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Geographic information science: Contribution to understanding salt and sodium affected soils in the Senegal River Valley.

机译:地理信息科学:有助于理解塞内加尔河谷中盐和钠的土壤。

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摘要

The Senegal River valley and delta (SRVD) are affected by long term climate variability. Indicators of these climatic shifts include a rainfall deficit, warmer temperatures, sea level rise, floods, and drought. These shifts have led to environmental degradation, water deficits, and profound effects on human life and activities in the area. Geographic Information Science (GIScience), including satellite-based remote sensing methods offer several advantages over conventional ground-based methods used to map and monitor salt-affected soil (SAS) features. This study was designed to assess the accuracy of information on soil salinization extracted from Landsat satellite imagery. Would available imagery and GIScience data analysis enable an ability to discriminate natural soil salinization from soil sodication and provide an ability to characterize the SAS trend and pattern over 30 years? A set of Landsat MSS (June 1973 and September 1979), Landsat TM (November 1987, April 1994 and November 1999) and ETM+ (May 2001 and March 2003) images have been used to map and monitor salt impacted soil distribution. Supervised classification, unsupervised classification and post-classification change detection methods were used. Supervised classifications of May 2001 and March 2003 images were made in conjunction field data characterizing soil surface chemical characteristics that included exchange sodium percentage (ESP), cation exchange capacity (CEC) and the electrical conductivity (EC). With this supervised information extraction method, the distribution of three different types of SAS (saline, saline-sodic, and sodic) was mapped with an accuracy of 91.07% for 2001 image and 73.21% for 2003 image. Change detection results confirmed a decreasing trend in non-saline and saline soil and an increase in saline-sodic and sodic soil. All seven Landsat images were subjected to the unsupervised classification method which resulted in maps that separate SAS according to their degree of salinity. The spatial distribution of sodic and saline-sodic soils has a strong relationship with the area of irrigated rice crop management. This study documented that human-induced salinization is progressively replacing natural salinization in the SRVD. These pedologic parameters obtained using GIScience remote sensing techniques can be used as a scientific tool for sustainable management and to assist with the implementation of environmental policy.
机译:塞内加尔河谷和三角洲(SRVD)受长期气候变化的影响。这些气候变化的指标包括降雨不足,温度升高,海平面上升,洪水和干旱。这些变化导致环境恶化,缺水,并对该地区的人类生活和活动产生了深远的影响。包括基于卫星的遥感方法在内的地理信息科学(GIScience)与用于绘制和监视受盐影响的土壤(SAS)特征的常规地面方法相比,具有许多优势。这项研究旨在评估从Landsat卫星影像中提取的土壤盐渍化信息的准确性。可用的图像和GIScience数据分析是否能够区分天然土壤盐渍化和土壤盐渍化,并提供表征30年间SAS趋势和模式的能力?一组Landsat MSS(1973年6月和1979年9月),Landsat TM(1987年11月,1994年4月和1999年11月)和ETM +(2001年5月和2003年3月)的图像已用于绘制和监测盐分影响的土壤分布。使用监督分类,非监督分类和分类后变更检测方法。结合野外数据对2001年5月和2003年3月的图像进行了监督分类,这些数据描述了土壤表面化学特征,包括交换钠百分比(ESP),阳离子交换容量(CEC)和电导率(EC)。使用这种有监督的信息提取方法,可以绘制出三种不同类型的SAS(盐,盐碱和钠)的分布图,其精度在2001年图像中为91.07%,在2003年图像中为73.21%。变化检测结果证实了非盐碱土和盐渍土的减少趋势以及盐碱土和钠盐土的增加。所有七个Landsat图像都经过了无监督分类方法,生成的地图根据其盐度将SAS分开。苏打水和盐碱化土壤的空间分布与稻田灌溉管理面积有很强的关系。这项研究表明,人类诱导的盐碱化正在逐步取代SRVD中的天然盐碱化。使用GIScience遥感技术获得的这些生态参数可以用作可持续管理的科学工具,并有助于实施环境政策。

著录项

  • 作者

    Ndiaye, Ramatoulaye.;

  • 作者单位

    Kansas State University.;

  • 授予单位 Kansas State University.;
  • 学科 Physical Geography.;Remote Sensing.;Agriculture Soil Science.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 157 p.
  • 总页数 157
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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