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Plant functional trait variation and ecological strategies Peter Vesk School of Botany The University of Melbourne Diverse solutions to challenges • 250,000 to 400,000 species of seed plants – Dominated by Angiosperms – 700 - 900 extant Gymnosperms • Honed by natural selection Ecological study • Autecology -- how a particular species makes its way in the world • Communities -- how species interact with one another and with the abiotic environment • Is every species a special case? • Organizing principles Theophrastus (d. 287 BC) • Successor of Aristotle, director of Lyceum. • Father of Botany • De historia plantarum • De causis plantarum Historical origins • Early origins of ecology • Plant geographers • Descriptive, broad scale – – – – – – – von Humboldt (1807), de Candolle (1874), Warming (1895), Schimper (1903), Merriam (1890), Du Rietz (1931), Raunkiaer (1934) Raunkiaer life-form categories A) phanerophyte: tree or shrub with perennating buds held >25cm above ground B) and C) chamaephyte: semishrub, buds <25cm D) hemicryptophyte: perennial herb with bud at ground level E) geophyte: herb with bulb or other perennating organ below ground F) therophyte: annual plant surviving only as seed (G) Raunkiaer leaf-size classes • Leptophylls - < 25 mm2 (<5x5mm) • Nanophylls – 25 – 225 mm2 (<15x15mm) • Microphylls – 225 – 2025 mm2 (<45x45mm) • Mesophylls – 2025 – 18225 mm2 (<135x135mm) • Macrophylls – 18225 – 164025 mm2 (<405x405mm) Ecological strategy schemes • A strategy is how a species sustains a population. Or what they do and how they live. – Not conscious choice, but pattern of life history and allocation that has been moulded by natural selection • schemes that arrange species in categories or along spectra according to their ecological attributes. Periodic table or personality • Unlikely to be flexible enough as an analogy for plant ecology 3 PFT1 + 2 PFT2 = ?? Veg type2 • Perhaps personality type testing schemes more useful • Response to question or situation, • Several core types identified from many correlated descriptors combined into few principal components of variation or factors (Factor analysis) Theophrastus’ character types: surliness • The surly man when he is asked, 'Do you know where so-andso is?' will say, 'Don't worry me ' or if addressed, will refuse to answer. If he wishes to sell something he never names to the intending purchaser the price he will take, but always asks him what he is to get. Those who send him presents for the festival as a mark of esteem are informed that he is sure it is not a present. He has no pardon for anyone who has accidentally bespattered him with mud or jostled him or trodden on his foot…….. Classification schemes • Human psychology is very suited to classification: like and not like. • Grouping of similar species, typologies: plant functional types • An important question is whether to work with ‘types’ or with ‘spectrum’ – Introvert to extrovert – Leaf size; small to large Strategy schemes • Realised niche: distribution (or response) along environmental gradients: – – • Ellenberg’s soil moisture and N; Noble and Slatyer’s (1980) vital attributes (fire), grazing response (Dyksterhuis, 1949). Physiognomic: – • Raunkiaer (1934) bud position and leaf size, Conceptual: relating to ecological opportunity (and/or evolutionary pressures): – – – – – r-K and adversity selection (MacArthur & Wilson, 1967; Southwood, 1977; Greenslade, 1983), early and late successional spp. (Bazzaz, 1979), exploitative and competitive spp (Bormann and Likens, 1979) gap and non-gap species in forests, density dependence, etc Grime’s (1974, 1977) CSR scheme types of time, Westoby (1980) theory for arid zone vegetation. • Species selected under “r” vs “K” conditions • suggested correlates – mortality densityindependent vs densitydependent – multiplicationdominated vs competition-dominated – opportunistic vs equilibrium – climate unpredictable vs predictable – early vs late succession r-K spectrum K r Species traits supposedly favoured by r-selection relative to K-selection • • • • • • High maximal rate of increase rmax many small offspring Rapid development early reproduction small body size short lifespan Traditional r-K spectrum mixes together two different allocation “decisions” • 1. Reproductive effort vs growth and survival – partitioning of reproductive value • 2. Within reproductive effort, many small vs few large offspring • Limitations of r-K particularly obvious in plants (and other sessile ecologies) – plant populations rarely grow exponentially through a series of generations – growth to large body size and survival to long lifespan doesn’t necessarily go along with few large offspring Introduction of a second dimension of variation, from favourable to "stress" or "adversity" Frequency or intensity of disturbance Low High Intensity of stress Low High Competitors Ruderals Stress-tolerators No viable strategy Grime’s CSR triangle Competitor • Competitor, Stresstolerator, Ruderal • Ruderal (weed, pioneer) C-R corner reflects response to recent disturbance • S-->C axis expresses R potential for rapid growth Ruderal given favourable conditions C C-S C-S-R S S-R Stresstolerator Features of CSR triangle • High-stress-high-disturbance corner claimed not viable • Not actually the habitat that is being classified, but the way the species deals with the habitat – in particular, in highly productive environments one sees also S species – environment is resource-poor for them because of the presence of C species • Conceptual strategy dimensions (competitiveness, shade tolerance) difficult to compare across habitats • Hence, measurable traits emphasized recently. Recent approach: major measurable dimensions of