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Optimal harvesting of a logistic population in an environment with stochastic jumps
Authors:Dennis Ryan  Floyd B. Hanson
Affiliation:(1) Department of Mathematics and Statistics, Wright State University, 45435 Dayton, OH, USA;(2) Department of Mathematics, Statistics and Computer Science, University of Illinois at Chicago, P.O. Box 4348, 60680 Chicago, IL, USA
Abstract:
Dynamic programming is employed to examine the effects of large, sudden changes in population size on the optimal harvest strategy of an exploited resource population. These changes are either adverse or favorable and are assumed to occur at times of events of a Poisson process. The amplitude of these jumps is assumed to be density independent. In between the jumps the population is assumed to grow logistically. The Bellman equation for the optimal discounted present value is solved numerically and the optimal feedback control computed for the random jump model. The results are compared to the corresponding results for the quasi-deterministic approximation. In addition, the sensitivity of the results to the discount rate, the total jump rate and the quadratic cost factor is investigated. The optimal results are most strongly sensitive to the rate of stochastic jumps and to the quadratic cost factor to a lesser extent when the deterministic bioeconomic parameters are taken from aggregate antarctic pelagic whaling data.Research supported in part by the National Science Foundation under grants MCS 81-01698 and MCS 83-00562.
Keywords:Optimal harvesting  Exploited renewable resource  Stochastic jump process  Dynamic programming  Feedback control  Bioeconomics  Uncertain environments
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