Linear Filter Methods: An Application to a Stock Production Model

作者: Peter Haas , Claus Hild

DOI: 10.1007/978-3-662-41575-7_9

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摘要: Stock production models represent an attempt by fisheries biologists to assess directly the relationship between sustainable yield from a stock (or population) and size. An analytic approach of this type is due Schaefer [1954]. He developed modified form logistic model describe growth fish resource proposed technique estimate parameters under non-equilibrium exploitation conditions. The information required catch effort history for stock, together with independent catchability coefficient. In subsequent paper [1957] extended his method coefficient history, also.

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