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Chapter VI - Wave data assimilation and inverse modelling

Published online by Cambridge University Press:  22 January 2010

G. J. Komen
Affiliation:
Royal Dutch Meteorological Service (KNMI), de Bilt, Holland
L. Cavaleri
Affiliation:
Istituto per lo Studio della Dinamica delle Grandi Masse, CNR, Venice
M. Donelan
Affiliation:
Canadian Centre for Inland Waters, Burlington, Ontario
K. Hasselmann
Affiliation:
Max-Planck-Institut für Meteorologie, Hamburg
S. Hasselmann
Affiliation:
Max-Planck-Institut für Meteorologie, Hamburg
P. A. E. M. Janssen
Affiliation:
European Centre for Medium-Range Weather Forecasts, Reading
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Summary

General features of wave data assimilation and inverse modelling

Background

In previous chapters we have discussed the use of a mathematical model, the third generation wave prediction model, to compute the state of the sea. We can distinguish between hindcasts, nowcasts and forecasts, the difference being the time for which the sea state is computed relative to the clock time. A forecast field can be computed only by a model. However, the model estimation of hindcast and nowcast fields can be improved using observations, which have been considered in the previous chapters of this book only for validation of the underlying physics or for verification of model results. This combination of using model results and observations to create an optimal estimate of the sea state is called data assimilation or analysis. The word analysis originates in early meteorological applications, for which meteorologists would subjectively draw isobaric patterns on the basis of isolated pressure observations. They analysed the weather. Later, this work was carried out with numerical models.

Observed data can also be used to validate and improve models. When the model improvement is carried out using numerical automatic model fitting techniques, one speaks of inverse modelling: instead of using a given model to compute data, which are then compared with observations, the observations are used in an inverse mode to construct an optimally fitted model.

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Publisher: Cambridge University Press
Print publication year: 1994

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