![Hier klicken, um den Treffer aus der Auswahl zu entfernen](images/unchecked.gif) |
Titel |
Data-based modelling of rainfall/runoff relationship in an agricultural catchment |
VerfasserIn |
Vincent Laurain, Marion Gilson, Hugues Garnier, Sylvain Payraudeau, Caroline Grégoire |
Konferenz |
EGU General Assembly 2010
|
Medientyp |
Artikel
|
Sprache |
Englisch
|
Digitales Dokument |
PDF |
Erschienen |
In: GRA - Volume 12 (2010) |
Datensatznummer |
250034249
|
|
|
|
Zusammenfassung |
The identification of rainfall/runoff relationship is a challenging issue, mainly because of the
complexity to find a suitable model for a whole given catchment. Conceptual hydraulic
models are often too limited for long term forecasting and fail to describe correctly
the dynamic changes of the system with respect to the characteristics for different
rainfall events (e.g. intensity or length). However, the need for identification of
such relationship grows with the size of drainage networks in urban catchments or
with the water pollution increase in agricultural regions. The inherent difficulties to
define correct models are different whether it concerns urban or rural catchments. In
urban catchments, the nonlinearities involved in the model are mainly caused by the
water processing infrastructures but most part of raw rainfall is channeled in the
outlet. Therefore, even if linear models are less precise than nonlinear ones, they
manage to deliver an acceptable forecasting in urban context. In rural catchments
however, there is a high spatio-temporal variability of the soil property whether
it lies in the vegetation, in the soil type or evapotranspiration and there is a high
difference between the raw and efficient rainfall. In this given case, linear models
completely fail in delivering a satisfying rainfall/flow relationship. Apart from the system
inherent issues, there are intrinsic difficulties concerning the identification process.
On the one hand, both inputs and outputs are measured and there is therefore no
possibility of controlling the input of the system to achieve a suitable excitation
for example. On the other hand, the usual noise hypothesis needed for applying
certain identification methods are not verified. Finally, there is no general way of
choosing the nonlinearity type of the model. Some nonparametric methods for
estimating these nonlinearities such as state dependant parameters were introduced.
Lately, a well-known type of model in the control field appears to be a suitable
candidate for water processes identification: the Linear Parameter Varying (LPV)
models. LPV models depend on so-called scheduling parameters and a challenging
issue is to define which parameters the system depends on. By considering the
previous declarations, this paper aims at identifying suitable models for rainfall/runoff
relationship in rural catchments using a novel refined instrumental variable (RIV) based
method for the identification of Input/Output LPV models with colored added noise.
This method has the particularity of producing consistent estimates in case the
noise assumption is not fulfilled. The main results of this paper are depicted using
a data set acquired on a small agricultural catchment located in Alsace, France. |
|
|
|
|
|