2018
DOI: 10.31413/nativa.v6i1.4696
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MODELAGEM PREDITIVA DA ESPÉCIE Lychnophora pohlii SCH. BIP., NO ESTADO DE MINAS GERAIS

Abstract: O objetivo deste trabalho foi determinar a distribuição potencial da espécie Lychnophora pohlli em Minas Gerais durante as flutuações climáticas no Quaternário, além de identificar a área de abrangência da espécie em Unidades de Conservação. O algoritmo Maxent foi selecionado para relacionar a ocorrência da espécie com variáveis bioclimáticas que refletem diferentes condições de temperatura, precipitação e sazonalidade. Os modelos foram validados por meio do índice AUC e a influência das variáveis sobre a dist… Show more

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Cited by 4 publications
(11 citation statements)
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“…Regarding the modeling for the present, the AUC value obtained (0.94) was considered high, which indicates a suitable adjustment of the model used and high predictive power (COSTA et al, 2018). The areas of suitability almost entirely occupied Ceará and Rio Grande do Norte, which suggests that these states are highly recommended for the creation of conservation banks in situ, enabling the conservation of genetic materials of this species.…”
Section: Discussionmentioning
confidence: 78%
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“…Regarding the modeling for the present, the AUC value obtained (0.94) was considered high, which indicates a suitable adjustment of the model used and high predictive power (COSTA et al, 2018). The areas of suitability almost entirely occupied Ceará and Rio Grande do Norte, which suggests that these states are highly recommended for the creation of conservation banks in situ, enabling the conservation of genetic materials of this species.…”
Section: Discussionmentioning
confidence: 78%
“…New studies should be carried out to allow the comparison between the areas, through the use of other variables, such as soil characteristics, relief and economic factors, which can help in decision-making for commercial implementation or conservationist purposes (NABOUT et al, 2016). The prediction tool can have a positive influence on the maintenance of population ecosystems, since by analyzing climate variations, areas can be defined that are conducive to the implementation of new conservation strategies, such as in situ conservation banks (COSTA et al, 2018). Furthermore, the map of suitability can be used as a tool for the definition of suitable sites for commercial deployment, determining an environment where the species will have the appropriate conditions for its proper development.…”
Section: Discussionmentioning
confidence: 99%
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“…In this sense, ecological niche modeling (ENM) is a study that performs the correlation between the geographical occurrence of a species and a set of environmental variables, to predict the mechanisms that govern its spatial distributions (Yang et al, 2020). In recent years, ENM has become an increasingly important tool to address various issues in ecology, such as conservation practices, indicating regions with suitability for the occurrence of the species evaluated (Costa et al, 2018;Chagas et al, 2020).…”
Section: Introductionmentioning
confidence: 99%
“…These studies contribute to the investigation of priority areas for conservation, since they show the locations potentially suitable for a given species in protected areas, allowing their maintenance, avoiding the loss of genetic diversity and its ecosystem services (Costa et al, 2018;Chagas et al, 2020). This approach allows us to subsidize decisionmaking in programs for the recovery of degraded areas, since the species chosen for the program may have niche limitations in certain regions (Greiser et al, 2020).…”
Section: Introductionmentioning
confidence: 99%