Technical Note: Approximate Bayesian parameterization of a process-based tropical forest model
Authored by Thorsten Wiegand, F Hartig, C Dislich, A Huth
Date Published: 2014
DOI: 10.5194/bg-11-1261-2014
Sponsors:
German Research Foundation (Deutsche Forschungsgemeinschaft, DFG)
Platforms:
FORMIND
Model Documentation:
Other Narrative
Pseudocode
Model Code URLs:
Model code not found
Abstract
Inverse parameter estimation of process-based models is a long-standing
problem in many scientific disciplines. A key question for inverse
parameter estimation is how to define the metric that quantifies how
well model predictions fit to the data. This metric can be expressed by
general cost or objective functions, but statistical inversion methods
require a particular metric, the probability of observing the data given
the model parameters, known as the likelihood.
For technical and computational reasons, likelihoods for process-based
stochastic models are usually based on general assumptions about
variability in the observed data, and not on the stochasticity generated
by the model. Only in recent years have new methods become available
that allow the generation of likelihoods directly from stochastic
simulations. Previous applications of these approximate Bayesian methods
have concentrated on relatively simple models. Here, we report on the
application of a simulation-based likelihood approximation for FORMIND, a parameter-rich individual-based model of tropical forest dynamics.
We show that approximate Bayesian inference, based on a parametric
likelihood approximation placed in a conventional Markov chain Monte
Carlo (MCMC) sampler, performs well in retrieving known parameter values
from virtual inventory data generated by the forest model. We analyze
the results of the parameter estimation, examine its sensitivity to the
choice and aggregation of model outputs and observed data (summary
statistics), and demonstrate the application of this method by fitting
the FORMIND model to field data from an Ecuadorian tropical forest.
Finally, we discuss how this approach differs from approximate Bayesian
computation (ABC), another method commonly used to generate
simulation-based likelihood approximations.
Our results demonstrate that simulation-based inference, which offers
considerable conceptual advantages over more traditional methods for
inverse parameter estimation, can be successfully applied to
process-based models of high complexity. The methodology is particularly
suitable for heterogeneous and complex data structures and can easily be
adjusted to other model types, including most stochastic population and
individual-based models. Our study therefore provides a blueprint for a
fairly general approach to parameter estimation of stochastic
process-based models.
Tags
Dynamics
Landscape
calibration
biomass
ecology
Distributions
Computation
Simulation-models
Statistical-inference
Rain-forests