A Bayesian estimation approach for the mortality in a stage-structured demographic model
Academic Article
Publication Date:
2017
abstract:
Control interventions in sustainable pest management schemes are set according to
the phenology and the population abundance of the pests. This information can be
obtained using suitable mathematical models that describe the population dynamics
based on individual life history responses to environmental conditions and resource
availability. These responses are described by development, fecundity and survival
rate functions that can be estimated from laboratory experiments. If experimental data
are not available, sampling data on field population dynamics can be used for their
estimation. This is the case of the extrinsic mortality term that appears in the mortality
rate function due to biotic factors. We propose a Bayesian approach to estimate the
probability density functions of the parameters in the extrinsic mortality rate function,
starting from data on population abundances. The method investigates the time
variability in the mortality parameters by comparing simulated and observed
trajectories. The grape berry moth, a pest of great importance in European vineyards,
has been considered as a case study. Simulated data have been considered to
evaluate the convergence of the algorithm, while field data have been used to obtain
estimates of the mortality for the grape berry moth.
Iris type:
01.01 Articolo in rivista
Keywords:
Fokker-Plank equations; Bayesian inference; MCMC algorithms; population dynamics; pest; Lobesia botrana
List of contributors:
Pasquali, Sara; Lanzarone, Ettore
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