Predictor importance in habitat suitability models for invasive terrestrial plants

IF 4.6 2区 环境科学与生态学 Q1 BIODIVERSITY CONSERVATION
Demetra A. Williams, Keana S. Shadwell, Ian S. Pearse, Janet S. Prevéy, Peder Engelstad, Grace C. Henderson, Catherine S. Jarnevich
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引用次数: 0

Abstract

Aim

Due to the socioeconomic and environmental damages caused by invasive species, predicting the distribution of invasive plants is fundamental for effectively targeting management efforts. A habitat suitability model (HSM) is a powerful tool to predict potential habitat of invasive species to help guide the early detection of invasive plants. Despite numerous studies of the predictors used in HSMs, there is little consensus about the most appropriate predictors to use in creating ecologically realistic predictions from HSMs.

Location

The contiguous United States.

Methods

We explore 220 invasive terrestrial plant species' existing HSMs constructed with consistent modelling algorithms, background generation methods, predictor resolution, and geographic extent, and calculate the relative importance of predictors for each species. We sort predictors into eight groups (topography, temperature, disturbance, atmospheric water, landscape water, substrate, biotic interaction, and radiation) and compare the importance of predictor groups by plant lifeforms and phylogenetic relatedness.

Results

Human modification and minimum winter temperature were generally the two highest performing individual predictors across the species studied. The highest-performing predictor groups were disturbance, temperature, and atmospheric water. Across lifeforms, there were minimal differences in the influences of predictor groups, although woody plant models exhibited the largest differences in predictor importance when compared with non-woody plant models. Additionally, we found no significant relationship between the importance of predictor groups and phylogenetic relatedness.

Main Conclusions

This study has implications for informing predictor selection in invasive plant HSMs, leading to more reliable and accurate models of invasive terrestrial plants. Our results emphasize the need to critically select predictors included in HSMs, with special consideration to temperature and disturbance predictors, to accurately predict habitat of invasive plant for detection and response of invasive plant species. With more accurate predictions, managers will be better prepared to address invasive species and reduce their threats to landscapes.

Abstract Image

入侵陆生植物生境适宜性模型中预测因子的重要性
目的由于入侵物种会对社会经济和环境造成破坏,因此预测入侵植物的分布对于有效开展有针对性的管理工作至关重要。栖息地适宜性模型(HSM)是预测入侵物种潜在栖息地的有力工具,有助于指导早期发现入侵植物。尽管对 HSM 中使用的预测因子进行了大量研究,但在使用最合适的预测因子从 HSM 中创建符合生态学实际的预测结果方面却鲜有共识。我们将预测因子分为八组(地形、温度、干扰、大气水、景观水、基质、生物相互作用和辐射),并按植物生命形式和系统发育亲缘关系比较预测因子组的重要性。表现最好的预测组是干扰、温度和大气水。尽管木本植物模型与非木本植物模型相比在预测因子重要性方面的差异最大,但在不同生命形式中,预测因子组的影响差异很小。此外,我们还发现预测因子组的重要性与系统发育相关性之间没有显著关系。我们的研究结果表明,有必要严格选择入侵植物生境模型中的预测因子,尤其要考虑温度和干扰预测因子,以准确预测入侵植物的栖息地,从而检测和应对入侵植物物种。有了更准确的预测,管理者就能更好地应对入侵物种,减少其对景观的威胁。
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来源期刊
Diversity and Distributions
Diversity and Distributions 环境科学-生态学
CiteScore
8.90
自引率
4.30%
发文量
195
审稿时长
8-16 weeks
期刊介绍: Diversity and Distributions is a journal of conservation biogeography. We publish papers that deal with the application of biogeographical principles, theories, and analyses (being those concerned with the distributional dynamics of taxa and assemblages) to problems concerning the conservation of biodiversity. We no longer consider papers the sole aim of which is to describe or analyze patterns of biodiversity or to elucidate processes that generate biodiversity.
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