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A Model for Predicting Bird Abundance

This model aims to predict bird abundance following construction and as riparian habitat develops in rehabilitation sites. The model considers factors like flow level, area of disturbance, food availability, and vegetation metrics to assess bird metrics and habitat effectiveness. By using this model, managers can make informed decisions to optimize the restoration and management of riparian areas.

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A Model for Predicting Bird Abundance

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  1. A Model for Predicting Bird Abundance • Adaptive Management • Bank Rehabilitation Site Design • Effectiveness Monitoring -- Meeting Program Objectives?

  2. OBJECTIVES • Use Bird abundance patterns and Riparian characteristics • Predict bird abundance following construction and as riparian habitat develops -- Rehabilitation sites -- Program area

  3. Flow level Area of Disturbance Food availability Heterogeneity Emmigration Bird metrics t Abundance Density Productivity Bird metrics t+1 Abundance Density Productivity Construction Disturbance Replanting Riparian removal Veg metrics t Veg Class / Association Veg metricst+1 Veg Class / Association Side channel formation Timing Flow level Wildlife Model For Bird Response Habitat Arrangement Bird Behavior Restoration Hydrograph t+1 Hydrograph t Unit t Study area Rehab site Reach Unit t+1 Study area Rehab site Reach I II III Time

  4. Riparian Mapping and Inventory McBain and Trush, Redwood Sciences Laboratory

  5. Most Abundant Vegetation Types used for Regression Tree Model • White Alder • Narrowleaf Willow • Mixed Willow • Black Cottonwood • Mixed conifer – White Oak • Himalaya Berry • Calif. Grape • Canyon Live Oak • Grasses

  6. Variables for our Regression Tree Example • Vegetation Type • River Mile • Patch Size • Vegetation Type within 200 m of each Survey Station

  7. YELLOW WARBLER | 0.95 Vegetation Type White Alder- Narrow Willow - Black Cottonwood - Willow-Oak-Pines n=67 n=243 0.49 1.08 0.13 0.63 Veg. Type River Mile > 89 River Mile < 89 n=115 n=128 River Mi. > 83 River Mi.< 83 0.82 1.30 River Mi. > 105 River Mi. < 105 0.97 0.63 1.17 1.62 0.78 1.30 River Mi. > 90 River Mi. <90 Patch Size < .07 > 2.00 1.30 < 108 > River Mi. 2.10 1.10 1.20 0.72 1.30 0.40 1.10 0.07 Various Veg. Types

  8. Predicting Yellow Warbler Abundance Patch Veg. Assoc. RvrMi Pred x SE

  9. How Many Yellow Warblers in the Study Area? Predicted Mean/ Survey Area = Density; Density X Patch Area = Predicted Number of YWAR Total Predicted Number for All Patches = Estimated Population

  10. SONG SPARROW | 1.30 Vegetation Type White Alder- Narrow Willow - Black Cottonwood - Willow-Oak-Pines n=274 n=37 0.71 1.40 River Mile < 90 River Mile > 90 1.20 1.60 Veg. Type River Mile 1.14 1.80 1.60 2.50 River Mile Patch Size 0.92 1.30 Patch Size 1.80 1.40 1.50 0.90 2.40 1.70 1.20 1.80 0.90 1.90 0.77 1.60 Various Vegetation Types

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