Data di Pubblicazione:
2002
Abstract:
The adoption of the Kolmogorov–Sinai entropy is becoming a popular
research tool among physicists,especially when applied to a dynamical
system fitting the conditions of validity of the Pesin theorem.The study
of time series that are a manifestation of system dynamics whose rules are
either unknown or too complex for a mathematical treatment,is
still a challenge since the KS entropy is not computable,in general,in
that case. Here we present a plan of action based on the joint action of
two procedures, both related to the KS entropy, but compatible with
computer implementation through fast and efficient programs. The former
procedure, called compression algorithm sensitive to regularity
(CASToRE), establishes the amount of order by the numerical evaluation of
algorithmic compressibility. The latter, called complex analysis of
sequences via scaling and randomness assessment (CASSANDRA),establishes
the complexity degree through the numerical evaluation of the strength of
an anomalous effect. This is the departure of the
diffusion process generated by the observed fluctuations, from ordinary
Brownian motion.The CASSANDRA algorithm shares with CASToRE a connection
with the Kolmogorov complexity. This makes both algorithms especially
suitable to study the transition from dynamics to thermodynamics, and the
case of non-stationary time series as well.
The benefit of the joint action of these two methods is proven by the
analysis of artificial sequences with the same main
properties as the real time series to which the joint use of these two
methods will be applied in future research work.
Tipologia CRIS:
01.01 Articolo in rivista
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