56 research outputs found
A delay differential model of ENSO variability, Part 2: Phase locking, multiple solutions, and dynamics of extrema
We consider a highly idealized model for El Nino/Southern Oscillation (ENSO)
variability, as introduced in an earlier paper. The model is governed by a
delay differential equation for sea surface temperature in the Tropical
Pacific, and it combines two key mechanisms that participate in ENSO dynamics:
delayed negative feedback and seasonal forcing. We perform a theoretical and
numerical study of the model in the three-dimensional space of its physically
relevant parameters: propagation period of oceanic waves across the Tropical
Pacific, atmosphere-ocean coupling, and strength of seasonal forcing. Phase
locking of model solutions to the periodic forcing is prevalent: the local
maxima and minima of the solutions tend to occur at the same position within
the seasonal cycle. Such phase locking is a key feature of the observed El Nino
(warm) and La Nina (cold) events. The phasing of the extrema within the
seasonal cycle depends sensitively on model parameters when forcing is weak. We
also study co-existence of multiple solutions for fixed model parameters and
describe the basins of attraction of the stable solutions in a one-dimensional
space of constant initial model histories.Comment: Nonlin. Proc. Geophys., 2010, accepte
A delay differential model of ENSO variability: Parametric instability and the distribution of extremes
We consider a delay differential equation (DDE) model for El-Nino Southern
Oscillation (ENSO) variability. The model combines two key mechanisms that
participate in ENSO dynamics: delayed negative feedback and seasonal forcing.
We perform stability analyses of the model in the three-dimensional space of
its physically relevant parameters. Our results illustrate the role of these
three parameters: strength of seasonal forcing , atmosphere-ocean coupling
, and propagation period of oceanic waves across the Tropical
Pacific. Two regimes of variability, stable and unstable, are separated by a
sharp neutral curve in the plane at constant . The detailed
structure of the neutral curve becomes very irregular and possibly fractal,
while individual trajectories within the unstable region become highly complex
and possibly chaotic, as the atmosphere-ocean coupling increases. In
the unstable regime, spontaneous transitions occur in the mean ``temperature''
({\it i.e.}, thermocline depth), period, and extreme annual values, for purely
periodic, seasonal forcing. The model reproduces the Devil's bleachers
characterizing other ENSO models, such as nonlinear, coupled systems of partial
differential equations; some of the features of this behavior have been
documented in general circulation models, as well as in observations. We
expect, therefore, similar behavior in much more detailed and realistic models,
where it is harder to describe its causes as completely.Comment: 22 pages, 9 figure
Transport on river networks: A dynamical approach
This study is motivated by problems related to environmental transport on
river networks. We establish statistical properties of a flow along a directed
branching network and suggest its compact parameterization. The downstream
network transport is treated as a particular case of nearest-neighbor
hierarchical aggregation with respect to the metric induced by the branching
structure of the river network. We describe the static geometric structure of a
drainage network by a tree, referred to as the static tree, and introduce an
associated dynamic tree that describes the transport along the static tree. It
is well known that the static branching structure of river networks can be
described by self-similar trees (SSTs); we demonstrate that the corresponding
dynamic trees are also self-similar. We report an unexpected phase transition
in the dynamics of three river networks, one from California and two from
Italy, demonstrate the universal features of this transition, and seek to
interpret it in hydrological terms.Comment: 38 pages, 15 figure
Predictability of extreme events in a branching diffusion model
We propose a framework for studying predictability of extreme events in
complex systems. Major conceptual elements -- hierarchical structure, spatial
dynamics, and external driving -- are combined in a classical branching
diffusion with immigration. New elements -- observation space and observed
events -- are introduced in order to formulate a prediction problem patterned
after the geophysical and environmental applications. The problem consists of
estimating the likelihood of occurrence of an extreme event given the
observations of smaller events while the complete internal dynamics of the
system is unknown. We look for premonitory patterns that emerge as an extreme
event approaches; those patterns are deviations from the long-term system's
averages. We have found a single control parameter that governs multiple
spatio-temporal premonitory patterns. For that purpose, we derive i) complete
analytic description of time- and space-dependent size distribution of
particles generated by a single immigrant; ii) the steady-state moments that
correspond to multiple immigrants; and iii) size- and space-based asymptotic
for the particle size distribution. Our results suggest a mechanism for
universal premonitory patterns and provide a natural framework for their
theoretical and empirical study
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