An initial uncertainty in the state of a chaotic system is expected to grow even under a perfect model; the dynamics of this uncertainty during the early stages of its evolution are investigated. A variety of error growth statistics are contrasted, illustrating their relative strengths when applied to chaotic systems, all within a perfect-model scenario. A procedure is introduced which can establish the existence of regions of a strange attractor within which all infinitesimal uncertainties decrease with time. It is proven that such regions exist in the Lorenz attractor, and a number of previous numerical observations are interpreted in the light of this result; similar regions of decreasing uncertainty exist in the Ikeda attractor. It is p...
The predictability problem for systems with different characteristic timescales is investigated. It ...
It is well understood that dynamic instability is among the primary drivers of forecast uncertainty ...
We introduce a method for quantifying the predictability of the event that the evolution of a determ...
An initial uncertainty in the state of a chaotic system is expected to grow even under a perfect mod...
The self-consistent prediction of nonlinear, potentially chaotic, systems must account for observati...
In nonlinear systems long term dynamics is governed by the attractors present in phase space. The pr...
The discovery of chaotic dynamics implies that deterministic systems may not be predictable in any m...
Every forecast should include an estimate of its likely accuracy, a current measure of predictabilit...
International audienceThe implications of state dependent, finite time error growth has been studied...
In a nonlinear, chaotic dynamical system, there are typically regions in which an infinitesimal erro...
Abstract. We discuss the predictability of a system that drives a chaotic system with a positive Lya...
This thesis concerns the long range prediction of high dimensional chaotic systems. To this end, I i...
It is now generally recognized that very simple dynamical systems can produce apparently random beha...
Different aspects of the predictability problem in dynamical systems are reviewed. The deep relation...
This thesis concerns the long range prediction of high dimensional chaotic systems. To this end, I ...
The predictability problem for systems with different characteristic timescales is investigated. It ...
It is well understood that dynamic instability is among the primary drivers of forecast uncertainty ...
We introduce a method for quantifying the predictability of the event that the evolution of a determ...
An initial uncertainty in the state of a chaotic system is expected to grow even under a perfect mod...
The self-consistent prediction of nonlinear, potentially chaotic, systems must account for observati...
In nonlinear systems long term dynamics is governed by the attractors present in phase space. The pr...
The discovery of chaotic dynamics implies that deterministic systems may not be predictable in any m...
Every forecast should include an estimate of its likely accuracy, a current measure of predictabilit...
International audienceThe implications of state dependent, finite time error growth has been studied...
In a nonlinear, chaotic dynamical system, there are typically regions in which an infinitesimal erro...
Abstract. We discuss the predictability of a system that drives a chaotic system with a positive Lya...
This thesis concerns the long range prediction of high dimensional chaotic systems. To this end, I i...
It is now generally recognized that very simple dynamical systems can produce apparently random beha...
Different aspects of the predictability problem in dynamical systems are reviewed. The deep relation...
This thesis concerns the long range prediction of high dimensional chaotic systems. To this end, I ...
The predictability problem for systems with different characteristic timescales is investigated. It ...
It is well understood that dynamic instability is among the primary drivers of forecast uncertainty ...
We introduce a method for quantifying the predictability of the event that the evolution of a determ...