Data from: A synthesis of empirical plant dispersal kernels

Plant dispersal dataPlantdispersaldata.csv Dispersal is fundamental to ecological processes at all scales and levels of organization, but progress is limited by a lack of information about the general shape and form of plant dispersal kernels. We addressed this gap by synthesizing empirical data des...

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Main Authors: Bullock, James M., Mallada González, Laura, Tamme, Riin, Götzenberger, Lars, White, Steven M., Pärtel, Meelis, Hooftman, Danny A. P.
Format: Dataset
Language:unknown
Published: Dryad Digital Repository 2017
Subjects:
geo
Online Access:https://doi.org/10.5061/dryad.mq2ff
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spelling fttriple:oai:gotriple.eu:50|dedup_wf_001::2d2f55174d8852255445609448f59935 2023-05-15T13:53:35+02:00 Data from: A synthesis of empirical plant dispersal kernels Bullock, James M. Mallada González, Laura Tamme, Riin Götzenberger, Lars White, Steven M. Pärtel, Meelis Hooftman, Danny A. P. 2017-01-01 https://doi.org/10.5061/dryad.mq2ff undefined unknown Dryad Digital Repository https://dx.doi.org/10.5061/dryad.mq2ff http://dx.doi.org/10.5061/dryad.mq2ff lic_creative-commons 10.5061/dryad.mq2ff oai:easy.dans.knaw.nl:easy-dataset:95194 oai:services.nod.dans.knaw.nl:Products/dans:oai:easy.dans.knaw.nl:easy-dataset:95194 10|openaire____::081b82f96300b6a6e3d282bad31cb6e2 re3data_____::r3d100000044 10|re3data_____::84e123776089ce3c7a33db98d9cd15a8 10|eurocrisdris::fe4903425d9040f680d8610d9079ea14 10|openaire____::9e3be59865b2c1c335d32dae2fe7b254 10|re3data_____::94816e6421eeb072e7742ce6a9decc5f dispersal distance dispersal syndrome dispersal location kernel exponential exponential power Gaussian log-sech plant height probability density function seed mass Global Holocene Plantae Life sciences medicine and health care envir geo Dataset https://vocabularies.coar-repositories.org/resource_types/c_ddb1/ 2017 fttriple https://doi.org/10.5061/dryad.mq2ff 2023-01-22T16:51:23Z Plant dispersal dataPlantdispersaldata.csv Dispersal is fundamental to ecological processes at all scales and levels of organization, but progress is limited by a lack of information about the general shape and form of plant dispersal kernels. We addressed this gap by synthesizing empirical data describing seed dispersal and fitting general dispersal kernels representing major plant types and dispersal modes. A comprehensive literature search resulted in 107 papers describing 168 dispersal kernels for 144 vascular plant species. The data covered 63 families, all the continents except Antarctica, and the broad vegetation types of forest, grassland, shrubland and more open habitats (e.g. deserts). We classified kernels in terms of dispersal mode (ant, ballistic, rodent, vertebrates other than rodents, vehicle or wind), plant growth form (climber, graminoid, herb, shrub or tree), seed mass and plant height. We fitted 11 widely used probability density functions to each of the 168 data sets to provide a statistical description of the dispersal kernel. The exponential power (ExP) and log-sech (LogS) functions performed best. Other 2-parameter functions varied in performance. For example, the log-normal and Weibull performed poorly, while the 2Dt and power law performed moderately well. Of the single-parameter functions, the Gaussian performed very poorly, while the exponential performed better. No function was among the best-fitting for all data sets. For 10 plant growth form/dispersal mode combinations for which we had >3 data sets, we fitted ExP and LogS functions across multiple data sets to provide generalized dispersal kernels. We also fitted these functions to subdivisions of these growth form/dispersal mode combinations in terms of seed mass (for animal-dispersed seeds) or plant height (wind-dispersed) classes. These functions provided generally good fits to the grouped data sets, despite variation in empirical methods, local conditions, vegetation type and the exact dispersal process. Synthesis. We ... Dataset Antarc* Antarctica Unknown
institution Open Polar
collection Unknown
op_collection_id fttriple
language unknown
topic dispersal distance
dispersal syndrome
dispersal location kernel
exponential
exponential power
Gaussian
log-sech
plant height
probability density function
seed mass
Global
Holocene
Plantae
Life sciences
medicine and health care
envir
geo
spellingShingle dispersal distance
dispersal syndrome
dispersal location kernel
exponential
exponential power
Gaussian
log-sech
plant height
probability density function
seed mass
Global
Holocene
Plantae
Life sciences
medicine and health care
envir
geo
Bullock, James M.
