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Remote Sensing of Bioindicators for Forest Health Assessment.

机译:用于森林健康评估的生物指标遥感。

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摘要

The impacts of tropospheric ozone on forest health in Mediterranean type climates in California, USA and Catalonia, Spain were investigated using a combination of remote sensing, Geographic Information System (GIS), and field studies focused on sensitive bioindicator conifer species and ambient ozone monitoring. For the field validation of impacts of tropospheric ozone on conifer health, the Ozone Injury Index (OII) was applied to the bioindicator species Pinus ponderosa, Pinus jeffreyi, and Pinus uncinata. Combining these three tools, it was possible to build meaningful ecological models covering large areas to enhance our understanding of the biotic and abiotic interactions which affect forest health. Regression models predicting ozone injury improved considerably when incorporating ozone exposure with GIS related to plant water status, including water availability and water usage, as a proxies for estimating the stomatal conductance and ozone uptake R2=0.35, p = 0.016 in Catalonia, R2=0.36, p < 0.001 in Yosemite and R2=0.33, p = 0.007 in Sequoia/Kings Canyon National Parks in California). Individual OII components in Catalonia were modeled with improved success compared to the original full OII, in particular visible chlorotic mottling (R2=0.60, p < 0.001). The visual chlorotic mottling component of the OII was the most strongly correlated to remote sensing indices, in particular the photochemical reflectance index (PRI; R2=0.28, p=0.0044 for OIIVI-amount and R 2=0.33 and p=0.0016 for OIIVI -severity). Regression models assessing ozone injury to conifers using imaging spectroscopy techniques also improved when incorporating the GIS proxies of stomatal conductance (R 2=0.59, p<0.0001 for OII in California and R2=0.68, p<0.0001 for OIIVI in Catalonia). Finally, taking advantage of a time series of ambient ozone monitoring in Catalonia, it was found that all models improved when incorporating the cumulative exposure to ozone over a period of three years (R2=0.56, p<0.0001 with imaging spectroscopy indices alone and R2=0.77, p<0.0001 with GIS added) and that it was possible to model the three year average ambient ozone using a modified version of the OII (P<0.0001, R2=0.53, RMSE=2.73 with only the OII subcomponents VI-Severity and FWHORL and P<0.0001, R2 = 0.90, RMSE = 1.35 with GIS).
机译:利用遥感,地理信息系统(GIS)的组合,研究了对流层臭氧对美国加利福尼亚州和西班牙加泰罗尼亚地中海型气候中森林健康的影响,并针对敏感的生物指示针叶树种和环境臭氧监测进行了实地研究。为了现场验证对流层臭氧对针叶树健康的影响,将臭氧伤害指数(OII)应用于生物指标物种黄松,松树樟和松林。结合这三个工具,可以建立覆盖大面积区域的有意义的生态模型,以加深我们对影响森林健康的生物和非生物相互作用的理解。回归模型预测臭氧损伤,将臭氧暴露与与植物水分状况相关的GIS(包括水的可利用性和水的使用)结合起来,作为估计气孔导度和臭氧吸收的代理,R2 = 0.35,p = 0.016,加泰罗尼亚,R2 = 0.36 ,优胜美地的p <0.001,加利福尼亚的红杉/国王峡谷国家公园的R2 = 0.33,p = 0.007)。与原始的完整OII相比,加泰罗尼亚中的各个OII组件建模更为成功,尤其是可见的绿藻斑纹(R2 = 0.60,p <0.001)。 OII的视觉绿藻色斑成分与遥感指数之间的相关性最强,特别是光化学反射指数(PRI; R2 = 0.28,OIIVI量的p = 0.0044; R 2 = 0.33; OIIVI的R = 0.23,p = 0.0016-严重程度)。当结合气孔导度的GIS代理时,使用成像光谱技术评估针叶树对臭氧的伤害的回归模型也得到了改善(加利福尼亚州的OII为R 2 = 0.59,p <0.0001,加泰罗尼亚的OIIVI为R2 = 0.68,p <0.0001)。最后,利用加泰罗尼亚的环境臭氧监测时间序列,发现当合并三年内累积的臭氧暴露量时,所有模型都得到改善(R2 = 0.56,p <0.0001,仅具有成像光谱指数,R2 = 0.77,p <0.0001,加上GIS),并且可以使用OII的修改版(P <0.0001,R2 = 0.53,RMSE = 2.73,仅OII子级VI-Severity对三年平均臭氧浓度进行建模FWHORL和P <0.0001,R2 = 0.90,RMSE = 1.35(对于GIS)。

著录项

  • 作者

    Kefauver, Shawn Carlisle.;

  • 作者单位

    University of California, Davis.;

  • 授予单位 University of California, Davis.;
  • 学科 Biology Ecology.;Remote Sensing.;Geodesy.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 166 p.
  • 总页数 166
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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