Stochastic Modeling of Bamboo Population Growth and Optimal Harvesting
Abstract/ Overview
Population growth and harvest modeling is an active area of current research.
There has been an effort to move from deterministic Ordinary Differential Equations
(ODE) to Stochastic Differential Equations (SDE) modeling. Moreover,
the latter is most realistic in describing life systems that are often perturbed by
unpredictable environmental activity. Bamboo growth and harvest modeling was
motivated by the “Tobacco to Bamboo” (TTB) Project where farmers in selected
sections of Homabay and Migori Counties in Kenya were persuaded to plant bamboo
instead of tobacco. This was met with pessimism due to the lengthy wait,
at least three years, before harvesting. They also needed to know the expected
income compared to the tobacco income they used to earn. This study therefore
sought to explore suitable models that could be used to determine optimal
expected sustainable bamboo yield. In view of this, data from the TTB project
was analyzed to determine parameters including population growth rate r, carrying
capacity K and population size at time t,Nt. ODEs and SDEs were used
in modeling equilibrium populations and maximum sustainable yield. SDEs were
solved using Itˆo calculus and associated Fokker–Planck equations. The Monte-
Carlo simulation procedure was used to construct population trajectories under
various model parameter values. A stochastic model with both growth rate and
harvest parameters coupled with white noise and a three year delayed continuous
harvest proportional to population size was developed. This was found to be
most suitable since it ensures maximum mean sustainable yield without the risk
of extinction as long as noise was kept at low levels. The model may not only be
applied in bamboo harvesting strategies but also other renewable resources that
have similar population dynamics.