首页> 外文学位 >Rapid prediction of tropical soil degradation using diffuse reflectance spectroscopy: Method verification in the Saiwa River basin, western Kenya.
【24h】

Rapid prediction of tropical soil degradation using diffuse reflectance spectroscopy: Method verification in the Saiwa River basin, western Kenya.

机译:使用漫反射光谱法快速预测热带土壤退化:肯尼亚西部赛瓦河流域的方法验证。

获取原文
获取原文并翻译 | 示例

摘要

Kenya is a poor country with an exploding population growth outpacing food production. Millions of Kenyans regularly experience starvation and/or malnutrition. In the highlands of western Kenya, land conversion from indigenous forests to agriculture results in reduced soil quality through declining soil fertility and increased soil erosion, two principal components of soil degradation. To understand and effectively address the impacts of anthropogenic soil degradation, reliable spatial and temporal soil quality assessment is needed.;This research used Near Infrared (NIR) Diffuse Reflectance Spectroscopy (DRS), Classification and Regression Tree (CART) analysis, stable and radioactive isotopes, satellite imagery interpretation, and Geographic Information System (GIS) to accurately categorize the associations between land cover change, soil fertility and soil erosion.;NIR DRS can quickly index soil fertility and soil erosion. General soil types and conditions were distinguished by mean spectrum grouping and quantification of albedo differences. Calibration and cross validation statistics show that NIR DRS accurately analyzes and predicts soil nutrient and physical parameters. Using spectral properties, soils were successfully differentiated into a three class soil fertility index (SFI) and a two class erosion index (SEI). CART analysis shows these two indices have a high predictive performance with low misclassification results and can be replicated. Significant differences in soil parameter values illustrate that the methods are effective for watershed scale soil degradation assessment and monitoring programs. Analyses of carbon isotope ratios, SOC, and satellite imagery demonstrate the association of deforestation and soil quality change. Historic carbon sources have more influence on current SOC concentrations than recent carbon sources. Grasslands converted to agriculture have the lowest SOC concentration, unconverted forests contain the most, and mixed systems have more SOC than unmixed agricultural systems. Soil erosion and topographic position significantly affect SOC content.;Together, these analytical methods form a recommended methodology for soil degradation evaluation in tropical, remote areas of the world. Accurate landscape scale, soil degradation models are valuable tools to quickly identify target areas in which to focus limited intervention funds and efforts. The results can bolster agricultural land management knowledge and help improve land management policy development intended to increase food production and security.
机译:肯尼亚是一个贫穷的国家,人口爆炸性增长超过粮食生产。数以百万计的肯尼亚人经常遭受饥饿和/或营养不良。在肯尼亚西部的高地上,土地从原始森林向农业的转化通过降低土壤肥力和增加土壤侵蚀(土壤退化的两个主要因素)而导致土壤质量下降。为了理解和有效解决人为土壤退化的影响,需要可靠的时空土壤质量评估。;本研究使用近红外(NIR)漫反射光谱法(DRS),分类和回归树(CART)分析,稳定和放射性同位素,卫星图像解释和地理信息系统(GIS)来准确分类土地覆被变化,土壤肥力和土壤侵蚀之间的关联。NIRDRS可以快速索引土壤肥力和土壤侵蚀。一般土壤类型和条件通过平均光谱分组和反照率差异定量来区分。校准和交叉验证统计数据表明,NIR DRS可以准确地分析和预测土壤养分和物理参数。利用光谱特性,土壤成功地分为三类土壤肥力指数(SFI)和两类土壤侵蚀指数(SEI)。 CART分析显示,这两个指数具有较高的预测性能,而误分类结果较低,可以重复使用。土壤参数值的显着差异表明,这些方法对于分水岭规模的土壤退化评估和监测程序是有效的。对碳同位素比,SOC和卫星图像的分析表明,森林砍伐与土壤质量变化之间存在关联。与最近的碳源相比,历史上的碳源对当前SOC浓度的影响更大。转化为农业的草地的SOC浓度最低,未转化的森林所含的SOC最多,混合系统的SOC比未混合的农业系统更多。土壤侵蚀和地形位置显着影响SOC含量。这些分析方法共同构成了在世界热带偏远地区进行土壤退化评估的推荐方法。准确的景观尺度,土壤退化模型是宝贵的工具,可用于快速确定目标领域,以便集中有限的干预资金和工作。结果可以增强农业土地管理知识,并有助于改善旨在增加粮食生产和安全的土地管理政策制定。

著录项

  • 作者单位

    The University of Alabama at Birmingham.;

  • 授予单位 The University of Alabama at Birmingham.;
  • 学科 Agriculture Soil Science.;Environmental Sciences.;Engineering Environmental.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 189 p.
  • 总页数 189
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号