis.linear(title=r"$$A(t) \star B(t)$$")
gg = graph.graphxy(width=0.2*figwidth, x=xxaxis, y=yyaxis)
plotstyles = [graph.style.line(linestyles + [color.rgb(0.2,0.5,0.2)])]
gg.plot(graph.data.values(x=dt, y=xcorr), plotstyles)
gg.stroke(gg.xgridpath(recovered_time_shift), [style.linewidth.THIck, color.gray(0.5), color.transparency(0.7)])
ggtrafos = [trafo.translate(0.75*figwidth, 0.45*figwidth)]
g.insert(gg, ggtrafos)
g.writePDFfile("so-xcorr-pyx")


So it works pretty well, even for very noisy data and very aharmonic waves.

• I tried this already, i.e., numpy.argmax(signal.correlate(listX,listY))), but it just returns the number of elements in the list... – Doa May 27 '11 at 21:57
• Odd. What does the autocorrelation array look like if you plot it? – deprecated May 27 '11 at 22:23
• By the way, by "inharmonic" do you mean that the waveforms are strictly periodic but not sinusoidal? Or are they not strictly periodic? And, is the period of the two sequences identical? – deprecated May 27 '11 at 22:28
• @Dow - sorry, but I don't understand the datafiles you posted. Each contains 20,000 lines, with each line consisting of an integer (line number) followed by 100 floats. Apart from the first line, the vast majority (>95%) of the floats in each line are the same value (-80.0). How are we supposed to extract your timeseries A and B from these files? – deprecated May 30 '11 at 15:56
• @Dow - your two timeseries are definitely "in phase" in the sense that the peaks in A coincide with the peaks in B. There is zero lag between one and the other. I haven't checked how periodic they are. If you are interested in that, you could look for peaks in the power spectrum - something like numpy.abs(numpy.fft.fft(A))**2. – deprecated May 31 '11 at 17:22

@deprecated's comments are the exact answer to the question, when it comes to the pure-code python solution. The comments were very valuable, but I feel like I should add some notes for people searching for an answer in the specific context of neural networks.

When you take the average membrane potential of large assemblies of neurons, like I did, the correlation will be relatively weak. What you want to look at, primarily, is either the correlation between spike trains, the latency or the excitability (i.e. synaptic efficacy) of the individual assemblies. This can be found relatively easily by just looking at points where the potential exceeds a certain threshold. Scipy's correlation function on spike trains will show a much more detailed picture of interdependence between neurons or neural assemblies when you give it spike trains, as opposed to the actual potentials. You can also take a look at Brian's statistics module, which can be found here:

http://neuralensemble.org/trac/brian/browser/trunk/brian/tools/statistics.py

As for phase difference, it probably is an inadequate measure, because neurons are not harmonic oscillators. If you want to take very precise measurements of phase, it's best to look at the synchronization of inharmonic oscillators. The mathematical model that describes these kinds of oscillators, which is very useful in the context of neurons and neural networks, is the Kuramoto model. There is extensive documentation available for the Kuramoto model and Integrate-and-fire-synchronization, so I'll leave it to that.