Literature DB >> 16224691

Mechanistic analytical models for long-distance seed dispersal by wind.

G G Katul1, A Porporato, R Nathan, M Siqueira, M B Soons, D Poggi, H S Horn, S A Levin.   

Abstract

We introduce an analytical model, the Wald analytical long-distance dispersal (WALD) model, for estimating dispersal kernels of wind-dispersed seeds and their escape probability from the canopy. The model is based on simplifications to well-established three-dimensional Lagrangian stochastic approaches for turbulent scalar transport resulting in a two-parameter Wald (or inverse Gaussian) distribution. Unlike commonly used phenomenological models, WALD's parameters can be estimated from the key factors affecting wind dispersal--wind statistics, seed release height, and seed terminal velocity--determined independently of dispersal data. WALD's asymptotic power-law tail has an exponent of -3/2, a limiting value verified by a meta-analysis for a wide variety of measured dispersal kernels and larger than the exponent of the bivariate Student t-test (2Dt). We tested WALD using three dispersal data sets on forest trees, heathland shrubs, and grassland forbs and compared WALD's performance with that of other analytical mechanistic models (revised versions of the tilted Gaussian Plume model and the advection-diffusion equation), revealing fairest agreement between WALD predictions and measurements. Analytical mechanistic models, such as WALD, combine the advantages of simplicity and mechanistic understanding and are valuable tools for modeling large-scale, long-term plant population dynamics.

Mesh:

Year:  2005        PMID: 16224691     DOI: 10.1086/432589

Source DB:  PubMed          Journal:  Am Nat        ISSN: 0003-0147            Impact factor:   3.926


  26 in total

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7.  Retention time variability as a mechanism for animal mediated long-distance dispersal.

Authors:  Vishwesha Guttal; Frederic Bartumeus; Gregg Hartvigsen; Andrew L Nevai
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8.  Effect of the local wind reduction zone on seed dispersal from a single shrub element on sparsely vegetated land.

Authors:  Lin-Tao Fu
Journal:  AoB Plants       Date:  2021-05-21       Impact factor: 3.276

9.  Human-mediated dispersal of seeds by the airflow of vehicles.

Authors:  Moritz von der Lippe; James M Bullock; Ingo Kowarik; Tatjana Knopp; Matthias C Wichmann; Matthias Wichmann
Journal:  PLoS One       Date:  2013-01-08       Impact factor: 3.240

10.  Predicting spatial patterns of plant recruitment using animal-displacement kernels.

Authors:  Luis Santamaría; Javier Rodríguez-Pérez; Asier R Larrinaga; Beatriz Pias
Journal:  PLoS One       Date:  2007-10-10       Impact factor: 3.240

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