 
  
  
   
Solutions of dynamical systems in the vicinity of bifurcation may
have longer transient  times than solutions in other states. 
Could  the increased transient time  be the reason for
the  digressions from the one-to-one functional
dependence of the GPER on the KSE/LE? Using the logistic map in the range of the parameter a
considered in Fig. 2d-f, we have studied variances of the
GPER estimates (using the 15 realizations of 16k time series)
as well as variances of the LE estimates,
after skipping out different numbers of initial iterations
considered as the transient time.
In this case  we
used 15 LE estimates from 20,000 iterations each
(unlike in the previous section, where the LE estimates
from whole 300,000 iterations were used).
The SD (standard deviations, square roots of the variances)
of the GPER (Fig. 4a,c,e) and LE (Fig. 4b,d,f) estimates
as functions of the parameter a are plotted
in Fig. 4.
When no transient iterations were omitted
and the computation of the GPER and the  LE started at the beginning
of the iteration,
the variances of the GPER and LE estimates
are very large due to the transients (Fig. 4a,b, note different scales).
Starting the LE/GPER estimation after
skipping 
hundred thousand
Using the logistic map in the range of the parameter a
considered in Fig. 2d-f, we have studied variances of the
GPER estimates (using the 15 realizations of 16k time series)
as well as variances of the LE estimates,
after skipping out different numbers of initial iterations
considered as the transient time.
In this case  we
used 15 LE estimates from 20,000 iterations each
(unlike in the previous section, where the LE estimates
from whole 300,000 iterations were used).
The SD (standard deviations, square roots of the variances)
of the GPER (Fig. 4a,c,e) and LE (Fig. 4b,d,f) estimates
as functions of the parameter a are plotted
in Fig. 4.
When no transient iterations were omitted
and the computation of the GPER and the  LE started at the beginning
of the iteration,
the variances of the GPER and LE estimates
are very large due to the transients (Fig. 4a,b, note different scales).
Starting the LE/GPER estimation after
skipping 
hundred thousand initial iterations led to decrease of the variance of the estimates
-- SD of LE (Fig. 4d) decreased several times and 
SD of GPER (Fig. 4c)
decreased  one order of magnitude.
The number of  the ``transient iterations'', i.e.
the number of the
skipped initial iterations
was further increased through
 
initial iterations led to decrease of the variance of the estimates
-- SD of LE (Fig. 4d) decreased several times and 
SD of GPER (Fig. 4c)
decreased  one order of magnitude.
The number of  the ``transient iterations'', i.e.
the number of the
skipped initial iterations
was further increased through   ,
 ,   ,
 ,   , up
to one billion (
 , up
to one billion (  , Fig. 4e,f), however, no further changes in the
variance of the estimates were observed.
Therefore we could conclude that  omitting
 , Fig. 4e,f), however, no further changes in the
variance of the estimates were observed.
Therefore we could conclude that  omitting   initial iterations
was enough for transients to disappear and for the system to converge 
to the attractor in all considered states (all considered values of
the parameter a). Larger variances in the vicinity of bifurcations
are probably due to typical behaviour  (fluctuations) of  systems in  critical
states. Note that  the intervals of the increased variance of the GPER are limited to the
points located immediately before and after bifurcations, while
the variance of the LE  rises gradually in  wider intervals surrounding 
the bifurcations.
This phenomenon is illustrated in detail in Fig. 5,
 where the LE,  the GPER
and their variances are plotted as functions of the parameter a,
depicting one of the bifurcations into periodic states.
  initial iterations
was enough for transients to disappear and for the system to converge 
to the attractor in all considered states (all considered values of
the parameter a). Larger variances in the vicinity of bifurcations
are probably due to typical behaviour  (fluctuations) of  systems in  critical
states. Note that  the intervals of the increased variance of the GPER are limited to the
points located immediately before and after bifurcations, while
the variance of the LE  rises gradually in  wider intervals surrounding 
the bifurcations.
This phenomenon is illustrated in detail in Fig. 5,
 where the LE,  the GPER
and their variances are plotted as functions of the parameter a,
depicting one of the bifurcations into periodic states.
The results presented above suggest that the discrepancies in the functional relation between the GPER and the KSE (LE) at the vicinity of bifurcations are not due to transients, but probably due to critical behaviour of the system near a bifurcation point. Therefore the linear description (based on the spectral density) is inadequate for systems in critical states.
 
  
 