TY - JOUR
T1 - Information flow between subspaces of complex dynamical systems
JF - Proceedings of the National Academy of Sciences
JO - Proc Natl Acad Sci USA
SP - 9558
LP - 9563
DO - 10.1073/pnas.0703499104
VL - 104
IS - 23
AU - Majda, Andrew J.
AU - Harlim, John
Y1 - 2007/06/05
UR - http://www.pnas.org/content/104/23/9558.abstract
N2 - The quantification of information flow between subspaces in ensemble predictions for complex dynamical systems is an important practical topic, for example, in weather prediction and climate change projections. Although information transfer between dynamical system components is an established concept for nonlinear multivariate time series, the specific nature of the nonlinear dynamics generating the observed flow of information is ignored in such statistical analysis. Here, a general mathematical theory for information flow between subspaces in ensemble predictions of a dynamical system is developed, which accounts for the specific underlying dynamics. The results below also include potentially useful approximation strategies for practical implementation in dynamical systems with many degrees of freedom. Specific elementary examples are developed here with both stable and unstable dynamics to both illustrate facets of the theory and to test Monte Carlo solution strategies.
ER -