Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4577627 | Journal of Hydrology | 2011 | 13 Pages |
SummaryCalibrating conceptual hydrological models is often done via the optimization of objective functions serving as a measure of model performance. Most of the objective functions used in the hydrological literature can be classified into distance- and weak form-based objective functions. Distance- and weak form-based objective functions can be seen respectively as generalizations of the square error and balance error. An analysis of the objective functions shows that: (i) the calibration problem is transformed from an optimization problem with distance-based objective functions into a root finding problem for weak form-based functions; (ii) weak form-based objective functions are essentially less prone to local extrema than distance-based functions; (iii) consequently, they allow simple gradient-based methods to be used; (iv) parameter redundancy can be assessed very simply by superimposing the contour lines or comparing the gradients of two objective functions of similar nature in the parameter space; and (v) simple guidelines can be defined for the selection of the calibration variables in a conceptual hydrological model. The theoretical results are illustrated by two simple test cases. Weak form-based approaches offer the potential for better-posed calibration problems, through the use of a number of independent criteria that matches the dimension of the identification problem. In contrast with distance-based objective functions, they do not have the inconvenience of solution non-uniqueness. Finally, the need for models with internal variables bearing a physical meaning is acknowledged.
Research highlights► A theoretical analysis of distance-based and weak form-based objective functions for conceptual hydrological models is carried out. ► Weak form-based objective functions are shown to yield better-posed calibration problems than distance-based functions. ► Practical guidelines are proposed for optimal model calibration. ► A simple parameter redundancy test is proposed. ► An estimate is proposed for the length of the simulation warm-up period.