Stratification on the Eastern Bering Sea Shelf, Revisited C. Ladd 1, G. Hunt 2, F. Mueter 3, C. Mordy 2, and P. Stabeno 1 1 Pacific Marine Environmental.

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Presentation transcript:

Stratification on the Eastern Bering Sea Shelf, Revisited C. Ladd 1, G. Hunt 2, F. Mueter 3, C. Mordy 2, and P. Stabeno 1 1 Pacific Marine Environmental Laboratory, Seattle, WA 2 University of Washington, Seattle, WA 3 University of Alaska, Fairbanks Support from NOAA/NPCREP, NPRB and NSF

Motivation Stratification associated with changes in zooplankton community (Coyle, et al. 2008) – Weak stratification (1999): large zooplankton; – Strong stratification (2004): small zooplankton Summer productivity negatively influenced by high stratification (Sambrotto, et al. 2008; Strom and Fredrickson, 2008) Stronger stratification (2004) associated with nutrient limitation, reduced microzooplankton grazing, and weak trophic coupling (Strom and Fredrickson, 2008)

Stratification Index Potential energy relative to the mixed state (J/m 2 ) can be used as an index of stratification (Simpson et al.,1978): For a vertically mixed system, SI = 0; while SI becomes increasingly positive for increasingly stable stratification. ;

Late Summer Strength of Stratification in 2008 Summer Early Spring

70m isobath transect Mooring 2 Inner middle outer

70m Isobath Transect (summer 2008) Stratification Index Due to temperature Due to Salinity North South Temperature (color); density (black contours) Salinity (color); density (black contours) Distance (km) 2-Layer structure Stratification stronger in North Salinity stratification dominates in North/ temperature dominates in South

M2 Temperature vs. Stratification Warm Cold Anomaly Depth-Integrated Temperature CTD data (blue stars) confirm that stratification calculated from M2 is good Lower stratification before 2002 (other than 1997) High/low stratification years do not align with warm/cold years

Seasonal Cycle 1997, ,

Significant trend toward later stratification breakdown in the fall (2.5 days later per year) Stronger max stratification after 2002 (marginally significant) Seasonal and interannual variability

Hypothesis: Stratification vs. Pollock recruitment Stability index (J m -2 ) Stock-recruit residual R 2 =0.74 P < % CI Strong stratification Low surface layer nutrients Lack of large zooplankton Reduced prey for age-0 gadids Low overwinter survival (Computed from observations at Mooring 2)

Using proxy for Jul-Sep stratification at M2 from 1-D model Relationship breaks down Stability index (proxy) Stock-recruit residual R 2 =0.51 P = % CI

Conclusions Interannual variability in stratification is not associated with warm vs. cold years (salinity stratification plays a role in interannual variability) Salinity plays more of a role in stratification on the southeast middle shelf than originally thought Winds, heat flux, tidal mixing all contribute to timing of spring stratification set-up Wind mixing is primary determinant in timing of stratification break-down (modulated by stratification strength) Stratification appears to influence pollock recruitment in recent 15 years of observations, but may not have strong influence over longer time period (influence of temperature on prey may be more important)

Thank you

Bering Sea  Wide shelf (>500 km) 3 shelf domains (coastal, middle shelf, and outer shelf) Marginal Ice zone Sea ice, temperature, stratification important to ecosystem inner middle outer Seasonal Sea Ice

1D Potential Energy Balance = rate of heat input (NCEP) = tidal current speed near bottom (M2 data) = wind speed (NCEP) Multiple regression analysis of 2005 data indicates that during the spring, heating, tidal currents, and winds are all important in predicting changes in stratification

Interannual variability in summer stratification Correlations with heat flux, winds, tides not significant But 1D model does a pretty good job (mean summer stratification index is significantly correlated) Implying that the day-to-day variations matter – can’t use seasonal averages Data Model Sharples 1D model (has been used in studies of the North Sea, e.g. Sharples et al, 2006) Forced by tides, NCEP meteorology – Tidal amplitudes calculated from M2 – January 1 temperature estimated from St Paul air temperatures

Strength of Stratification (calculated over top 60m) Dominance of Temperature vs. Salinity Early spring: stratification very weak, dominated by salinity (temperature effect mostly unstable) Summer: stronger stratification in north (salinity), weaker in south (temperature) Late summer: stratification has strengthened especially in north due to temperature, outer shelf strat dominated by salinity

Spring bloom starts first week of May Positive heat fluxes Low wind speeds Low tidal currents Decrease in stratification Low heat flux Higher wind speeds Results in new nuts and incr. Chl Steady increase in stratification positive heat flux Low wind speeds Low tidal currents allows for incr. Chl 2005

Mooring 2 (2005) 2-Layer structure Stratification dominated by temperature but salinity has some influence Max stratification in August; breakdown in October Influence on nutrient and chlorophyll concentrations