Adaptive optimization of renewable natural resources: Solution algorithms and a computer program

作者: Byron K. Williams

DOI: 10.1016/0304-3800(95)00217-0

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摘要: Abstract Adaptive management of renewable biotic resources accounts for uncertainties in system responses to management, with a focus on the reduction as well harvest and other objectives. resource is described terms populations subject (i) uncontrollable environmental variation, (ii) about appropriate characterization dynamics, (iii) limitations controllability rates, (iv) population status, expressed sampling variation monitoring habitats. By an extension ‘system state’ include model likelihoods, adaptive can be defined Markov decision processes, objective maximizing long-term value. Recursive algorithms computer program are solution optimization problem.

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