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Elizabeth McGarrigle Ph.D. Candidate University of New Brunswick

Combining historic growth and climate data to predict growth response to climate change in balsam fir in the Acadian Forest region. Elizabeth McGarrigle Ph.D. Candidate University of New Brunswick. Acadian Forest Region. Multi-species Complex stand structures

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Elizabeth McGarrigle Ph.D. Candidate University of New Brunswick

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  1. Combining historic growth and climate data to predict growth response to climate change in balsam fir in the Acadian Forest region Elizabeth McGarrigle Ph.D. Candidate University of New Brunswick

  2. Acadian Forest Region • Multi-species • Complex stand structures • Mixture of Northern hardwood species and boreal species • Long history of selective cutting • Because of species mixture and history of human disturbance, it is thought to be more sensitive to predicted climate change

  3. Why balsam fir? • Subject to cyclical catastrophic mortality due to spruce budworm • Species at southern limit of range • Should be sensitive to climatic changes in the region • Predicted to be one of the most heavily impacted species in the Acadian Forest • Fluxnet data shows a sensitivity to temperature

  4. Project Overview • Climatic variables predicted to change • How to assess potential influence on future growth? • Has climate influenced growth in the past? • Identify climatic variables that influence growth • Explore the changes of those climate variables in process-based model to create a growth surface • Incorporate the growth surface into empirical growth and yield model

  5. Sample Plot Locations

  6. Permanent Sample Plots • Network of plots across Nova Scotia (NS), New Brunswick (NB) and Newfoundland (NF) • Earliest plots in NS – measurements dating back to 1965 • 3-5 year remeasurement periods • Plots with greater than 75% basal area in balsam fir

  7. Climate Data • BIOCLIM/ANUCLIM – bioclimatic prediction system • Uses SEEDGROW to produce growing season information • Inputs: Latitude/Longitude and digital elevation model for the region • Outputs: • Annual and monthly mean temperatures, precipitation. • Growing Season length and average temperatures

  8. First Stages • Initial screening of climate variables • Needed: • Growth summaries • Limited to only plot intervals that are aggrading • Climate variable summaries

  9. Growth Data Summaries • Calculate basal area survivor growth for each tree • Sum by plot • Growth of surviving trees + ingrowth • Calculate Leaf Area Index (LAI) • Calculate growth efficiency (Survival growth/Leaf area) • Other stand-level variables (initial basal area, average heights of tallest trees)

  10. Range of Growth Efficiency & Survival Growth

  11. Climate Data Summaries • For each climate variable: • Calculate mean periodic value for each plot • Calculate 30 year climatic norms by plot (1970-2000)

  12. Range of Periodic and Climatic Normal Annual Temperatures

  13. Screening Climate Variables • Boosted regression used to identify variables with high relative influence on growth efficiency • Two boosted regressions : • With both periodic and climate variables • With only periodic climate variables

  14. Influential Variables

  15. Influential Variables

  16. Influential Variables

  17. Points of Interest • Yearly growth efficiency influenced more by climatic normals then periodic averages • Growth efficiency levels off at higher temperatures • Decline eventually? • What about variables that can be modeled directly by the process-based model? • Second boosted regression

  18. Influential Variables

  19. Influential Variables

  20. Influential Variables

  21. What Next? • Second boosted regression gives variables that can be changed in a process-based model. • Process-based model calibrated using: • Historical climate variables • Historical growth • Change climate variables and record changes in growth from process-based model • Forms a growth surface

  22. After the Process-Based Model? • Examine outputs on short and long term scales • Incorporate growth surfaces into empirical model • Repeat process for other commercial species and puckerbrush

  23. Questions orComments? Funded by: Natural Sciences and Engineering Research Council of Canada & Canadian Forest Service

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