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首页> 外文期刊>The Journal of Applied Ecology >Species distribution models predict rare species occurrences despite significant effects of landscape context
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Species distribution models predict rare species occurrences despite significant effects of landscape context

机译:物种分布模型预测稀有物种出现尽管有重大的影响景观环境

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The true status of many endangered plants is uncertain because the locations of all extant populations are not known. Species distribution models (SDMs) can direct searches for additional populations, but habitat fragmentation may influence the distribution of rare species more than climatic or edaphic factors in human-dominated landscapes. In this study, I test the ability of SDMs to predict rare plant occurrences in a fragmented landscape and the importance of predicted habitat suitability versus landscape context. I built SDMs for eight rare woodland plants and assessed them using an independent data set including plant community surveys of 51 sites. I used community data to determine whether SDMs predict the right habitat type even when the target rare species was absent. I then modelled rare species presence based on predicted habitat suitability, distance to the nearest known population and the amount of forest habitat within 500 m of the site. SDMs were effective for seven of the eight species, with the degree of predicted habitat suitability positively related to species' occurrence. I found new populations of four of the eight species. However, the amount of forest habitat available in the vicinity of a plot was also a positive predictor of rare plant occurrences. Among sites predicted to be suitable, the distance to the nearest known population was the strongest predictor of rare plant occurrence.Synthesis and applications. Species distribution models (SDMs) can effectively target searches for populations of rare species even in human-dominated landscapes. Surveying the plant community at sites predicted to be suitable can help to improve the SDM. SDMs used in conjunction with data on landscape context can maximize the efficiency of searches for rare species and show which species are restricted by dispersal limitation and habitat fragmentation in addition to edaphic and climatic factors.
机译:许多濒危植物的真正地位不确定,因为所有现存的位置数量不清楚。模型(sdm)可以直接搜索附加人口,但栖息地的分裂可能影响稀有物种的分布比气候或土壤因素人类控制的景观。长效磺胺预测稀有植物的能力出现在一个支离破碎的景观和栖息地适宜性预测的重要性与景观环境。使用一个罕见的林地植物和评估它们独立数据集包括植物群落51网站的调查。确定长效磺胺预测合适的栖息地即使目标稀有物种类型缺席。基于预测的栖息地适宜性,距离到最近的人口和的数量在500网站的森林栖息地。有效的七个八个物种,与预测的栖息地适宜性程度积极与物种的出现有关。发现四个八的新群体物种。附近的一个情节也是一个积极的预测出现的稀有植物。在合适的网站预测,距离最近的已知的人口最强的预测的稀有植物发生。分布模型(sdm)可以有效地目标搜索甚至稀有物种的数量人类控制的景观。社区网站预测合适的可以有助于提高长效磺胺。景观数据上下文可以最大化寻找稀有物种,显示的效率哪些物种限制传播限制和栖息地的分裂除了土壤和气候因素。

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