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首页> 外文期刊>Plant Biosystems >Incorporating bioclimatic and biogeographic data in the construction of species distribution models in order to prioritize searches for new populations of threatened flora
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Incorporating bioclimatic and biogeographic data in the construction of species distribution models in order to prioritize searches for new populations of threatened flora

机译:将生物气候和生物地理数据纳入物种分布模型的构建中,以便优先搜索受威胁植物群的新种群

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The aim of this study was to analyse the usefulness of incorporating bioclimatic and biogeographic data into digital species prediction and modelling tools in order to identify potential habitats of rare or endangered flora taxa. Species distribution models (SDMs) were obtained using the Maximum entropy algorithm. Habitat suitability maps were based on sites of known occurrence of studied species. The study showed that highly reliable habitat prediction models can be obtained through the inclusion of bioclimatic and biogeographic maps when modelling these species. The resultant SDMs are able to fit the search area more closely to the characteristics of the species, excluding the percentage of highly suitable areas that are located far from the known distribution of the taxon, where the probability of finding the plant is low. Therefore, it is possible to overcome one of the most commonly encountered problems in the construction of rare or threatened flora taxa SDMs, derived from the low number of initial citations. The resulting SDMs and the vegetation map enable prioritization of the search for new populations and optimization of the economic and human resources used in the collection of field data.
机译:这项研究的目的是分析将生物气候和生物地理数据纳入数字物种预测和建模工具的有用性,以识别稀有或濒危植物群的潜在栖息地。使用最大熵算法获得了物种分布模型(SDM)。生境适宜性图是基于已知物种的已知发生地点。研究表明,在对这些物种进行建模时,可以通过包含生物气候和生物地理地图来获得高度可靠的栖息地预测模型。最终的SDM能够使搜索区域更接近物种的特征,不包括与分类单元的已知分布相距甚远的高度合适区域的百分比,在该范围内发现植物的可能性很低。因此,有可能克服在构建稀有或濒临灭绝的植物类群SDM时最常遇到的问题之一,这种问题源于最初的引用次数少。生成的SDM和植被图可以优先考虑新种群的搜索,并可以优化用于收集野外数据的经济和人力资源。

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