Author/Authors :
SEUNG-JONG BAEK، نويسنده , , BRIAN R. HUNT، نويسنده , , EUGENIA KALNAY، نويسنده , , EDWARD OTT، نويسنده , , ISTVAN SZUNYOGH، نويسنده ,
Abstract :
We modify the local ensemble Kalman filter (LEKF) to incorporate the effect of forecast model bias. The method is
based on augmentation of the atmospheric state by estimates of the model bias, and we consider different ways of
modeling (i.e. parameterizing) the model bias.We evaluate the effectiveness of the proposed augmented state ensemble
Kalman filter through numerical experiments incorporating various model biases into the model of Lorenz and Emanuel.
Our results highlight the critical role played by the selection of a good parameterization model for representing the form
of the possible bias in the forecast model. In particular, we find that forecasts can be greatly improved provided that a
good model parameterizing the model bias is used to augment the state in the Kalman filter.