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Page 1 Adam B. Smith | Missouri Botanical Garden | adamATearthskyseaDOTorg | 2011-11-04 Applications of the SAR Upscaling Example: Tree diversity of India’s Western Ghats 1070 species 60,000 km² ln(Species) 0.25 ha Upscaling based on MaxEnt theory… ~900 32.5 species species known, with new ones reported annually predicted observed ln(Area) Harte et al. 2009. Ecology Letters 12:789-797. Krishnamani et al. 2004 Ecography 27:637-642. Predicting extinctions Assuming a power-function SAR, Number of species = S(A) = cAz then ∆S = S(A) - S(a) = c(Az – az) where A is area before habitat loss and a is area after loss. Alternatively, the proportion remaining is S(a)/S(A) = (a/A)z ∆S No. species (S) This document is available at www.earthskysea.org, “ecology resources”. The Species-Area Relationship (SAR) in Conservation Biology a Area A-a Example: Deforestation from 1990 to 2000 Groombridge & Jenkins 2002 World Atlas of Biodiversity, Univ Calif Press, Berkeley. Estimated proportion of species lost Africa Asia Europe N/Cent Am Oceania South Am World ∆ forest -0.08 -0.01 +0.01 ∆ species -0.021 -0.002 +0.002 -0.01 -0.02 -0.04 -0.02 -0.003 -0.005 -0.011 -0.006 Example: Birds in biodiversity hotspots Pimm et al. 2006 PNAS 103:10941-10946. Page 2 Applications of the SAR Impact assessment Example: Effects of protected areas on fish diversity Tittensor et al. 2007. Ecology Letters 10:760-772. SAR slope Indian Ocean Sites → increased fishing pressure Assessing restoration Example: Restoring native grasslands in California “reverse” fertilization Sandel & Corbin 2010 Oikos 119:1281-1290. Slope of the nativeexotic relationship mowing control Area (m²) Prioritization Example: Identifying global plant biodiversity hotspots Hobhom 2003 Biodiversity & Conservation 12:279-287. Page 3 SAR Geometry Census design log10 ( No. species ) 2.50 accumulating area by joining adjacent cells Scheiner 2003 Global Ecology and Biogeography 12:441-447. 2.40 2.30 A good classification of SAR census designs can be found in Dengler 2009 Journal of Biogeography 36:728-744. 2.20 2.10 2.00 3.5 4.0 4.5 5.0 5.5 log10 ( Area in m2 ) 6.0 Fully nested census design - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -- -- - - - - - - - - - - - - - - -- - -- - - - - - - - - - - -- - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -- - - - - -- -- -- - - - -- - - - - - - - - -- - -- - - - -- - - 2 1-m cells - - - 2 - 1/4-m cells 1/16-m2 cells - Mean no. species Senicio vulgaris D. capitatum Senicio vulgaris D. capitatum Microseris douglasii Microseris douglasii - - Non-power function behavior Example: Vascular plants of the world + other species + other species - in cells of this size 12.24 - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - + otherspecies 16.97 - 21.55 - log ( No. species - ) log ( Area ) For a list of statistical models that can be fit to the SAR, see: Tjørve 2003 Journal of Biogeography 30:827-835. Tjørve 2009 Journal of Biogeography 36:1435-1445. Tjørve 2012 Journal of Biogeography 39:629-639. Williams et al. 2009 Journal of Biogeography 36:1994-2004. Fridley et al. 2006 American Naturalist 168:133-143. Page 4 SAR Geometry The unsolved problem of β diversity (commonality) Example: Predicting diversity in ≥3 plots plot a S(a) = α Define β diversity as the proportion of species in plot b not in plot a: β ac β ab = 1 – species in common between plots a and b α β ab plot b S(a) = α where α is mean no. species in a plot. plot c Species diversity in plots a and b: S(a+b) = α + α β ab Species diversity in plots a, b, and c: S(a+b+c) = α + α β ab+ α β ac- α(1- β bc) + γ(a,b,c) plot a plot a α α α β ac α β ab plot b To estimate γ for plots a, b, and c you need at least one census of plots that have the same spatial arrangement: plot c α β ab plot b Problems: β is minimally a function of distance between a and b but probably also α and the abundance and spatial distribution of each species (how estimate this?). γ is as β, but also minimally the distances between a, b, and c. δ, ε, etc. for four-. five-, etc.