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Application of Bayesian networks in evaluation of current status and protection of Pulsatilla patens (L.) Mill.

机译:贝叶斯网络在评价中的应用 Pulsatilla Patens (L.)磨机的应用。

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摘要

Understanding of the impact of environmental factors on endangered plant species provides a basis for assessment of the risk of their extinction in the near future. Of particular importance is the search for optimal environmental conditions to preserve the continued existence of endangered taxa. Thus, there is a need for a method based on mathematical modeling to connect the current status of an endangered plant species with changing environmental conditions. Using the basics of decision theory, we developed a mathematical model to assess the influence of changing habitat conditions on the current status and protection ofPulsatilla patens (L.) Mill., an endangered plant species in Europe, as an example. The mathematical model was based on the data from 43 sites in the 3 largest forest complexes in NE Poland from 2011 to 2014 (29 attributes, 1566 records). The graphical model showing significant cause‐and‐effect relations between morphological‐developmental features of individuals, demographic features of the populations, and physicochemical properties of the soil was built using the Bayesian networks in GeNIe 2.0 (University of Pittsburgh, Pittsburgh, Pennsylvania, USA). In the process of modeling with the Bayesian Search Algorithm, we also performed simulation, prediction, and optimization of the effects of selected environmental factors on growth and development of the endangered taxon. The diagnostic testing and sensitivity analysis revealed that the degree of soil acidification is the major variable determining the size of populations (number of individuals), developmental phase (juvenile, vegetative, flowering), and size of the individuals (height and diameter of ground rosette). Using the approach presented in this work, it was possible to identify a new habitat factor not known to be important at multiple scales for growth, development, and population dynamics ofP. patens . The validation showed that the developed model is the most effective for evaluation of the impact of habitat conditions on the population features important for reproduction of this taxon. Therefore, the model proposed is recommended as a tool to support decision‐making aimed at conservation planning of the endangered plant species.
机译:了解环境因素对濒危植物物种的影响为在不久的将来评估其灭绝风险的基础。特别重要的是寻找最佳的环境条件,以保持濒危危害的分类群的持续存在。因此,需要一种基于数学建模的方法,以通过改变环境条件连接濒危植物物种的当前状态。利用决策理论的基础知识,我们开发了一种数学模型,以评估改变栖息地条件对当前状态和保护的影响,欧洲濒危植物物种的影响。数学模型基于来自2011年至2014年的Ne波兰的3大森林复合物中的43个站点的数据(29个属性,1566条记录)。图形模型显示了个体形态学发育特征,人口统计特征与土壤的人口特征与土壤的物理化学性质之间的显着原因和效应关系建立了贝叶斯网络(Pittsburgh,Pittsburgh,Pitsylvania,Usa )。在与贝叶斯搜索算法建模的过程中,我们还执行了所选环境因素对濒危分类的生长和发展的仿真,预测和优化的仿真,预测和优化。诊断测试和敏感性分析表明,土壤酸化程度是确定群体大小(个体数量),发育阶段(幼年,营养,开花)和尺寸(地面玫瑰花的高度和直径)的主要变量)。使用在这项工作中提出的方法,可以识别未知的新栖息地因素,以便在 p的增长,开发和人口动态的多种尺度上很重要。看起来。验证表明,开发的模型是评估栖息地条件对对该分类繁殖的重要性的影响最有效的。因此,建议的模型作为支持涉及濒危植物物种的保护计划的决策的工具。

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