Kylie L. Scales, Thomas S. Moore II, Bernadette Sloyan, Claire M. Spillman, J. Paige Eveson, Toby A. Patterson, Ashley J. Williams, Alistair J. Hobday, Jason R. Hartog
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引用次数: 1
Abstract
Ocean and climate drivers affect the distribution and abundance of marine life on a global scale. Marine ecological forecasting seeks to predict how living marine resources respond to physical variability and change, enabling proactive decision-making to support climate adaptation. However, the skill of ecological forecasts is constrained by the skill of underlying models of both ocean state and species-environment relationships. As a test of the skill of data-driven forecasts for fisheries, we developed predictive models of catch-per-unit-effort (CPUE) of tuna and billfish across the south-west Pacific Ocean, using a 12-year time series of catch data and a large ensemble climate reanalysis. Descriptors of water column structure, particularly temperature at depth and upper ocean heat content, emerged as useful predictors of CPUE across species. Enhancing forecast skill over sub-seasonal to multi-year timescales in any system is likely to require the inclusion of sub-surface ocean data and explicit consideration of regional physical dynamics.
期刊介绍:
The international journal of the Japanese Society for Fisheries Oceanography, Fisheries Oceanography is designed to present a forum for the exchange of information amongst fisheries scientists worldwide.
Fisheries Oceanography:
presents original research articles relating the production and dynamics of fish populations to the marine environment
examines entire food chains - not just single species
identifies mechanisms controlling abundance
explores factors affecting the recruitment and abundance of fish species and all higher marine tropic levels