Mallada González, Laura
Tamme, Riin
Götzenberger, Lars
White, Steven M.
Pärtel, Meelis
Hooftman, Danny A. P.
Data from: A synthesis of empirical plant dispersal kernels
topic_facet dispersal distance
dispersal syndrome
dispersal location kernel
exponential
exponential power
Gaussian
log-sech
plant height
probability density function
seed mass
Global
Holocene
Plantae
Life sciences
medicine and health care
envir
geo
description Plant dispersal dataPlantdispersaldata.csv Dispersal is fundamental to ecological processes at all scales and levels of organization, but progress is limited by a lack of information about the general shape and form of plant dispersal kernels. We addressed this gap by synthesizing empirical data describing seed dispersal and fitting general dispersal kernels representing major plant types and dispersal modes. A comprehensive literature search resulted in 107 papers describing 168 dispersal kernels for 144 vascular plant species. The data covered 63 families, all the continents except Antarctica, and the broad vegetation types of forest, grassland, shrubland and more open habitats (e.g. deserts). We classified kernels in terms of dispersal mode (ant, ballistic, rodent, vertebrates other than rodents, vehicle or wind), plant growth form (climber, graminoid, herb, shrub or tree), seed mass and plant height. We fitted 11 widely used probability density functions to each of the 168 data sets to provide a statistical description of the dispersal kernel. The exponential power (ExP) and log-sech (LogS) functions performed best. Other 2-parameter functions varied in performance. For example, the log-normal and Weibull performed poorly, while the 2Dt and power law performed moderately well. Of the single-parameter functions, the Gaussian performed very poorly, while the exponential performed better. No function was among the best-fitting for all data sets. For 10 plant growth form/dispersal mode combinations for which we had >3 data sets, we fitted ExP and LogS functions across multiple data sets to provide generalized dispersal kernels. We also fitted these functions to subdivisions of these growth form/dispersal mode combinations in terms of seed mass (for animal-dispersed seeds) or plant height (wind-dispersed) classes. These functions provided generally good fits to the grouped data sets, despite variation in empirical methods, local conditions, vegetation type and the exact dispersal process. Synthesis. We ...
format Dataset
author Bullock, James M.
Mallada González, Laura
Tamme, Riin
Götzenberger, Lars
White, Steven M.
Pärtel, Meelis
Hooftman, Danny A. P.
author_facet Bullock, James M.
Mallada González, Laura
Tamme, Riin
Götzenberger, Lars
White, Steven M.
Pärtel, Meelis
Hooftman, Danny A. P.
author_sort Bullock, James M.
title Data from: A synthesis of empirical plant dispersal kernels
title_short Data from: A synthesis of empirical plant dispersal kernels
title_full Data from: A synthesis of empirical plant dispersal kernels
title_fullStr Data from: A synthesis of empirical plant dispersal kernels
title_full_unstemmed Data from: A synthesis of empirical plant dispersal kernels
title_sort data from: a synthesis of empirical plant dispersal kernels
publisher Dryad Digital Repository
publishDate 2017
url https://doi.org/10.5061/dryad.mq2ff
genre Antarc*
Antarctica
genre_facet Antarc*
Antarctica
op_source 10.5061/dryad.mq2ff
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10|re3data_____::84e123776089ce3c7a33db98d9cd15a8
10|eurocrisdris::fe4903425d9040f680d8610d9079ea14
10|openaire____::9e3be59865b2c1c335d32dae2fe7b254
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op_relation https://dx.doi.org/10.5061/dryad.mq2ff
http://dx.doi.org/10.5061/dryad.mq2ff
op_rights lic_creative-commons
op_doi https://doi.org/10.5061/dryad.mq2ff
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