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Predictive modeling techniques with application to the Cerulean Warbler (Dendroica cerulea) in the Appalachian Mountains Bird Conservation Region

机译:预测建模技术及其在阿巴拉契亚山脉鸟类保护区的天蓝莺(Dendroica cerulea)中的应用

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摘要

Many statistical approaches have been used for developing predictive models for wildlife presence/absence and abundance, each with varying levels of accuracy and complexity. As concerns for declining species intensify and anthropogenic impacts on habitats increase, the ability to quickly quantify and map species distributions and abundances over large regions will become increasingly important. To date, there is no set of best practices for modeling specific wildlife groups. My primary objectives with this thesis were to (1) compare model techniques for ease of use and accuracy, and (2) compare resolution of species occurrence data and its effect on model accuracy.;For the first objective, I compared two modeling techniques that range from moderately quick and simplistic (decision trees) to conceptually and computationally complex (hierarchical spatial models). I used North American Breeding Bird Survey counts with a suite of explanatory variables to predict presence and abundance of cerulean warblers (Dendroica cerulea) in the Appalachian Mountains Bird Conservation Region. Of the decision tree methods, cerulean warbler occurrence was most accurately described by presence/absence models. Regression tree abundance models under-predicted counts and had low accuracy. Hierarchical spatial models predicted abundance of cerulean warblers similar to actual counts, and with better overall accuracy than regression trees. All techniques produced models using similar variables; interior forest and percent forest were most important for identifying areas with cerulean warblers.;For the second objective, I compared two model types, differing in the resolution of the species distribution data. I used North American Breeding Bird Survey (NABBS) counts with a suite of explanatory variables to predict presence and abundance of cerulean warblers (Dendroica cerulea) in the Appalachian Mountains Bird Conservation Region (BCR28). Decision trees were created for route-level and stop-level analyses of presence and abundance. Additionally, output maps have typically been resolved to the resolution of the environmental spatial datasets with little attention given to the scale at which the predictions represent. Using the modeling results, predictive distribution maps were created for cerulean warblers with appropriate resolutions for each model group. Route-level decision trees performed better than stop-level models for predicting both presence and abundance of cerulean warblers. Similar to raw NABBS distribution data, cerulean warblers were predicted to occur in highest concentrations in the central portions of the BCR. Poor performance of stop-level models may result from a mismatch of resolution of environmental data to species survey data, or lack of important environmental covariates at the stop-level scale. The results of this study highlight the importance of correctly matching the resolution of the species distribution data to the resolution of environmental covariates and the extent of analysis.;The results and relationships highlighted in this thesis may serve to direct management and monitoring for the cerulean warbler, and other migratory passerines.
机译:许多统计方法已用于开发野生生物存在/不存在和丰度的预测模型,每种模型具有不同的准确性和复杂性。随着人们对物种数量下降的担忧加剧,以及对生境的人为影响增加,在大区域内快速量化和绘制物种分布和丰度的能力将变得越来越重要。迄今为止,还没有一套用于模拟特定野生动植物种群的最佳实践。本论文的主要目标是(1)比较模型技术的易用性和准确性,以及(2)比较物种发生数据的分辨率及其对模型准确性的影响。从适度的快速和简单化(决策树)到概念上和计算上复杂的(分层空间模型)。我使用了北美繁殖鸟类调查计数和一系列解释变量,以预测阿巴拉契亚山脉鸟类保护区中的蔚蓝莺(Dendroica cerulea)的存在和数量。在决策树方法中,通过存在/不存在模型最准确地描述了蔚蓝莺的发生。回归树丰度模型预测的计数不足,且准确性较低。分层空间模型预测的天蓝色莺的数量与实际数量相似,并且比回归树具有更好的总体准确性。所有技术都使用相似的变量生成模型;内林和百分林对确定具有蔚蓝莺的地区最为重要。为了第二个目标,我比较了两种模型类型,其物种分布数据的分辨率不同。我使用北美繁殖鸟类调查(NABBS)计数和一组解释变量来预测阿巴拉契亚山脉鸟类保护区(BCR28)中的天蓝色莺(Dendroica cerulea)的存在和数量。创建了决策树,用于存在和丰富度的路线级别和停止级别的分析。此外,输出图通常已解析为环境空间数据集的分辨率,而很少关注预测所代表的比例。使用建模结果,为蔚蓝莺创建了预测分布图,并为每个模型组提供了适当的分辨率。路线级别的决策树在预测天蓝色莺的存在和数量方面都比停止级别的模型好。与原始的NABBS分布数据相似,预计蔚蓝的莺在BCR的中央部分浓度最高。终止级模型的性能不佳可能是由于环境数据的分辨率与物种调查数据的分辨率不匹配,或者是由于终止级尺度上缺少重要的环境协变量。这项研究的结果强调了正确匹配物种分布数据的分辨率与环境协变量的分辨率以及分析范围的重要性。本论文所强调的结果和关系可能有助于直接管理和监测蔚蓝的莺。 ,以及其他候鸟雀科。

著录项

  • 作者

    Shumar, Matthew Buhrl.;

  • 作者单位

    West Virginia University.;

  • 授予单位 West Virginia University.;
  • 学科 Wildlife management.;Ecology.;Biostatistics.
  • 学位 M.S.
  • 年度 2009
  • 页码 108 p.
  • 总页数 108
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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