期刊
FISHERIES RESEARCH
卷 180, 期 -, 页码 4-22出版社
ELSEVIER
DOI: 10.1016/j.fishres.2016.01.006
关键词
Growth; Plasticity; Environmental forcing; Density-dependence; Fisheries stock assessment; Fisheries management
类别
资金
- Florida Fish and Wildlife Conservation Commission
- CAPAM
Modeling of body growth forms an essential part of many fisheries stock assessments. Growth influences population dynamics through its effects on lifetime patterns of biomass production, natural and fishing mortality, and reproductive output. By relating size to age, growth models also enable the use of size based data in age-based stock assessments. Growth patterns are commonly assumed to be constant (time-invariant) or at best subject to inconsequential process noise. However, fish growth is inherently plastic, often responding strongly to environmental conditions such as temperature and food availability. In wild fish stocks, this results in median temporal variation of around 15% in length-at-age and 40% in weight-at-age, with extremes of 20% (length) and 60% (weight). Plasticity mediates environmental forcing and density-dependence in growth, both of which can have important implications for stock assessment and management. Failing to account for such effects can lead to substantial deviations (often more than 30%) in reconstructed stock dynamics, projections and reference points. The nature and magnitude of such deviations depends not only on the statistical adequacy of the growth model but on how growth information is used in the stock assessment process and on the management options being evaluated. In addition to having direct assessment and management consequences, plasticity provides a unified conceptual framework for interpreting various disparate and at times, confusing patterns of fish growth. Therefore, I conclude that the constant growth paradigm of fisheries stock assessments should be replaced with a paradigm that embraces growth plasticity and its consequences. (C) 2016 Elsevier B.V. All rights reserved.
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