A Generic, Computer-assisted Method for Rapid Vegetation Classification and Survey: Tropical and Temperate Case Studies

Standard methods of vegetation classification and survey tend to be either too broad for management purposes or too reliant on local species to support inter-regional comparisons. A new approach to this problem uses species-independent plant functional types with a wide spectrum of environmental sen...

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Main Author: Gillison, Andrew N
Format: Other/Unknown Material
Language:English
Published: Resilience Alliance 2002
Subjects:
Online Access:http://www.ecologyandsociety.org/vol6/iss2/art3/
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spelling ftjecolog:oai:.www.ecologyandsociety.org:article/428 2023-05-15T15:09:01+02:00 A Generic, Computer-assisted Method for Rapid Vegetation Classification and Survey: Tropical and Temperate Case Studies Gillison, Andrew N 2002-08-19 text/html application/pdf http://www.ecologyandsociety.org/vol6/iss2/art3/ en eng Resilience Alliance Ecology and Society; Vol. 6, No. 2 (2002) VegClass software gradsects plant functional attributes plant functional types rapid biodiversity assessment vegetation classification vegetation survey Peer-Reviewed Reports 2002 ftjecolog 2019-04-09T11:22:20Z Standard methods of vegetation classification and survey tend to be either too broad for management purposes or too reliant on local species to support inter-regional comparisons. A new approach to this problem uses species-independent plant functional types with a wide spectrum of environmental sensitivity. By means of a rule set, plant functional types can be constructed according to specific combinations from within a generic set of 35 adaptive, morphological plant functional attributes. Each combination assumes that a vascular plant individual can be described as a "coherent" functional unit. When used together with vegetation structure, plant functional types facilitate rapid vegetation assessment that complements species-based data and makes possible uniform comparisons of vegetation response to environmental change within and between countries. Recently developed user-friendly software (VegClass) facilitates data entry and the analysis of biophysical field records from a standardized, rapid, survey pro forma. Case studies are presented at a variety of spatial scales and for vegetation types ranging from species-poor arctic tundra to intensive, multitaxa, baseline biodiversity assessments in complex, humid tropical forests. These demonstrate how such data can be rapidly acquired, analyzed, and communicated to conservation managers. Sample databases are linked to downloadable software and a training manual. Other/Unknown Material Arctic Tundra Unknown Arctic
institution Open Polar
collection Unknown
op_collection_id ftjecolog
language English
topic VegClass software
gradsects
plant functional attributes
plant functional types
rapid biodiversity assessment
vegetation classification
vegetation survey
spellingShingle VegClass software
gradsects
plant functional attributes
plant functional types
rapid biodiversity assessment
vegetation classification
vegetation survey
Gillison, Andrew N
A Generic, Computer-assisted Method for Rapid Vegetation Classification and Survey: Tropical and Temperate Case Studies
topic_facet VegClass software
gradsects
plant functional attributes
plant functional types
rapid biodiversity assessment
vegetation classification
vegetation survey
description Standard methods of vegetation classification and survey tend to be either too broad for management purposes or too reliant on local species to support inter-regional comparisons. A new approach to this problem uses species-independent plant functional types with a wide spectrum of environmental sensitivity. By means of a rule set, plant functional types can be constructed according to specific combinations from within a generic set of 35 adaptive, morphological plant functional attributes. Each combination assumes that a vascular plant individual can be described as a "coherent" functional unit. When used together with vegetation structure, plant functional types facilitate rapid vegetation assessment that complements species-based data and makes possible uniform comparisons of vegetation response to environmental change within and between countries. Recently developed user-friendly software (VegClass) facilitates data entry and the analysis of biophysical field records from a standardized, rapid, survey pro forma. Case studies are presented at a variety of spatial scales and for vegetation types ranging from species-poor arctic tundra to intensive, multitaxa, baseline biodiversity assessments in complex, humid tropical forests. These demonstrate how such data can be rapidly acquired, analyzed, and communicated to conservation managers. Sample databases are linked to downloadable software and a training manual.
format Other/Unknown Material
author Gillison, Andrew N
author_facet Gillison, Andrew N
author_sort Gillison, Andrew N
title A Generic, Computer-assisted Method for Rapid Vegetation Classification and Survey: Tropical and Temperate Case Studies
title_short A Generic, Computer-assisted Method for Rapid Vegetation Classification and Survey: Tropical and Temperate Case Studies
title_full A Generic, Computer-assisted Method for Rapid Vegetation Classification and Survey: Tropical and Temperate Case Studies
title_fullStr A Generic, Computer-assisted Method for Rapid Vegetation Classification and Survey: Tropical and Temperate Case Studies
title_full_unstemmed A Generic, Computer-assisted Method for Rapid Vegetation Classification and Survey: Tropical and Temperate Case Studies
title_sort generic, computer-assisted method for rapid vegetation classification and survey: tropical and temperate case studies
publisher Resilience Alliance
publishDate 2002
url http://www.ecologyandsociety.org/vol6/iss2/art3/
geographic Arctic
geographic_facet Arctic
genre Arctic
Tundra
genre_facet Arctic
Tundra
op_source Ecology and Society; Vol. 6, No. 2 (2002)
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