Title of article :
Generalised growth models for aquatic species with an application to blacklip abalone (Haliotis rubra)
Author/Authors :
Lloyd-Jones، نويسنده , , Luke R. and Wang، نويسنده , , You-Gan and Nash، نويسنده , , Warwick J.، نويسنده ,
Pages :
12
From page :
311
To page :
322
Abstract :
This paper presents a maximum likelihood method for estimating growth parameters for an aquatic species that incorporates growth covariates, and takes into consideration multiple tag-recapture data. Individual variability in asymptotic length, age-at-tagging, and measurement error are also considered in the model structure. Using distribution theory, the log-likelihood function is derived under a generalised framework for the von Bertalanffy and Gompertz growth models. Due to the generality of the derivation, covariate effects can be included for both models with seasonality and tagging effects investigated. Method robustness is established via comparison with the Fabens, improved Fabens, James and a non-linear mixed-effects growth models, with the maximum likelihood method performing the best. The method is illustrated further with an application to blacklip abalone (Haliotis rubra) for which a strong growth-retarding tagging effect that persisted for several months was detected.
Keywords :
Gompertz model , von Bertalanffy model , Multiple tag-recapture data , Maximum Likelihood Method , Tagging effect , Aquatic species growth
Journal title :
Astroparticle Physics
Record number :
2045540
Link To Document :
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