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Modelling butterfly species richness using mesoscale environmental variables: model construction and validation for mountain ranges in the Great Basin of western North America

机译:使用中尺度环境变量对蝴蝶物种丰富度进行建模:北美西部大盆地山脉的模型构建和验证

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摘要

If species richness can be modelled as a function of easily quantified environmental variables, the scientific foundation for land-use planning will be strengthened. We used Poisson regression to develop a predictive model of species richness of resident butterflies in the central Great Basin of western North America. Species inventory data and values for 14 environmental variables from 49 locations (canyon segments) in the Toquima Range (Nevada, USA) were used to build the model. We also included squares of the environmental variables to accommodate potential non-linear relationships. Species richness of butterflies was a significant function of elevation and local topographic heterogeneity, with the selected model explaining 57% of the total deviance of species richness. Predictive variables can be derived efficiently from GIS-based data for areas in which species inventories have not yet been conducted. Therefore, in addition to evaluating the ability of the model to explain observed variation in species richness, we generated and tested predictions of species richness for 'new' locations that had not been used to build the model. Predictions we're effective for five new segments also located in the Toquima Range, but not for 22 new segments in the nearby Shoshone Range. We discuss issues related to generalizability and data quality in model development.
机译:如果可以根据容易量化的环境变量对物种丰富度进行建模,那么土地使用规划的科学基础将得到加强。我们使用泊松回归开发了北美西部大盆地中部常驻蝴蝶物种丰富度的预测模型。使用来自美国内华达州托基马山脉49个地点(峡谷段)的14种环境变量的物种清单数据和值来构建模型。我们还包括环境变量的平方,以适应潜在的非线性关系。蝴蝶的物种丰富度是海拔和局部地形异质性的重要函数,所选模型解释了物种丰富度总偏差的57%。可以从尚未进行物种清单的地区的基于GIS的数据中有效地得出预测变量。因此,除了评估模型解释物种丰富度变化的能力外,我们还生成并测试了尚未用于构建模型的“新”位置物种丰富度的预测。预测对于同样位于Toquima Range中的五个新细分有效,但对于附近的Shoshone Range中的22个新细分无效。我们讨论模型开发中与可概括性和数据质量有关的问题。

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