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Published byLucy Scott Modified over 9 years ago
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Brook trout population dynamics: Integrated modeling across scales and data types Keith H. Nislow, Jason Coombs Northern Research Station, USDA Forest Service, Amherst, MA, USA Ben Letcher, Yoichiro Kanno, Ron Bassar, Ana Rosner, Paul Schueller, Kyle O’Neil, Krzysztof Sakrejda, Matt O'Donnell, Todd Dubreuil Conte Anadromous Fish Research Center, U.S. Geological Survey, Turners Falls, MA, USA Andrew Whiteley Department of Natural Resources Conservation UMass, Amherst, MA, USA Steve Hurley
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Overview Goal: understand population dynamics and provide broad spatial scale forecasts in response to environmental change Problem: specificity/generality tradeoff Can’t do detailed, mechanistic studies everywhere Lots of good survey data Approach/solution: combined approach Response ~ f( env change,… ) How does/will environmental change affect stream salmonids?
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Data types PIT tag Single-site demographic models Seasonal sensitivity of lambda (population growth) Abundance Multiple-site demographic models Sensitivity + basin characteristics Presence/absence Occupancy models Effects of long term means + basin characteristics
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Data types PIT tag Single-site demographic models Sensitivity of lambda Strong seasonal results Pathways of sensitivity Abundance Multiple-site demographic models Sensitivity of lambda Seasonal results with enough data Basin characteristics effects Presence/absence Occupancy models Basin characteristics effects Long-term mean effects
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What can we estimate? Data typeModelEndpointBasin characterist ic effects? Yearly environment al effects Seasonal environment al effects Pathways of seasonal environment al effects PIT tagSingle-site demographic Population growth NoYes AbundanceMultiple-site demographic Population growth Yes Yes, but need lots of data No Pres/absOccupancyP(occupancy)YesNo
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Data types West BrookIsolated PIT tag Single-site demographic model Body growth, survival, movement, reproduction Integral projection model Abundance Abundance models Presence/absence Occupancy models
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Data types Presence/absence Occupancy models Abundance Abundance models PIT tag Mechanistic models Autumn
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Lambda sensitivities Spring ↔ Winter ↔ Autumn ↓ Summer ↓ Summer↑ Autumn ↑ Spring ↔ Winter↓
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Lambda response surfaces
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Forecast
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Data types Yearly data, many sites Age-0+> age-0+All PIT tag Single-site demographic model Abundance Abundance models Autumn, Winter, Spring Flow Spring Temperature Elevation State space Population projection Presence/absence Occupancy models
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Estimated abundances PIT tag Single-site demographic model Abundance Abundance models Autumn, Winter, Spring Flow Spring Temperature Elevation State space Population projection Presence/absence Occupancy models
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Forecast PIT tag Single-site demographic model Abundance Abundance models Autumn, Winter, Spring Flow Spring Temperature Elevation State space Population projection Presence/absence Occupancy models
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Forecasts Presence/absence Occupancy models Abundance Abundance models Simple population projection - state space PIT tag Mechanistic models ↑↓↔↔↑↓↔↔
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Extreme events forecast PIT tag Single-site demographic model Abundance Abundance models Autumn, Winter, Spring Flow Spring Temperature Elevation State space Population projection Presence/absence Occupancy models
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Data types Single or multiple year data, many sites PIT tag Single-site demographic model Abundance Abundance models Presence/absence Occupancy models
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Model estimates Precip Air T % forest PIT tag Single-site demographic model Abundance Abundance models Presence/absence Occupancy models Annual precipitation Minimum temperature Soil drainage class Drainage area Forest cover Stream slope
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Probability of Occupancy for Current Conditions Drainage area Forest cover Stream slope Annual precipitation Minimum temperature Soil drainage class Model drivers
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Drainage area Forest cover Stream slope Probability of Occupancy for Current Conditions Annual precipitation Minimum temperature Soil drainage class Model drivers Probability of Occupancy 2 C increase Probability of Occupancy 4 C increase
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Probability of Occupancy for Current Conditions Resilience of occupancy to temperature increase Drainage area Forest cover Stream slope Annual precipitation Minimum temperature Soil drainage class Model drivers
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Bringing it together VariableSeasonModel Single-site demographic Multiple-site demographic Occupancy FlowFall↑ **↑ *** Precip ↑ Winter↓ ** Spring↔↔ Summer↑ ***NA TemperatureFall↓ **NA Temperature ↓ Winter↔NA Spring↔↔ Summer↓ ***NA
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Summary Congruent environmental effects on population growth across scales Increases confidence in generality of results Negative effects of temperature Positive effects of flow in fall and summer, negative effects in winter Many brook trout populations at risk in future Flow and temperature Extreme events Can identify resilient populations Steve Hurley
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Web app Map viewer Standard layers Data Model results Select a basin for scenario tester Scenario tester Climate -> Landuse -> Environment -> Population response Evaluate management actions under alternate futures http://felek.cns.umass.edu:8080/geoserver/www/data.html
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Data types Sensitivity of annual survival
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