首页> 外文期刊>Range Management & Agroforestry >Predicting potential distributions of Zygophyllum eurypterum by three modeling techniques (ENFA, ANN and logistic) in North East of Semnan, Iran
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Predicting potential distributions of Zygophyllum eurypterum by three modeling techniques (ENFA, ANN and logistic) in North East of Semnan, Iran

机译:通过三种建模技术(ENFA,ANN和Logistic)预测伊朗塞姆南东北部的欧洲霸王龙的潜在分布

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The paper investigates the use of 'Ecological niche factor analysis' (ENFA) method for modeling Zygophylum eurypterum species geographic distributions with presence-only data and 'Artificial Neural Network' (ANN), 'Logistic Regression' (LR) methods for investigating of Zygophyllum eurypterum species distribution with presence-absence data in North East of Semnan province. 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 the variables 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. To map soil characteristics, geostatistical method was used. The back propagation Neural Network in MATLAB software was used to generate the ANN model with one input, one hidden and one output layer and the Logistic Regression analysis was done in SPSS software and based on obtained models (ANN and LR methods) predicted maps in Arc Map software were created. The accuracy of the predicted maps (prepared by ENFA, ANN and LR) were tested with actual vegetation maps. Kappa coefficients prepared by these methods show good accordance with actual vegetation map prepared for the study area. The results of ENFA method show that 25200 hectares or 34 percent of study site is potential habitat of Z. eurypterum. The results also revealed that maps generated using the LR and ANN models for Z. eurypterum species have a high accordance with their corresponding actual maps of the study area. This species is distributed in rangeland with alkali-saline soil, high of lime percent, silty-sandy texture and in 1000-2000 meters elevation.
机译:本文研究了使用“生态位因子分析”(ENFA)方法通过仅存在数据和“人工神经网络”(ANN),“逻辑回归”(LR)方法对拟南芥属植物地理分布建模的方法塞姆南省东北部有存在数据的小鳞鱼种类分布植物密度和覆盖率,土壤质地,有效水分,pH,电导率(EC),有机物,石灰,砾石和石膏的含量以及地形(高程,坡度和长宽比)是使用随机系统方法采样的变量。在每种植被类型内,使用15个四边形收集样本,这些四边形沿着三个750 m样点以50 m的间隔放置。为了绘制土壤特征图,使用了地统计方法。使用MATLAB软件中的反向传播神经网络生成具有一个输入,一个隐藏和一个输出层的ANN模型,并在SPSS软件中基于获得的模型(ANN和LR方法)在Arc中预测地图进行Logistic回归分析地图软件已创建。用实际植被图测试了预测图(由ENFA,ANN和LR编写)的准确性。通过这些方法准备的卡伯系数与为研究区域准备的实际植被图非常吻合。 ENFA方法的结果表明,有25200公顷(占研究地点的34%)是欧洲菊科的潜在栖息地。结果还表明,使用LR和ANN模型生成的针对欧氏疟原虫物种的图谱与研究区域的相应实际图谱高度一致。该物种分布在碱土盐碱地,石灰含量高,粉质沙质质地,海拔1000-2000米的草原上。

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