Mapping plant communities of the Karoo National Park, South Africa, using Sentinel-2 and topo-morphological data

被引:0
|
作者
Bezuidenhout, Hugo [1 ,2 ]
Morgenthal, Theunis [3 ]
Kraaij, Tineke [4 ]
Brown, Leslie R. [2 ]
机构
[1] SANParks, Sci Serv, POB 110040,Hadison Pk, ZA-8306 Kimberley, South Africa
[2] UNISA, Appl Behav Ecol & Ecosyst Res Unit, P-Bag X6,FL, ZA-1710 Pretoria, South Africa
[3] Directorate Land Use & Soil Management, Dept Agr Land Reform & Rural Dev, Pretoria 0001, South Africa
[4] Nelson Mandela Univ, Fac Sci, Nat Resource Sci & Management Cluster, P-Bag X6531, ZA-6530 George, South Africa
关键词
Article History:; Available online xxx; Braun-Blanquet; Conservation; Habitat; Modified TWINSPAN; Nama-Karoo biome; Plant diversity; Vegetation classification; JUICE; VEGETATION; CLASSIFICATION; CONSERVATION; KALAHARI; TIME;
D O I
10.1016/j.sajb.2024.08.021
中图分类号
Q94 [植物学];
学科分类号
071001 ;
摘要
Aims: This study aimed at classifying, mapping and describing the plant communities of the Karoo National Park using floristic surveys in conjunction with Sentinel-2 and topo-morphological data. Study area: Karoo National Park, Western Cape, South Africa. Methods: The vegetation of the Karoo National Park was delineated into homogenous physiognomic-physiographic units using Sentinel-2 images. A total of 128 survey plots (100 m2 each) were surveyed within the different homogeneous units during the period 2016 to 2020. Within each survey plot, all rooted species were identified and their cover abundance estimated. Each plot was photographed and its geolocation recorded. The floristic data were captured using the Braun Blanquet Personal Computer suite and exported to the JUICE Software programme. A modified TWINSPAN classification was done to derive a first tabled synopsis of the plant communities. The different plant communities were subsequently classified and described according to their diagnostic and dominant species gleaned from the synoptic table. Species richness was determined by counting the number of different species per plant community while the Shannon-Wiener Index and Rich-Gini-Simpson Index of diversity (D) were used to derive indices of species diversity per plant community. Results: 12 major communities and two sub-communities that are distinctly linked to various abiotic factors were identified, described and mapped. The higher-lying rocky steep midslopes as well as the valley bottomland areas had the highest diversity and species richness. Conclusions: This study proves the efficacy of using Sentinel-2 and topo-morphological data in classification, description and mapping vegetation of extensive natural areas. The vegetation map and classification of plant communities provide a baseline to inform management decisions. Taxonomic reference: SA-Plant Checklist-2019-2020, South African National Biodiversity Institute, 2020, Botanical Database of Southern Africa (BODATSA) (http://posa.sanbi.org/) [accessed January 2022]. (c) 2024 The Author(s). Published by Elsevier B.V. on behalf of SAAB. This is an open access article under the CC
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页码:295 / 311
页数:17
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