Title of article :
PEAS: A toolbox to assess the accuracy of estimated
parameters in environmental models
Author/Authors :
Nicola Checchi، نويسنده , ,
Elisabetta Giusti، نويسنده , , Stefano Marsili-Libelli*، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2007
Abstract :
This paper presents a Matlab toolbox to assess the accuracy of the estimated parameters of environmental models, based on their
approximate confidence regions. Before describing the application, the underlying theory is briefly recalled to familiarize the reader with the
numerical methods involved. The software, named PEAS as an acronym for Parameter Estimation Accuracy Software, performs both the estimation
and the accuracy analysis, using a user-friendly graphical interface to minimize the required programming. The user is required to specify
the model structure according to the Matlab/Simulink syntax, supply the experimental data, provide an initial parameter guess and select an
estimation method. PEAS provides several model assessment tools, in addition to parameter estimation, such as error function plotting, trajectory
sensitivity, Monte Carlo analysis, all useful to assess the adequacy of the experimental data to the estimation problem. After the parameters have
been estimated, the reliability assessment is performed: approximate and exact confidence regions are computed and a confidence test is produced.
The Monte Carlo analysis is available for approximate accuracy assessment whenever the model structure prevents the application of the
confidence regions method. The software, which is freely available for research purposes, is demonstrated here with two examples: a dynamical
and an algebraic model. In both cases, software usage and outputs are presented and commented. The examples show how the user is guided
through the application of the methods and how warning messages are returned if the estimation does not satisfy the accuracy criteria.
Keywords :
Parameter estimation , nonlinear regression , Confidence regions , System modelling
Journal title :
Environmental Modelling and Software
Journal title :
Environmental Modelling and Software