2021
DOI: 10.1080/15481603.2021.1903281
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Modeling the geographic spread and proliferation of invasive alien plants (IAPs) into new ecosystems using multi-source data and multiple predictive models in the Heuningnes catchment, South Africa

Abstract: The geographic spread and proliferation of Invasive Alien Plants (IAPs) into new ecosystems requires accurate, constant, and frequent monitoring particularly under the changing climate to ensure the integrity and resilience of affected as well as vulnerable ecosystems. This study thus aimed to understand the distribution and shifts of IAPs and the factors influencing such distribution at the catchment scale to minimize their risks and impacts through effective management. Three machine learning Species Distrib… Show more

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Cited by 20 publications
(10 citation statements)
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“…A single model may result in differences in suitable habitat for the same species due to multiple factors. Different algorithms have different architectures and input data assumptions, such as species ecological characteristics, environmental complexity, and data availability, which can result in uncertainty in prediction results [ 53 , 82 ]. Simulations using a single model inevitably produce under-fitting or over-fitting problems, but the EM can reduce the uncertainty of model fitting [ 52 , 83 ].…”
Section: Discussionmentioning
confidence: 99%
“…A single model may result in differences in suitable habitat for the same species due to multiple factors. Different algorithms have different architectures and input data assumptions, such as species ecological characteristics, environmental complexity, and data availability, which can result in uncertainty in prediction results [ 53 , 82 ]. Simulations using a single model inevitably produce under-fitting or over-fitting problems, but the EM can reduce the uncertainty of model fitting [ 52 , 83 ].…”
Section: Discussionmentioning
confidence: 99%
“…Thus, the combination of rock susceptibility to wildfire damage, as directed by the local topography, the changes in drought patterns and the invasion of alien woody vegetation in some cases (e.g. Mtengwana et al, 2021) could lead to altered catchment processes.…”
Section: Discussionmentioning
confidence: 99%
“…If wildfire occurrence continues to increase in frequency, the associated increase in spalling and cracking of larger rocks could lead to increased soil cover with larger fragments, potentially altering the composition of the local vegetation, as well as more rapid surface sediment production as larger sandstone fragments disaggregate under subsequent wetting and drying. Thus, the combination of rock susceptibility to wildfire damage, as directed by the local topography, the changes in drought patterns and the invasion of alien woody vegetation in some cases (e.g Mtengwana et al, 2021). could lead to altered catchment processes.…”
mentioning
confidence: 99%
“…Comparably, in this study, there is no convincing evidence to substantiate that one of these models is considerably better than the other. Therefore, the ensemble modeling approach is recommended to reduce the modeling uncertainties (Mtengwana et al, 2021;Schulz et al, 2021).…”
Section: Model Performancesmentioning
confidence: 99%