TY - JOUR
T1 - Data assimilation in the geosciences
T2 - An overview of methods, issues, and perspectives
AU - Carrassi, Alberto
AU - Bocquet, Marc
AU - Bertino, Laurent
AU - Evensen, Geir
N1 - Publisher Copyright:
© 2018 Wiley Periodicals, Inc.
PY - 2018/9/1
Y1 - 2018/9/1
N2 - We commonly refer to state estimation theory in geosciences as data assimilation (DA). This term encompasses the entire sequence of operations that, starting from the observations of a system, and from additional statistical and dynamical information (such as a dynamical evolution model), provides an estimate of its state. DA is standard practice in numerical weather prediction, but its application is becoming widespread in many other areas of climate, atmosphere, ocean, and environment modeling; in all circumstances where one intends to estimate the state of a large dynamical system based on limited information. While the complexity of DA, and of the methods thereof, stands on its interdisciplinary nature across statistics, dynamical systems, and numerical optimization, when applied to geosciences, an additional difficulty arises by the continually increasing sophistication of the environmental models. Thus, in spite of DA being nowadays ubiquitous in geosciences, it has so far remained a topic mostly reserved to experts. We aim this overview article at geoscientists with a background in mathematical and physical modeling, who are interested in the rapid development of DA and its growing domains of application in environmental science, but so far have not delved into its conceptual and methodological complexities. This article is categorized under: Climate Models and Modeling > Knowledge Generation with Models.
AB - We commonly refer to state estimation theory in geosciences as data assimilation (DA). This term encompasses the entire sequence of operations that, starting from the observations of a system, and from additional statistical and dynamical information (such as a dynamical evolution model), provides an estimate of its state. DA is standard practice in numerical weather prediction, but its application is becoming widespread in many other areas of climate, atmosphere, ocean, and environment modeling; in all circumstances where one intends to estimate the state of a large dynamical system based on limited information. While the complexity of DA, and of the methods thereof, stands on its interdisciplinary nature across statistics, dynamical systems, and numerical optimization, when applied to geosciences, an additional difficulty arises by the continually increasing sophistication of the environmental models. Thus, in spite of DA being nowadays ubiquitous in geosciences, it has so far remained a topic mostly reserved to experts. We aim this overview article at geoscientists with a background in mathematical and physical modeling, who are interested in the rapid development of DA and its growing domains of application in environmental science, but so far have not delved into its conceptual and methodological complexities. This article is categorized under: Climate Models and Modeling > Knowledge Generation with Models.
KW - Bayesian methods
KW - data assimilation
KW - ensemble methods
KW - environmental prediction
UR - https://www.scopus.com/pages/publications/85050821281
U2 - 10.1002/wcc.535
DO - 10.1002/wcc.535
M3 - Review article
AN - SCOPUS:85050821281
SN - 1757-7780
VL - 9
JO - Wiley Interdisciplinary Reviews: Climate Change
JF - Wiley Interdisciplinary Reviews: Climate Change
IS - 5
M1 - e535
ER -