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A method for integrating the Breeding Bird Survey and Forest Inventory and Analysis databases to evaluate forest bird-habitat relationships at multiple spatial scales.

机译:一种集成了繁殖鸟类调查和森林清单与分析数据库以评估多个空间尺度上森林鸟类与栖息地之间关系的方法。

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The limited spatial scales of many bird-habitat studies restrict inference regarding large scale bird-habitat relationships. A potential solution to this challenge is integrating the USFS Forest Inventory and Analysis (FIA) and USGS Breeding Bird Survey (BBS) databases. We describe a methodology for integrating these databases into a uniform dataset for modelling bird-habitat relationships at multiple spatial scales. We accumulated route-level BBS data for four species guilds (canopy nesting, ground-shrub nesting, cavity nesting, early successional), each containing a minimum of five bird species. We developed 43 forest variables at the county level using FIA data from the 2000 inventory cycle within 5 physiographic regions in 14 states (Alabama, Georgia, Illinois, Indiana, Kentucky, Maryland, North Carolina, New York, Ohio, Pennsylvania, South Carolina, Tennessee, Virginia, and West Virginia). We examined spatial relationships between the BBS and FIA data at three hierarchical scales: (1) individual BBS routes; (2) FIA units; and (3) physiographic sections. At the BBS route scale, we buffered routes at 100 m, 1 km, and 10 km radii, intersected these buffers with county boundaries, and developed weighted averages for each forest variable within each buffer width. Weights were a function of the percent of area each county had within a buffer. We calculated 29 landscape structure variables from 1992 National Land Cover Data (NLCD) imagery using Fragstats within each buffer width. At the BBS route scale, we developed models relating variations in bird occupancy and abundance to forest and landscape structure within each buffer width using classification and regression trees (CART). We aggregated the FIA variables to the FIA unit and physiographic section scales and recalculated the landscape variables within each unit and section using NCLD imagery resampled to a 400 m pixel size. We used regression trees (FIA unit scale) and general linear models (GLM, physiographic section scale) to relate variations in bird abundance to the forest and landscape variables. At the BBS route scale, 80% of the best CART models accounted for >50% of the variation in bird occupancy and abundance. Among FIA units and physiographic sections, the regression trees accounted for an average of 54.1% and the GLMs accounted for an average of 66.3% of the variability in bird abundance, respectively. This methodology shows promise for integrating independent databases for evaluating bird-habitat relationships across broad spatial extents, and the hierarchical nature of these models provides a potentially consistent means of evaluating management options at varying spatial scales..
机译:许多鸟类栖息地研究的有限空间尺度限制了关于大规模鸟类栖息地关系的推论。应对这一挑战的潜在解决方案是整合USFS森林清单和分析(FIA)和USGS繁殖鸟类调查(BBS)数据库。我们描述了一种将这些数据库集成到一个统一的数据集中以在多个空间尺度上建模鸟类-栖息地关系的方法。我们收集了四个物种行会(林冠嵌套,灌木丛嵌套,空腔嵌套,早期演替)的路线级BBS数据,每个至少包含五个鸟类物种。我们使用来自14个州(阿拉巴马州,乔治亚州,伊利诺伊州,印第安纳州,肯塔基州,马里兰州,北卡罗来纳州,纽约州,俄亥俄州,宾夕法尼亚州,南卡罗来纳州,田纳西州,弗吉尼亚州和西弗吉尼亚州)。我们从三个层次上考察了BBS和FIA数据之间的空间关系: (2)国际汽联单位; (3)生理剖面。在BBS路线范围内,我们在半径100 m,1 km和10 km处缓冲路线,将这些缓冲区与县界线相交,并针对每个缓冲区宽度内的每个森林变量得出加权平均值。权重是每个县在缓冲区内所占面积百分比的函数。我们使用每个缓冲区宽度内的Fragstats,根据1992年国家土地覆被数据(NLCD)图像计算了29个景观结构变量。在BBS路线规模上,我们使用分类和回归树(CART)开发了将每个缓冲区宽度内的鸟类居住和丰度变化与森林和景观结构相关的模型。我们将FIA变量汇总到FIA单位和地理剖面比例,并使用重新采样到400 m像素大小的NCLD图像重新计算每个单位和剖面内的景观变量。我们使用了回归树(FIA单位比例尺)和通用线性模型(GLM,自然剖面比例尺)来将鸟类丰度的变化与森林和景观变量相关联。在BBS路线规模上,80%的最佳CART模型占鸟类占用和丰度变化的> 50%。在国际汽联的单位和地理剖面中,回归树平均占鸟类丰度变异性的平均值,分别为54.1%和GLM。这种方法论显示出有望整合独立的数据库来评估广泛的空间范围内的鸟类与栖息地之间的关系,并且这些模型的层级性质为评估不同空间尺度上的管理选择提供了潜在的一致手段。

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