Modeling the biological growth with a random logistic differential equation

ENVIRONMENTAL AND ECOLOGICAL STATISTICS(2023)

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摘要
We modeled biological growth using a random differential equation (RDE), where the initial condition is a random variable, and the growth rate is a suitable stochastic process. These assumptions let us obtain a model that represents well the random growth process observed in nature, where only a few individuals of the population reach the maximal size of the species, and the growth curve for every individual behaves randomly. Since we assumed that the initial condition is a random variable, we assigned a priori density, and we performed Bayesian inference to update the initial condition’s density of the RDE. The Karhunen–Loeve expansion was then used to approximate the random coefficient of the RDE. Then, using the RDE’s approximations, we estimated the density f ( p , t ). Finally, we fitted this model to the biological growth of the giant electric ray (or Cortez electric ray) Narcine entemedor . Simulations of the solution of the random logistic equation were performed to construct a curve that describes the solutions’ mean for each time. As a result, we estimated confidence intervals for the mean growth that described reasonably well the observed data. We fit the proposed model with a training dataset, and the model is tested with a different dataset. The model selection is performed with the square of the errors.
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关键词
Bayesian inference, Biological growth, Data assimilation, Random logistic differential equation, Simulations, 34F05, 62M20, 62P10, 62F15, 92B05
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