Article ID Journal Published Year Pages File Type
5765961 Journal of Marine Systems 2017 14 Pages PDF
Abstract

•Methods for model parameterization are in demand in aquatic ecosystem modelling.•We compare three Bayesian formulations for mechanistic model parameterization.•Methods evaluated using plankton food web models and simulated and empirical data•Hierarchical analysis performed best in parameterization and model prediction•Sensitivity to prior distributions is an important caveat of hierarchical analysis.

Methods for extracting empirically and theoretically sound parameter values are urgently needed in aquatic ecosystem modelling to describe key flows and their variation in the system. Here, we compare three Bayesian formulations for mechanistic model parameterization that differ in their assumptions about the variation in parameter values between various datasets: 1) global analysis - no variation, 2) separate analysis - independent variation and 3) hierarchical analysis - variation arising from a shared distribution defined by hyperparameters. We tested these methods, using computer-generated and empirical data, coupled with simplified and reasonably realistic plankton food web models, respectively. While all methods were adequate, the simulated example demonstrated that a well-designed hierarchical analysis can result in the most accurate and precise parameter estimates and predictions, due to its ability to combine information across datasets. However, our results also highlighted sensitivity to hyperparameter prior distributions as an important caveat of hierarchical analysis. In the more complex empirical example, hierarchical analysis was able to combine precise identification of parameter values with reasonably good predictive performance, although the ranking of the methods was less straightforward. We conclude that hierarchical Bayesian analysis is a promising tool for identifying key ecosystem-functioning parameters and their variation from empirical datasets.

Related Topics
Physical Sciences and Engineering Earth and Planetary Sciences Oceanography
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