Applications of the multi-sigmoidal deterministic and stochastic logistic models for plant dynamics
Metadatos
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Elsevier
Fecha
2020-12-05Referencia bibliográfica
Published version: Antonio Di Crescenzo, Paola Paraggio, Patricia Román-Román, Francisco Torres-Ruiz. Applications of the multi-sigmoidal deterministic and stochastic logistic models for plant dynamics. Applied Mathematical Modelling 92 (2021), 884-904. https://doi.org/10.1016/j.apm.2020.11.046
Resumen
We consider a generalization of the classical logistic growth model introducing more than one inflection point. The growth, called multi-sigmoidal, is firstly analyzed from a deter- ministic point of view in order to obtain the main properties of the curve, such as the limit behavior, the inflection points and the threshold-crossing-time through a fixed boundary. We also present an application in population dynamics of plants based on real data. Then, we define two different birth-death processes, one with linear birth and death rates and the other with quadratic rates, and we analyze their main features. The conditions under which the processes have a mean of multi-sigmoidal logistic type and the first-passage- time problem are also discussed. Finally, with the aim of obtaining a more manageable stochastic description of the growth, we perform a scaling procedure leading to a lognor- mal diffusion process with mean of multi-sigmoidal logistic type. We finally conduct a detailed probabilistic analysis of this process.





