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Uniqueness and observability of conceptual rainfall‐runoff model parameters: The percolation process examined
Author(s) -
Gupta Vijai Kumar,
Sorooshian Soroosh
Publication year - 1983
Publication title -
water resources research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.863
H-Index - 217
eISSN - 1944-7973
pISSN - 0043-1397
DOI - 10.1029/wr019i001p00269
Subject(s) - uniqueness , observability , representation (politics) , calibration , mathematics , percolation (cognitive psychology) , econometrics , percolation theory , surface runoff , process (computing) , statistical physics , mathematical optimization , computer science , statistics , physics , mathematical analysis , ecology , topology (electrical circuits) , combinatorics , neuroscience , biology , operating system , politics , political science , law
Many researchers have expressed concerns regarding the uniqueness of parameter estimates for conceptual rainfall‐runoff (R‐R) models obtained through calibration. Recent studies (Sorooshian et al., this issue; Sorooshian and Gupta, this issue) have revealed that even though stochastic parameter estimation techniques can help, the problems are not all due to inefficiencies in the calibration techniques used but are caused by the manner in which the model is structurally formulated. Thus even when calibrated under ideal conditions (simulation studies), it is often impossible to obtain unique estimates for the parameters. It is possible to resolve this problem, at least in part, by appropriate reparameterizations of the pertinent model equations. In this paper the percolation equation of the soil moisture accounting model of the National Weather Service River Forecast System (SMA‐NWSRFS) will be discussed. It is shown that a logical reparameterization of this equation can result in conditions that improve the chances of obtaining unique parameter estimates. It is believed that these results have implications for other conceptual R‐R models in which similar approaches are used in the representation of the percolation/infiltration process.