Abstract
Variational data assimilation (VAR-DA) has been implemented to estimate
the unknown input parameters of a new agricultural subsurface drainage
model (SIDRA-RU) through assimilating discharge observations. The
adjoint model of SIDRA-RU has been successfully generated by means of
the automatic differentiation tool (TAPENADE). First, the adjoint model
is used to explore the local and global adjoint sensitivities of the
valuable function defined over the drainage discharge simulations with
respect to model input parameters. Next, the most influential parameters
are estimated by applying the VAR-DA embedded into a simple stochastic
procedure in order to achieve the global minimum. The performed
sensitivity analysis shows that the most influential parameters on
drainage discharge are those controlling the dynamics of the water
table; the second most influential parameters manage the starting date
of the drainage season. Compared to an alternative gradient-free
calibration performance, the estimation of these governing parameters by
the VAR-DA method improves the overall quality of the drainage discharge
prediction, in particular in terms of the cumulative water volume.
Improved parameters generate less than 5 mm (1%) of the discrepancy
between simulated and observed water volume, based on the five years of
daily discharge observations on the Chantemerle agricultural parcels (36
ha). Preliminary numerical tests allow identifying the potential
presence of local minima as well as equifinality issues. The latter can
be highlighted by the self-compensation of both the physical soil
parameters and the main conceptual parameters. Moreover, the proposed
techniques may be applied to a panel of hydrological and water quality
models.