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首页> 外文期刊>Ecological indicators >Prediction of habitat suitability of Morina persica L. species using artificial intelligence techniques
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Prediction of habitat suitability of Morina persica L. species using artificial intelligence techniques

机译:用人工智能技术预测莫里娜斯特察莫里纳斯人类的栖息地适用性

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The Morina genus has 13 species in the world, out of which only M. persica L. is found to be growing wild in Iran. The aim of this research is to predict the spatial distribution and model the habitat suitability for M. persica species using four data mining models: maximum entropy (MaxEnt), support vector machine (SVM), generalized linear model (GLM), and boosted regression trees (BRT). A total of 404 M. persica locations were identified during extensive field surveys, and their geographical locations were recorded using a global positioning system (GPS) device. Furthermore, seventeen environmental predictors including topographical, geological, climatic, and edaphic factors were selected, and their thematic layers were mapped in ArcGIS. Lastly, habitat suitability was modeled using data mining techniques. The validity of the results was assessed using the area under the receiver operating characteristic curve (AUROC). Moreover, three cutoff-dependent metrics, Cohen's kappa, sensitivity, and specificity, were used for more scrutinized performance assessment. The results revealed that the highest effects on M. persica distribution were mostly associated with edaphic factors, followed by climatic, lithological, and topographical factors. The results showed that MaxEnt with an AUROC value of 95% showed an outstanding performance in terms of prediction power and generalization capacity, followed by SVM (94.1%), GLM (87.4%), and BRT (84.7%). Comparing the AUROC values, MaxEnt was selected as the premier model with the best performance for M. persica distribution modelling across the study area. Cutoff-dependent metrics were also in line with AUROC values; however, the latter made a more discernible distinction between the performance of SVM and MaxEnt. The GLM, BRT, SVM, and MaxEnt models classified 37.37%, 27.28%, 23.31%, and 6.51% of the study area as high and very high suitable habitats for M. persica, respectively. The inferences of this research would be of interest to authorities in the natural resources sector, the research community, local stakeholders, and biodiversity conservation agencies for use in conserving and reclaiming M. persica habitats in the study area.
机译:莫里娜属在世界上有13种,其中一个只有M. Persica L.在伊朗疯狂地发现。本研究的目的是使用四个数据挖掘模型预测空间分布和模型M.Sperica物种的栖息地适用性:最大熵(MAXENT),支持向量机(SVM),广义线性模型(GLM)和提升回归树木(BRT)。在广泛的场地调查期间鉴定了总共404米的PESSICA位置,并使用全球定位系统(GPS)设备记录其地理位置。此外,选择了17个环境预测因子,包括地形,地质,气候和仿乳管因子,并在ArcGIS中映射了它们的主题层。最后,使用数据挖掘技术建模栖息地适用性。使用接收器操作特征曲线(AUROC)下的区域评估结果的有效性。此外,三个截止依赖性度量,科恩的κ,敏感性和特异性被用于更审查的性能评估。结果表明,PESSICA分布的最高效果主要与仿乳管因子相关,其次是气候,岩性和地形因素。结果表明,氧化菌值95%的最大值在预测力和泛化容量方面表现出出色的性能,其次是SVM(94.1%),GLM(87.4%)和BRT(84.7%)。比较AUROC值,最大值被选择为具有在研究区域的M. Persica分布建模的最佳性能的高级模型。截止依赖的指标也符合AUROC值;然而,后者在SVM和MAXENT的性能之间进行了更具可辨别的区别。 GLM,BRT,SVM和MAXENT模型分别为37.37%,27.28%,23.31%和6.51%,分别为M.Sperica的高且非常高的合适栖息地。本研究的推论将对自然资源部门,研究界,当地利益攸关方和生物多样性保护机构的当局感兴趣,用于保护和回收研究区域的Persica栖息地。

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