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Development of predictive models of soil phosphorus in Water Conservation Area-2A (Everglades), integrating remote sensing, GIS and geostatistics .

机译:结合遥感,地理信息系统和地统计学,开发水源保护区2A(大沼泽地)土壤磷的预测模型。

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摘要

Integrating GIS and remote sensing technologies with multivariate geostatistical methods for the mapping of spatial soil-vegetative interrelationships has the potential to improve the predictions of soil properties at the landscape-scale. This study presents a hybrid geospatial modeling approach to predict soil total phosphorus (TP) using remotely-sensed data and ancillary landscape properties as supporting variables. Phosphorus is a key indicator variable in subtropical, naturally oligotrophic wetlands to indicate nutrient enrichment. The main objective of this research was to develop spatially-explicit models that predict the distribution and variability of soil TP and other physico-chemical properties (bulk density, total nitrogen, total carbon, and total calcium) throughout Water Conservation Area-2A (WCA-2A), in the Everglades. A set of soil data collected at 111 sampling points in 2003 was analyzed by the Wetland Biogeochemistry Laboratory. We compared two remote sensors, Landsat 7 Enhanced Thematic Mapper (ETM) + and Advanced Spaceborne Thermal Emission and Reflection Radiometer (ASTER), using various univariate and hybrid multivariate geostatistical techniques (ordinary kriging, regression kriging and co-kriging) to predict TP across WCA-2A. Findings of this study have broad impact to improve predictive geospatial modeling of below-ground properties in WCA-2A and similar wetland ecosystems that are sensitive to internal and external forcing functions. Spectral data and indices provide dense, high-resolution signatures that combined with sparse floc/soil data allow to monitor wetland ecosystems and document restoration success across larger landscapes.
机译:将GIS和遥感技术与多元地统计方法相结合,以绘制空间-土壤-植物之间的相互关系,具有改善景观尺度上土壤性质的预测的潜力。这项研究提出了一种混合地理空间建​​模方法,可使用遥感数据和辅助景观特性作为支持变量来预测土壤总磷(TP)。在亚热带自然贫营养的湿地中,磷是关键的指示变量,以指示养分富集。这项研究的主要目的是建立空间明晰的模型,以预测整个节水区2A(WCA)的土壤TP的分布和变异性以及其他理化特性(堆积密度,总氮,总碳和总钙) -2A),在大沼泽地中。湿地生物地球化学实验室分析了2003年在111个采样点收集的一组土壤数据。我们比较了两种遥感器,即Landsat 7增强型专题制图仪(ETM)和先进的星载热发射与反射辐射计(ASTER),使用各种单变量和混合多元地统计技术(常规克里格法,回归克里格法和协克里格法)预测了TP WCA-2A。这项研究的发现对改善对内部和外部强迫功能敏感的WCA-2A和类似湿地生态系统地下特性的预测地理空间建​​模具有广泛的影响。光谱数据和索引提供了密集的高分辨率特征,并与稀疏的絮体/土壤数据结合在一起,可以监控湿地生态系统并记录较大景观的恢复成功。

著录项

  • 作者

    Rivero, Rosanna G.;

  • 作者单位

    University of Florida.;

  • 授予单位 University of Florida.;
  • 学科 Agriculture Soil Science.; Environmental Sciences.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 181 p.
  • 总页数 181
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 土壤学;环境科学基础理论;
  • 关键词

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