IMIT   21220
INSTITUTO DE MODELADO E INNOVACION TECNOLOGICA
Unidad Ejecutora - UE
artículos
Título:
DADA: data assimilation for the detection and attribution of weather and climate-related events
Autor/es:
ALEXIS HANNART; MARC BOCQUET; MICHAEL GHIL; MANUEL PULIDO; JUAN RUIZ; ALBERTO CARRASI; PHILIPPE NAVEAU; PIERRE TANDEO
Revista:
CLIMATIC CHANGE
Editorial:
SPRINGER
Referencias:
Lugar: Berlin; Año: 2016 vol. 136 p. 155 - 174
ISSN:
0165-0009
Resumen:
We describe a new approach that allows for systematic causal attribution of weather and climate-related events, in near-real time. The method is designed so as to facilitate its implementation at meteorological centers by relying on data and methods that are routinely available when numerically forecasting the weather. We thus show that causal attribution can be obtained as a by-product of data assimilation procedures run on a daily basis to update numerical weather prediction (NWP) models with new atmospheric observations; hence, the proposed methodology can take advantage of the powerful computational and observational capacity of weather forecasting centers. We explain the theoretical rationale of this approach and sketch the most prominent features of a ?data assimilation?based detection and attribution? (DADA) procedure. The proposal is illustrated in the context of the classical three-variable Lorenz model with additional forcing. The paper concludes by raising several theoretical and practical questions that need to be addressed to make the proposal operational within NWP centers.