The Application of the Random Time Transformation Method to Estimate Richards Model for Tree Growth Prediction

Cornejo, Oscar; Munoz-Herrera, Sebastian; Baesler, Felipe; Rebolledo, Rodrigo

Abstract

To model dynamic systems in various situations results in an ordinary differential equation of the form dydt=g(y,t,theta), where g denotes a function and theta stands for a parameter or vector of unknown parameters that require estimation from observations. In order to consider environmental fluctuations and numerous uncontrollable factors, such as those found in forestry, a stochastic noise process epsilon t may be added to the aforementioned equation. Thus, a stochastic differential equation is obtained: dYtdt=f(Yt,t,theta)+epsilon t. This paper introduces a method and procedure for parameter estimation in a stochastic differential equation utilising the Richards model, facilitating growth prediction in a forest's tree population. The fundamental concept of the approach involves assuming that a deterministic differential equation controls the development of a forest stand, and that randomness comes into play at the moment of observation. The technique is utilised in conjunction with the logistic model to examine the progression of an agricultural epidemic induced by a virus. As an alternative estimation method, we present the Random Time Transformation (RTT) method. Thus, this paper's primary contribution is the application of the RTT method to estimate the Richards model, which has not been conducted previously. The literature often uses the logistic or Gompertz models due to difficulties in estimating the parameter form of the Richards model. Lastly, we assess the effectiveness of the RTT Method applied to the Chapman-Richards model using both simulated and real-life data.

Más información

Título según WOS: ID WOS:001089485100001 Not found in local WOS DB
Título de la Revista: MATHEMATICS
Volumen: 11
Número: 20
Editorial: MDPI
Fecha de publicación: 2023
DOI:

10.3390/math11204233

Notas: ISI