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Modeling mountain pine beetle habitat suitability within Sequoia National Park.

机译:在红杉国家公园内模拟山松甲虫栖息地的适宜性。

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摘要

Understanding significant changes in climate and their effects on timber resources can help forest managers make better decisions regarding the preservation of natural resources and land management. These changes may to alter natural ecosystems dependent on historical and current climate conditions. Increasing mountain pine beetle (MBP) outbreaks within the southern Sierra Nevada are the result of these alterations. This study better understands MPB behavior within Sequoia National Park (SNP) and model its current and future habitat distribution. Variables contributing to MPB spread are vegetation stress, soil moisture, temperature, precipitation, disturbance, and presence of Ponderosa (Pinus ponderosa) and Lodgepole (Pinus contorta) pine trees. These variables were obtained using various modeled, insitu, and remotely sensed sources. The generalized additive model (GAM) was used to calculate the statistical significance of each variable contributing to MPB spread and also created maps identifying habitat suitability. Results indicate vegetation stress and forest disturbance to be variables most indicative of MPB spread. Additionally, the model was able to detect habitat suitability of MPB with a 45% accuracy concluding that a geospatial driven modeling approach can be used to delineate potential MPB spread within SNP.
机译:了解气候的重大变化及其对木材资源的影响,可以帮助森林管理者在保护自然资源和土地管理方面做出更好的决策。这些变化可能会改变依赖于历史和当前气候条件的自然生态系统。内华达山脉南部爆发的山松甲虫(MBP)爆发是这些变化的结果。这项研究可以更好地了解红杉国家公园(SNP)内的MPB行为,并对其当前和未来的栖息地分布进行建模。造成MPB扩散的变量包括植被压力,土壤湿度,温度,降水,扰动以及黄松(Pinus tankerosa)和黑松(Pinus contorta)松树的存在。这些变量是使用各种建模的,原位的和遥感的源获得的。广义加性模型(GAM)用于计算每个变量对MPB传播的统计显着性,还创建了确定栖息地适宜性的地图。结果表明,植被压力和森林干扰是最能反映MPB传播的变量。此外,该模型能够以45%的准确度检测MPB的栖息地适宜性,这表明可以使用地理空间驱动的建模方法来描述SNP中潜在的MPB传播。

著录项

  • 作者

    Nguyen, Andrew.;

  • 作者单位

    San Jose State University.;

  • 授予单位 San Jose State University.;
  • 学科 Forestry.;Entomology.;Remote sensing.;Geography.
  • 学位 M.A.
  • 年度 2015
  • 页码 41 p.
  • 总页数 41
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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