-way joins are as γ, but even more complicated! Satellite image of deforestation in Amazonia Assumes isotropy in diversity! So estimation of extinctions due to realistic patterns of habitat loss and accumulation of species as noncontiguous protected area increases require practicably inestimable relationships between n parcels with incredibly complex spatial arrangements that probably cannot be replicated in a non-exhaustive census design. It also cannot be estimated without extreme extrapolation or assuming a spatial and species-abundance distribution. Skole et al. 1994 BioScience 44:314-322. S(a) = α β bc Page 5 SAR Geometry Effects of subplot shape log10( No. species ) Long parcels will almost always have more species than short parcels of the same area. 2.2 2.2 Portion of the Barro Colorado Island 50-ha plot’s SAR… difference at smallest scale is ~10 species 2.1 2.1 2.0 Long, thin cells 2.0 Square cells 1.9 3.0 3.5 log10 ( Area in m2 ) 4.0 The endemics-area relationship (EAR) slope is < 1 in log-log space slope is ≥ 1 in loglog space He & Hubbell 2011 Nature 473:368-371. Smith 2010 Biological Conservation 143:555-564. NB: Defining “endemic” relative to entire study region, not necessarily the world! EAR first presented in: Harte, J. and A.P. Kinzig. 1997. On the implications of species-area relationships for endemism, spatial turnover, and food web patterns. Oikos 80:417-427. Kinzig, A.P. and J. Harte. 2000. Implications of endemics-area relationships for estimates of species extinctions. Ecology 81:3305-3311. These references assume a particular spatial distribution of individuals (community-level self-similarity), but their conclusions about EARs are not dependent on this distribution! Page 6 The SAR in Systematic Conservation Planning The Return on Investment (ROI) Method Wilson et al. 2007 PLOS Biology 5:1850-1861 Example: Allocating $100M among different conservation actions in 17 Mediterranean ecosystems (51 action-region combinations) Calculate SARs for areas affected by each kind of threat not to be treated already treated to be treated Calculate species-investment relationships (SIRs) (= area × cost of treatment to address threat) not to be spent already spent Assumptions: • Threats don’t interact (addressable). • Power function SAR. • Ensuring preservation of just one individual per species is adequate (should use EAR). Smith 2010 Biological Conservation 143:555-564. • Area affected by treatment is contiguous and nicely-shaped (the problem of β diversity). See also: Bode et al. Bulletin of Mathematical Biology 70:2039-2054. Wilson et al. 2006 Nature 440:337-340. to be spent Page 7 Using the SAR and EAR to Predict Species Loss He and Hubbell 2011 Species-area relationships always overestimate extinction rates from habitat loss. Nature 473:368-371. Assertion: “Species-area relationships always overestimate extinction rates from habitat loss” (title) and “[The] backward SAR systematically overestimates extinction rates” (p. 369). Response: “For the power-law SAR model, the backward method always overestimates extinction rates. However, this is not always true if other SAR models are used. For example . . .” (their online supplement, section C) He & Hubbell’s Figure S2: Expected extinction probability for a species with 20 individuals and a clustered distribution “backwards” SAR EAR The extinction rate is not always higher using the SAR! half of total area Assertion: “…the most widely used method of estimating species extinction rates due to habitat loss, the backward SAR calculation, is not correct” (p. 370). Map of all trees/lianas in BCI’s 50-ha plot with dbh ≥1 cm pattern of deforestation 500 SAR is accurate! 450 400 350 300 250 500 m 200 150 100 50 0 0 100 200 300 400 500 600 700 800 900 1000 pattern of deforestation 1000 1000 m m SAR inaccurate pattern of deforestation pattern of deforestation EAR accurate EAR inaccurate Smith 2010 Biological Conservation 143:555-564. See also Pereia et al 2012 Nature 482:E3-E6.