Modelling of terrestrial systems is continuously moving towards more
integrated modelling approaches, where different terrestrial
compartment models are combined in order to realise a more
sophisticated physical description of water, energy and carbon fluxes
across compartment boundaries and to provide a more integrated view on
terrestrial processes. While such models can effectively reduce
certain parameterisation errors of single compartment models, model
predictions are still prone to uncertainties regarding model input
variables. The resulting uncertainties of model predictions can be
effectively tackled by data assimilation techniques, which allow one to
correct model predictions with observations taking into account both
the model and measurement uncertainties. The steadily increasing
availability of computational resources makes it now increasingly
possible to perform data assimilation also for computationally highly
demanding integrated terrestrial system models. However, as the
computational burden for integrated models as well as data
assimilation techniques is quite large, there is an increasing need to
provide computationally efficient data assimilation frameworks for
integrated models that allow one to run on and to make efficient use of
massively parallel computational resources. In this paper we present
a data assimilation framework for the land surface–subsurface part of
the Terrestrial System Modelling Platform (TerrSysMP). TerrSysMP is
connected via a memory-based coupling approach with the pre-existing
parallel data assimilation library PDAF (Parallel Data Assimilation Framework). This framework provides a fully parallel modular
environment for performing data assimilation for the land surface and
the subsurface compartment. A simple synthetic case study for a land
surface–subsurface system (0.8 million unknowns) is used to demonstrate
the effects of data assimilation in the integrated model TerrSysMP and
to assess the scaling behaviour of the data assimilation system.
Results show that data assimilation effectively corrects model states
and parameters of the integrated model towards the reference
values. Scaling tests provide evidence that the data assimilation
system for TerrSysMP can make efficient use of parallel computational
resources for > 30 k processors. Simulations with a large problem
size (20 million unknowns) for the forward model were also efficiently
handled by the data assimilation system. The proposed data
assimilation framework is useful in simulating and estimating
uncertainties in predicted states and fluxes of the terrestrial system
over large spatial scales at high resolution utilising integrated
models
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