4.6 Article

Seasonal and interannual variation in spatio-temporal models for index standardization and phenology studies

期刊

ICES JOURNAL OF MARINE SCIENCE
卷 77, 期 5, 页码 1879-1892

出版社

OXFORD UNIV PRESS
DOI: 10.1093/icesjms/fsaa074

关键词

Calanus; index standardization; Limanda ferruginea; phenology; seasonal variation; vector autoregressive spatio-temporal (VAST) model; yellowtail flounder

资金

  1. NOAA Habitat Assessment Improvement Program grant
  2. Northwest Fisheries Science Center

向作者/读者索取更多资源

Climate change is rapidly affecting the seasonal timing of spatial demographic processes. Consequently, resource managers require information from models that simultaneously measure seasonal, interannual, and spatial variation. We present a spatio-temporal model that includes annual, seasonal, and spatial variation in density and then highlight two important uses: (i) standardizing data that are spatially unbalanced within multiple seasons and (ii) identifying interannual changes in seasonal timing (phenology) of population processes. We demonstrate these uses with two contrasting case studies: three bottom trawl surveys for yellowtail flounder (Limanda ferruginea) in the Northwest Atlantic Ocean from 1985 to 2017 and pelagic tows for copepodite stage 3+ copepod (Calanus glacialis/marshallae) densities in the eastern Bering Sea from 1993 to 2016. The yellowtail analysis illustrates how data from multiple surveys can be used to infer density hot spots in an area that is not sampled one or more surveys. The copepod analysis assimilates seasonally unbalanced samples to estimate an annual index of the seasonal timing of copepod abundance and identifies a positive correlation between this index and cold-pool extent. We conclude by discussing additional potential uses of seasonal spatio-temporal models and emphasize their ability to identify climate-driven shifts in the seasonal timing of fish movement and ecosystem productivity.

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