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Identifying the global potential for baobab tree cultivation using ecological niche modelling

Identifying the global potential for baobab tree cultivation using ecological niche modelling
Identifying the global potential for baobab tree cultivation using ecological niche modelling
The benefits provided by underutilised fruit tree species such as baobab (Adansonia digitata L.) in combating increasing malnutrition and poverty become more apparent as awareness grows regarding concerns of climate change and food security. Due to its multiple uses, its high nutritional and medicinal value, drought tolerance and relatively easy cultivation, baobab has been identified as one of the most important edible forest trees to be conserved, domesticated and valued in Africa. In order to contribute towards the cultivation of the species, suitability of sites in Africa and worldwide was evaluated for potential cultivation using species’ locality data and spatial environmental data in MAXENT modelling framework. A total of 450 geo-referenced records of the baobab tree were assembled from herbarium records, commercial firm’s databases and fieldwork for modelling site suitability for global cultivation of the baobab tree. Climatic and topographic data were acquired from the Worldclim data while soil data was obtained from the Harmonized World Soil Database. MAXENT was found to be a successful modelling method for studying cultivation potential. The main variables that contributed towards predicting baobab’s global cultivation potential were annual precipitation and temperature seasonality. Results suggest that baobab tree could be widely cultivated in most countries in southern Africa and in the Sudano-Sahelian zone of West Africa from Senegal to Sudan. Angola and Somalia were found to be highly suitable for cultivating baobab in Africa. Model suggests, India, where the baobab tree already exists and is used, to be the most suitable country for baobab cultivation outside Africa. North-west Australia, Madagascar, north-east Brazil and Mexico resulted to be other suitable places for cultivating the tree species. Although it is recommended model results be validated with in situ seedling experiments, there seems to be a great potential for the cultivation of this species globally.
baobab tree, distribution, africa, global cultivation potential, modelling, maxent
0167-4366
191-201
Sanchez, Aida Cuni
669d9b05-6ce0-4c28-a181-21f5dece2078
Osborne, Patrick E.
c4d4261d-557c-4179-a24e-cdd7a98fb2b8
Haq, Nazmul
d59a37ec-54c6-4267-be57-de498ae37c0b
Sanchez, Aida Cuni
669d9b05-6ce0-4c28-a181-21f5dece2078
Osborne, Patrick E.
c4d4261d-557c-4179-a24e-cdd7a98fb2b8
Haq, Nazmul
d59a37ec-54c6-4267-be57-de498ae37c0b

Sanchez, Aida Cuni, Osborne, Patrick E. and Haq, Nazmul (2010) Identifying the global potential for baobab tree cultivation using ecological niche modelling. Agroforestry Systems, 80 (2), 191-201. (doi:10.1007/s10457-010-9282-2).

Record type: Article

Abstract

The benefits provided by underutilised fruit tree species such as baobab (Adansonia digitata L.) in combating increasing malnutrition and poverty become more apparent as awareness grows regarding concerns of climate change and food security. Due to its multiple uses, its high nutritional and medicinal value, drought tolerance and relatively easy cultivation, baobab has been identified as one of the most important edible forest trees to be conserved, domesticated and valued in Africa. In order to contribute towards the cultivation of the species, suitability of sites in Africa and worldwide was evaluated for potential cultivation using species’ locality data and spatial environmental data in MAXENT modelling framework. A total of 450 geo-referenced records of the baobab tree were assembled from herbarium records, commercial firm’s databases and fieldwork for modelling site suitability for global cultivation of the baobab tree. Climatic and topographic data were acquired from the Worldclim data while soil data was obtained from the Harmonized World Soil Database. MAXENT was found to be a successful modelling method for studying cultivation potential. The main variables that contributed towards predicting baobab’s global cultivation potential were annual precipitation and temperature seasonality. Results suggest that baobab tree could be widely cultivated in most countries in southern Africa and in the Sudano-Sahelian zone of West Africa from Senegal to Sudan. Angola and Somalia were found to be highly suitable for cultivating baobab in Africa. Model suggests, India, where the baobab tree already exists and is used, to be the most suitable country for baobab cultivation outside Africa. North-west Australia, Madagascar, north-east Brazil and Mexico resulted to be other suitable places for cultivating the tree species. Although it is recommended model results be validated with in situ seedling experiments, there seems to be a great potential for the cultivation of this species globally.

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More information

Published date: October 2010
Keywords: baobab tree, distribution, africa, global cultivation potential, modelling, maxent

Identifiers

Local EPrints ID: 184747
URI: http://eprints.soton.ac.uk/id/eprint/184747
ISSN: 0167-4366
PURE UUID: bad34235-3a14-45ce-a415-60ccd938b1db
ORCID for Patrick E. Osborne: ORCID iD orcid.org/0000-0001-8919-5710

Catalogue record

Date deposited: 06 May 2011 13:01
Last modified: 15 Mar 2024 03:21

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Contributors

Author: Aida Cuni Sanchez
Author: Nazmul Haq

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