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首页> 外文期刊>Western North American Naturalist >Modeling distributions of rare plants in the Great Basin, western North America
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Modeling distributions of rare plants in the Great Basin, western North America

机译:北美西部大盆地稀有植物的分布模型

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In this 2-phase study, we developed field-validated site and landscape-level predictive models for identifying potential rare and endemic plant habitat in the Great Basin of western North America. Four species were chosen to include a range of environmental variability and plant communities. Herbarium records of known occurrences were used to identify initial sample sites. The geographic coordinates, environmental attributes, and vegetation data collected at each site were used to develop 2 predictive models for each species: a field key and a probability-of-occurrence or predictor map. The field key was developed using only field data collected at the sites on environmental attributes and associated species. Predictive maps were developed with a geographic information system (GIS) containing slope, elevation, aspect, soils, and geologic data. Classification-tree (CT) software was used to generate dichotomous field keys and maps of occurrence probabilities. Predictions from both models were then field-validated during the 2nd phase of the study, and final models were developed through an iterative process, in which data collected during the field validation were incorporated into subsequent predictive models. Cross-validated models were >96% accurate and generally predicted presence with >60% accuracy. These models identified potential habitat by combining elevation, slope, aspect, rock: type, and geologic process into habitat models for each species.
机译:在此为期2个阶段的研究中,我们开发了现场验证的地点和景观水平的预测模型,以识别北美西部大盆地中潜在的稀有和特有植物栖息地。选择了四个物种,以包括一系列环境变异性和植物群落。已知事件的植物标本室记录用于识别初始样本位置。在每个地点收集的地理坐标,环境属性和植被数据被用来为每种物种开发2个预测模型:田间关键字和发生概率或预测图。仅使用在现场收集的有关环境属性和相关物种的现场数据来开发该现场密钥。使用地理信息系统(GIS)开发了预测性地图,该地理信息系统包含坡度,海拔,坡向,土壤和地质数据。分类树(CT)软件用于生成二分字段关键字和出现概率图。然后,在研究的第二阶段对来自两个模型的预测进行现场验证,并通过迭代过程开发最终模型,其中将在现场验证期间收集的数据合并到后续的预测模型中。交叉验证的模型的准确度> 96%,并且通常预测的准确度> 60%。这些模型通过将海拔,坡度,坡向,岩石:类型和地质过程组合到每个物种的栖息地模型中,从而确定了潜在的栖息地。

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