2023
DOI: 10.3390/f14112177
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Predicting Habitat Suitability and Adaptation Strategies of an Endangered Endemic Species, Camellia luteoflora Li ex Chang (Ericales: Theaceae) under Future Climate Change

Shutian Rong,
Pengrui Luo,
Hang Yi
et al.

Abstract: Camellia luteoflora Li ex Chang is an endangered plant endemic to the East Asian flora with high ornamental value as well as phylogenetic and floristic research value. Predicting the impact of climate change on its distribution and suitable habitat is crucial until scientific conservation measures are implemented. Based on seven environmental variables and 17 occurrence records, this study optimized the MaxEnt model using the kuenm data package to obtain the optimal parameter combinations (RM = 1.3, FC = LPT) … Show more

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“…Therefore, it is necessary to optimize feature combination (FC) and regularization multiplier (RM) in the MaxEnt model to build the optimal MaxEnt model [28]. By testing the combination of different FC and RM parameters, the AIC values of different parameter models were obtained to evaluate the complexity of the model, and the model with the lowest complexity was selected to build the optimal model [29]. In this study, the parameters of the A. trifida prediction model were optimized by using the Kuenm package in R, setting the RM parameter interval [0.1-4], each interval 0.1, and 29 FC feature function combinations.…”
Section: Maxent Model Optimization and Results Evaluationmentioning
confidence: 99%
“…Therefore, it is necessary to optimize feature combination (FC) and regularization multiplier (RM) in the MaxEnt model to build the optimal MaxEnt model [28]. By testing the combination of different FC and RM parameters, the AIC values of different parameter models were obtained to evaluate the complexity of the model, and the model with the lowest complexity was selected to build the optimal model [29]. In this study, the parameters of the A. trifida prediction model were optimized by using the Kuenm package in R, setting the RM parameter interval [0.1-4], each interval 0.1, and 29 FC feature function combinations.…”
Section: Maxent Model Optimization and Results Evaluationmentioning
confidence: 99%