Title of article
Application of an evolutionary algorithm to the inverse parameter estimation of an individual-based model
Author/Authors
Duboz، نويسنده , , Raphaël and Versmisse، نويسنده , , David and Travers، نويسنده , , Morgane and Ramat، نويسنده , , Eric and Shin، نويسنده , , Yunne-Jai Shin، نويسنده ,
Pages
10
From page
840
To page
849
Abstract
Inverse parameter estimation of individual-based models (IBMs) is a research area which is still in its infancy, in a context where conventional statistical methods are not well suited to confront this type of models with data. In this paper, we propose an original evolutionary algorithm which is designed for the calibration of complex IBMs, i.e. characterized by high stochasticity, parameter uncertainty and numerous non-linear interactions between parameters and model output. Our algorithm corresponds to a variant of the population-based incremental learning (PBIL) genetic algorithm, with a specific “optimal individual” operator. The method is presented in detail and applied to the individual-based model OSMOSE. The performance of the algorithm is evaluated and estimated parameters are compared with an independent manual calibration. The results show that automated and convergent methods for inverse parameter estimation are a significant improvement to existing ad hoc methods for the calibration of IBMs.
Keywords
Parameter estimation , Model calibration , Evolutionary and genetic algorithms , Individual-based model , Marine ecosystem model
Journal title
Astroparticle Physics
Record number
2042991
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