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S 1 NACLIM: North Atlantic Climate Predictability of the Climate in the North Atlantic/European sector related to North Atlantic/Arctic Ocean temperature and sea ice variability and change Core Theme 4 Impact on the oceanic ecosystem and urban societies
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Core Theme 4 To quantify the impact on oceanic ecosystems and urban societies of predicted North Atlantic/Arctic Ocean variability. Physical environment Marine ecosystems Urban societies
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Core Theme 4 WP 4.1 Impact on the oceanic ecosystem WP 4.2 Impact on urban societies
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NACLIM: North Atlantic Climate Predictability of the Climate in the North Atlantic/European sector related to North Atlantic/Arctic Ocean temperature and sea ice variability and change WP 4.1 Impact on the oceanic ecosystem
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Prediction is difficult, especially if it involves the future. Prediction is difficult, especially if it involves fish. Niels Bohr
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The Fundamental Question Adults Juveniles How do we get from here…. …to here.. …and back again?
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Juveniles vs Adults North-East Atlantic Blue Whiting Residuals ~ Environment
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”…dismal…”
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So what goes wrong? Parental condition Sex ratio Parental effects Atresia Disease Salinity Egg density Egg mortality Egg predation Food amount Food availability Food type Food quality Match-mismatch Drift Temperature Competition Larval predation System is very complex Biological sciences lack the quantitative, mechanistic laws common in physical sciences Correlation vs casuality
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So what do we do?
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The approach Low hanging fruitWork within limitations
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WP 4.1 Structure Review Detailed Case Studies Specific Predictions CMIP5 forecasts Assessment of Forecast Skill (WP 1.1, 1.2) Generic Approach ”Lessons learned”
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T 4.1.1/D11 Review Review physical-biological coupling Across all trophic levels – plankton to whales Not just productivity (recruitment) Classify according to level of understanding Mechanistic or correlative? Robustness? Based on specific features or large scale indices? Identify the low-hanging fruit i.e. the strongest physical-biological couplings
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T 4.1.4 Case Studies Phytoplankton Pilot whales Zooplankton Puffins Blue whiting Salmon
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e.g. Blue Whiting Spawning Larval observations around Rockall Bank Hátún et al. (2009) CJFAS
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WP 4.1 Structure Review Detailed Case Studies Specific Predictions CMIP5 forecasts Assessment of Forecast Skill (WP 1.1, 1.2) Generic Approach ”Lessons learned”
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”Match-Mismatch” hypothesis Larval fish survival depends on match with timing of spring bloom T 4.1.2 Generic Approach
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e.g. Scotian Shelf Haddock Platt et al. (2003) Nature
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Assess ability of CMIP5 models to capture spring bloom timing Where possible! Develop time series of timings Identify fish populations that show sensitivity to bloom timing Meta-analytic approach Predict where possible T 4.1.2 Generic Approach
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WP 4.1 Structure Review Detailed Case Studies Specific Predictions CMIP5 forecasts Assessment of Forecast Skill (WP 1.1, 1.2) Generic Approach ”Lessons learned”
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T 4.1.3 Making Predictions Recognise limitations! Unknown unknowns Qualitative metrics as well as quantitative Quality metrics e.g. IPCC style
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D52 ”Lessons Learned” Review paper Where are the knowledge gaps? What needs to be done in the future? What are the strengths and weaknesses of our approach?
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