Estimating fish production in wetlands

Author:

Tucker Caroline M.12ORCID,Giacomini Henrique C.1ORCID,Mandrak Nicholas E.23ORCID,Wang Lifei2ORCID,de Kerckhove Derrick T.13

Affiliation:

1. Aquatic Research and Monitoring Section, Ontario Ministry of Natural Resources and Forestry, Peterborough, Ontario

2. Department of Biological Sciences, University of Toronto Scarborough, Toronto, Ontario

3. Ecology and Evolutionary Biology, University of Toronto, Toronto, Ontario

Abstract

Fish production integrates changes in biomass from growth, reproduction, and mortality, and is a useful indicator for fisheries management. However, calculation of fish production has been limited by the intensive requirements for data on abundance, biomass, age structure, and vital rates, and so it is uncommon to find estimates of fish production for wetlands. We developed an approach to directly estimate production that is suitable for data-limited systems: a continuous time model of production describing individual growth over short time intervals with continuous time models of abundance and biomass over longer timescales. We applied this model for 18 Great Lakes coastal wetlands (GLCWs) on Lake Ontario, including Big Island Wetland (BIW). In BIW, most species were dominated in abundance and biomass by younger cohorts and, as a result, these young, fast-growing individuals contributed disproportionately to fish production. In total, BIW produced 336.1 kg·ha·year of fish and the other 17 neighbouring ranged between 447.7 and 1119.9 kg·ha·year. These are some of the first estimates of fish production for GLCWs, highlighting their value for managing Great Lakes fisheries.

Publisher

Canadian Science Publishing

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