M. Franchini et al., GLOBAL OPTIMIZATION TECHNIQUES FOR THE CALIBRATION OF CONCEPTUAL RAINFALL-RUNOFF MODELS, Hydrological sciences journal, 43(3), 1998, pp. 443-458
In this study we present the results of the comparison of three differ
ent algorithms: the Genetic Algorithm coupled with Sequential Quadrati
c Programming (GA-SQP), the Pattern Search also coupled with SQP (PS-S
QP) and the Shuffled Complex Evolution (SCE-UA), The analyses were con
ducted using a conceptual rainfall-runoff model applied both to a sing
le basin and to a complex basin, For both types of basin, a theoretica
l case without model and data errors was considered, in which the true
values of the parameters are known a priori, and several real-world c
ases where model and data errors exist. With reference to the single b
asin, the SCE-UA algorithm was the most reliable while the other two a
lgorithms gave solutions equivalent to those of the SCE-UA in the theo
retical case, but in the real-world cases they showed an increasing te
ndency (particularly the PS-SQP) to be trapped in local minima. With r
eference to the complex basin, none of the three algorithms identified
the exact solution in the theoretical case. However, the SCE-UA was t
he one which systematically approximated it better than the others, In
the real-world case its solutions were stable but characterized by ma
ny parameter values set at the boundary of their own range. The other
two algorithms produced a very unstable set of parameters.