Conditional averaging of overlapping pulses
Permanent link
https://hdl.handle.net/10037/29416Date
2023-05-15Type
MastergradsoppgaveMaster thesis
Author
Nilsen, Rolf Annar BergAbstract
Conditional averaging is a signal processing method used to study turbulent fluctuations in a
variety of fields. The method, in its simplest form, works by finding peaks in a signal that fulfill
a certain size threshold. Equally sized excerpts of the signal around every peak are then cut out
and averaged. This yields the average shape of the events that fulfill the condition. Based on
the peak finding within the method one also obtains the amplitudes and waiting times between
the conditional events. the aim of this thesis is to test if these statistics can be used to estimate
underlying properties of the signals we are looking at. We use signals created by superposing pulses
with the same shape at different times and with different amplitudes decided by input probability
distributions, and compare the inputs used to make the signals with the outputs of conditional
averaging. By changing the input distributions, we can alter the degree of pulse overlap within
the signals, and thus see for which degrees of pulse overlap conditional averaging successfully
reproduces the underlying statistics. We will also investigate the methods robustness in the face of
noise, studying how well different conditions recover the underlying pulses, while also attempting
to establish if additional conditions aimed at reducing noise effects are necessary.
Our results conclude that conditional averaging generally works well when predicting the shape
of the underlying pulses, even in the face of pulse overlap. Noise severely affects the pulse shape
estimates without any additional noise-reducing conditions. The noise reducing condition that
we investigate here is one where we enforce a minimum distance between peaks. This additional
condition results in greatly mitigating the effects of noise., leaving us to conclude that this it
should always be used in addition to the size threshold condition to achieve the most robust results.
The amplitude distribution estimates work well if there are not too many overlapping structures.
However, the estimate break down even in the case of a moderate degree of pulse overlap, defined
roughly as when there is on average one pulse arrival per pulse duration time in the signal. The
estimates resemble the tail of the signals probability distribution largely independent of input
amplitudes. Comparing the estimates from different input waiting time distributions, we conclude
that the method fails to predict the underlying distribution, even in the case of little pulse overlap.
We loosely define this as one pulse arrival per ten pulse durations on average within the signal.
When pulses overlap more often, the method predicts exponentially distributed waiting times
independent of input distribution. This leads to the main conclusion of the thesis; that the use of
conditional averaging should in general be limited to estimating the average shape of underlying
events.
Finally, the use of conditional averaging in previous works is also discussed. We find that the
conclusions based on the average pulse shape estimate are valid, as authors use the method in
regimes of pulse overlap where this estimate is still accurate. Contrary to this, conclusions made
from amplitude and waiting time distributions are often made at degrees of pulse overlap where
we have demonstrated the method to give erroneous results. This might lead authors to make
conclusions based on incorrect information.
Publisher
UiT Norges arktiske universitetUiT The Arctic University of Norway
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