Title of article :
Some theoretical considerations on predictability of linear stochastic dynamics
Author/Authors :
Michael K. Tippett، نويسنده , , PING CHANG، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2003
Abstract :
Predictability is a measure of prediction error relative to observed variability and so depends on
both the physical and prediction systems. Here predictability is investigated for climate phenomena
described by linear stochastic dynamics and prediction systems with perfect initial conditions and
perfect linear prediction dynamics. Predictability is quantified using the predictive information matrix
constructed from the prediction error and climatological covariances. Predictability measures defined
using the eigenvalues of the predictive information matrix are invariant under linear state-variable
transformations and for univariate systems reduce to functions of the ratio of prediction error and
climatological variances. The predictability of linear stochastic dynamics is shown to be minimized
for stochastic forcing that is uncorrelated in normal-mode space. This minimum predictability depends
only on the eigenvalues of the dynamics, and is a lower bound for the predictability of the system with
arbitrary stochastic forcing. Issues related to upper bounds for predictability are explored in a simple
theoretical example
Journal title :
Tellus. Series A
Journal title :
Tellus. Series A