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首页> 外文期刊>Polish journal of ecology >COMPARISON OF THREE MODELING APPROACHES FOR PREDICTING PLANT SPECIES DISTRIBUTION IN MOUNTAINOUS SCRUB VEGETATION (SEMNAN RANGELANDS, IRAN)
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COMPARISON OF THREE MODELING APPROACHES FOR PREDICTING PLANT SPECIES DISTRIBUTION IN MOUNTAINOUS SCRUB VEGETATION (SEMNAN RANGELANDS, IRAN)

机译:三种建模方法对山地灌木植被预测植物物种分布的建模方法(Semnan Rangelands,Iran)

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摘要

The predictive modeling of plant species distribution has wide applications in vegetation studies. This study attempts to assess three modeling approaches to predict the plant distribution in the dry (precipitation 128-275 mm) mountainous (altitude 1129-2260 m a.s.l.) scrub vegetation on the example of the rangelands of northeastern Semnan, Iran. The vegetation of the study area belongs to the communities of Artemisia, Astralagus, Eurotia and other scrub species. The main objective of this study is to compare the predictive ability of three habitat models, and to find the most effective environmental factors for predicting the plant species occurrence. The Canonical Correspondence Analysis (CCA), Logistic Regression (LR), and Artificial Neural Network (ANN) models were chosen to model the spatial distribution pattern of vegetation communities. Plant density and cover, soil texture, available moisture, pH, electrical conductivity (EC), organic matter, lime, gravel and gypsum contents and topography (elevation, slope and aspect) are those variables that have been sampled using the randomized systematic method. Within each vegetation type, the samples were collected using 15 quadrates placed at an interval of 50 m along three 750 m transects. As a necessary step, the maps of all factors affecting the predictive capability of the models were generated. The results showed that the predictive models using the LR and ANN methods are more suitable to predict the distribution of individual species. In opposite, the CCA method is more suitable to predict the distribution of the all studied species together. Using the finalized models, maps of individual species (for different species) or for all the species were generated in the GIS environment. To evaluate the predictive ability of the models, the accuracy of the predicted maps was compared against real-world vegetation maps using the Kappa statistic. The Kappa (kappa) statistic was also used to evaluate the adequacy of vegetation mapping. The comparison between the vegetation cover of a map generated using the CCA application and its corresponding actual map showed a good agreement (i.e. kappa = 0.58). The results also revealed that maps generated using the LR and ANN models for Astragalus spp., Halocnemum strobilaceum, Zygophyllum eurypterum and Seidlitzia rosmarinus species have a high accordance with their corresponding actual maps of the study area. Due to the high level of adaptability of Artemisia sieberi, allowing this specie to grow in most parts of the study area with relatively different habitat conditions, a predictive model for this species could not be fixed. In such cases, a set of predictive models may be used to formulate the environment-vegetation relationship. Finally, the predictive ability of the LR and ANN models for mapping Astragalus spp. was determined as kappa = 0.86 and kappa = 0.91 respectively, implying a very good agreement between predictions and observations.
机译:植物物种分布的预测建模在植被研究中具有广泛的应用。该研究试图评估三种建模方法,以预测干燥的植物分布(降水128-275 mm)山区(海拔1129-2260米A.S.L.)灌木植被灌木植被,兰姆兰伊朗滨海牧场的例子。研究区的植被属于蒿属植物,阿尔葡萄球,欧洲恐惧症和其他磨砂物种的社区。本研究的主要目的是比较三种栖息地模型的预测能力,并找到预测植物物种的最有效的环境因素。选择规范对应分析(CCA),逻辑回归(LR)和人工神经网络(ANN)模型来模拟植被社区的空间分布模式。植物密度和覆盖,土壤质地,可用水分,pH,电导率(EC),有机物,石灰,砾石和石膏含量以及地形(升高,坡度和方面)是使用随机系统方法进行采样的那些变量。在每个植被类型内,使用15个四浆物以50μm的间隔沿三个750m横断面的间隔收集样品。作为必要的步骤,产生影响模型预测能力的所有因素的地图。结果表明,使用LR和ANN方法的预测模型更适合于预测个体种类的分布。在相反的情况下,CCA方法更适合于预测所有研究的各种物种的分布在一起。使用最终模型,在GIS环境中产生单个物种(针对不同物种)或所有物种的地图。为了评估模型的预测能力,使用Kappa统计数据比较预测地图的准确性。 Kappa(Kappa)统计论也用于评估植被映射的充分性。使用CCA应用程序生成的地图的植被覆盖与其相应的实际地图之间的比较显示了良好的协议(即Kappa = 0.58)。结果还显示,使用LR和Ann模型生成的Astragalus SPP的地图。,卤虫人六层,Zygophyllum eurypterum和Seidlitzia Rosmarinus物种具有重要的研究区域的相应实际地图。由于Artemisia Sieberi的高度适应性,允许该物种在研究区域的大多数部分具有相对不同的栖息地条件下,该物种的预测模型无法固定。在这种情况下,可以使用一组预测模型来制定环境 - 植被关系。最后,LR和ANN模型的预测能力映射黄芪SPP。被确定为Kappa = 0.86和Kappa = 0.91,这意味着预测和观察之间的一致性非常良好。

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