ecological variation • Seed mass - seed output (SM-SO) • Specific Leaf Area - leaf lifespan (SLA-LL) – area/dry mass of leaf • Height – of canopy of the species when full-grown • wood density, twig size and leaf size – Proportional relationship • degree of consensus emerging about first 3, at least Merit of using readilymeasurable dimensions • Species from different continents or veg’n types can be “positioned” relative to each other without requiring info on species distributions relative to each other or to environmental factors – brings worldwide meta-analyses within reach • Axis-traits need to express something important about ecology – SLA, seed mass, height represent basic tradeoffs – species spread widely along each axis Emergence of “Macroecology” • “The division of food and space among species on continents" • Statistical patterns in datasets covering 100's to 1000’s of species • Simple traits • Environ. data Specific Leaf Area SLA • Plants invest dry mass in leaves, acquire further dry mass, reinvest in more leaves • SLA (mm2 mg-1 dry mass) is light-capture area deployed per mass invested – analogous to a potential rate of return Low SLA = heavy fabric of leaf • Thick lamina or high tissue density – Can feel with fingertips – banksia to basil – grasstree to lettuce • SLA varies widely (~tenfold) between coexisting spp – why are low-SLA species not competitively inferior? Low-SLA species are competitive because their leaves have longer lifespans: revenuestream over longer duration • LL varies 400-fold between species, up to 50-fold within a habitat • SLA varies 100fold between species, up to 40fold within a habitat Leaf longevity (months) [log scale] Leaf lifespan (mo) 1000 Colorado North Carolina New Mexico South Carolina Venezuela Wisconsin 100 10 1 10 100 1000 2 -1 Specific Leaf Area (cm g ) [log scale] SLA Global variation in Leaf economics The worldwide leaf economics spectrum Ian J. Wright, et al Nature 428, 821-827(22 April 2004) doi:10.1038/nature02403 Longer leaf lifespan in wetter areas, but leaf construction more important * mass seed - seed output spectrum *mass of an individual seed Eg dust-like seed of orchids, through to coconuts Benefit of low seed mass: high seed output Henery & Westoby in prep; 2 105 r =0.72 slope not sig diff from -1 104 2 • within a m2 of canopy outline, seed output = (reprod effort)/(seed mass + accessory costs) • seed mass varies > 100X as widely as reprod effort, hence is the dominant influence on seed output • slope = -1.0 Seed output per m canopy outline [log scale] Seed output47/ m2 canopy woody spp from sclerophyll veg'n 103 102 101 10-2 10-1 100 101 102 103 Seed mass (mg) [log scale] Henery & Westoby (2001), 47 woody spp from sclerophyll veg’n. counts of published expts with >5 spp, >10-fold range of seed mass Benefits of large seed during seedling establishment: survival of hazards Hazard Large-seed spp performed better Compet ition from established vegetation or other seedlings 9 Large-seed spp did not perform better 2 Deep shade 5 3 Defoliation 2 0 Mineral nutrient shortage 2 0 Wide spread of seed mass within habitat • Why not a single best compromise between costs and benefits? Westoby M, Falster DS, Moles AT, et al. (2002). Annu. Rev. Ecol. Syst. 33:125-59. Growth form 104 western NSW central Aust Sydney Indiana Dunes Sheffield 103 r mb e cli y od br sc rte an ve he ad wi sis as un wo 10-1 id 10-1 ino 100 r2main = 0.20 r2interaction = 0.02 am 100 ate att er ho ar d 101 t 101 siv e 102 nd 102 gr 103 ted mean log seed mass (mg) 2 r main = 0.29 r2interaction = 0.03 for b Dispersal morphology 104 • Seed mass correlated with dispersal morphology • 70% of var’n within dispersal mode • Very different vegetation types and continents • Correlation pattern reasonably consistent Smaller seeds towards the poles Global Ecology and Biogeography Vol. 16, 1 Pages: 109-116 Copyright © 2006 The Authors Journal compilation © 2006 Blackwell Publishing Ltd • What else could explain seed mass Yucca plant Ground ivy (Glechoma hederacea) reproduces clonally Plant height: Medicago to Mountain Ash Moles et al 2009 Jecol 97:923-932 Copyright Journal compilation © 2009 British Ecological Society Plant height QuickTime™ and a decompressor are needed to see this picture. Much variation at a site, primary productivity explains between sites Moles et al 2009 Jecol 97:923-932 Stem economics spectrum? • Stem density: balsa to teak Cahve et al Ecology Letters Vol. 12: 351-366 Copyright Journal compilation © 2009 Blackwell Publishing Ltd/CNRS Geography of wood density • The geographical distribution of wood density in N and S America. the mean wood density value of all unique species occurrences in that cell. (b) Predicted mean wood density value on the basis of climatic variables. MAT, MAP Plants with denser stems grow more slowly but with lower mortality risk Figure 5 Relationship between wood density and relative growth rate (log-transformed, a), and mortality rate (log-transformed, b), for two tropical forest sites (Barro Colorado Island, Panama, white circles, and Pasoh, Malaysia, black circles). Chave, J., Coomes, D., Jansen, S., Lewis, S. L., Swenson, N. G. & Zanne, A. E. (2009) Towards a worldwide wood economics spectrum. Ecology Letters, 12, 351-366. Plant ecological strategy schemes and functional traits • Framework for organization of species and studies • Generalization of specific cases • Nomenclature/identity can’t help us with prediction about unknown species • Understanding what are the major ways in which plants differ • Leaf construction, plant height, stem construction, seed size and number • Fundamental understanding of the role of environment and gradients on structure and function • Meta-analysis of ecological and physiological experiments