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Looking Inland: Ohio Reservoir Water Quality Joe Conroy Fisheries Biologist Inland Fisheries Research Unit
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Variable sportfish recruitment & survival environment Variable sportfish recruitment & survival Land use Shape Productivity Forage fish Zooplankton + Understand sportfish variability by understanding system variability? +++ +
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Understanding productivity variation Known governing factors » Land cover/use – External effects » Reservoir type – Internal effects Seek state-wide baseline » Ongoing perturbations – Reservoir aging – Watershed modification Goal: Assess productivity trends among reservoirs
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Roadmap Conceptualizing sportfish variability Compiling productivity data Comparing reservoir productivity
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Roadmap Conceptualizing sportfish variability Compiling productivity data: 212 “snapshots” Comparing reservoir productivity
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Ohio Reservoir Productivity Database ORPAD built in 2006 » Manage project-specific data » Archive all inland data Stores: » 2,151 trips (1993–2011) » 153 reservoirs » 3,606 samples (1,416 “complete”) – SD, TSS, TN, TP, Chl
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Assessing state-wide trends Extensive reservoir set » n = 134 Summer sampling » July and/or August » 2006 and/or 2007 – n = 90 res in 2006 – n = 80 res in 2007 » n = 212 res-yrs Compare reservoir productivity statewide
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Assessing trends: Productivity metrics Synthetic examination » Secchi transparency; SD » [Total suspended sediment]; TSS » [Non-volatile suspended sediment]; NVSS » [Total phosphorus]; TP » [Total nitrogen]; TN » [Chlorophyll a]; Chl
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Assessing trends: Detecting a signal Decrease data dimension (6D 1D), examine pattern Predictors: Ensure multivariate normality; ordinate » Variables summarized by reservoir; log-transformed » NVSS not retained; non-normal data » Principal components analysis conducted Results: Examine ordination » Generate composite productivity variable
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Roadmap Conceptualizing sportfish variability Compiling productivity data Comparing reservoir productivity
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Roadmap Conceptualizing sportfish variability Compiling productivity data Comparing reservoir productivity: One axis
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One composite productivity variable Principal components analysis » 1D solution (λ = 3.81, R 2 = 76.2%) » PC score re-centered and relativized: 0 1 scale » Ranked reservoirs (1 134, hypereutrophic oligotrophic) 23 650 0.3 80.9130 613911.3 715.33.4 351.9
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Statewide comparison Secchi transparency (cm)
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Statewide comparison Secchi transparency (cm) Total P (mg/m 3 )
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Statewide comparison Secchi transparency (cm) Total P (mg/m 3 ) Chlorophyll a (mg/m 3 )
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Statewide comparison Secchi transparency (cm) Total P (mg/m 3 ) Chlorophyll a (mg/m 3 ) Rank
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2006 Leveraging reservoir productivity data > 5 yd 3 /ac/y < 0.1 yd 3 /ac/y Assessing change » Land use/cover change – Urban, Row crops » Reservoir aging – Volume, Productivity 1992 Modify fish habitat & ecosystem function
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Limno/Lower Trophic Team Marty Lundquist Joel Plott Matt Wolfe Don Swatzel Glenn Trueb Research Partners Miami University Mike Vanni Maria González The Ohio State University Dave Culver Stu Ludsin Ruth Briland, Sarah Wallace, Cathy Doyle, Mike Kulasa
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