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Abstract:
Although remote sensing data are often plentiful, they do not usually satisfy the users. needs
directly. Data assimilation is required to extract information about geophysical fields of
interest from the remote sensing observations and to make the data more accessible to users.
Remote sensing may provide, for example, measurements of surface soil moisture, snow
water equivalent, snow cover, or land surface (skin) temperature. Data assimilation can then
be used to estimate variables that are not directly observed from space but are needed for
applications, for instance root zone soil moisture or land surface fluxes. The paper provides a
brief introduction to modern data assimilation methods in the Earth Sciences, their
applications, and pertinent research questions. Our general overview is readily accessible to
hydrologic remote sensing scientists. Within the general context of Earth science data
assimilation, we point to examples of the assimilation of remotely sensed observations in
land surface hydrology.