...
首页> 外文期刊>Communications in Soil Science and Plant Analysis >Mapping Slight and Moderate Saline Soils in Irrigated Agricultural Land Using Advanced Land Imager Sensor (EO-1) Data and Semi-Empirical Models
【24h】

Mapping Slight and Moderate Saline Soils in Irrigated Agricultural Land Using Advanced Land Imager Sensor (EO-1) Data and Semi-Empirical Models

机译:使用先进的土地成像仪传感器(EO-1)数据和半经验模型在灌溉农业用地映射轻微和适度的盐渍土

获取原文
获取原文并翻译 | 示例
           

摘要

Around the world, especially in semi-arid regions, millions of hectares of irrigated agricultural land are abandoned each year because of the adverse effects of irrigation, mainly secondary salinity and sodicity. Accurate information about the extent, magnitude, and spatial distribution of salinity and sodicity will help create the sustainable development of agricultural resources. In Morocco, south of the Mediterranean region, the growth of the vegetation and potential yield are limited by the joint influence of high temperatures and water deficit. Consequently, the overuse of surface and ground water, coupled with agricultural intensification, generates secondary soil salinity. Knowing when, where, and how salinity may occur is very important to the sustainable development of any irrigated production system. Remedial actions require reliable information to help set priorities and to choose the type of action that is most appropriate in each situation. Ground-based electromagnetic measurements of soil electrical conductivity (EC) are generally accepted as the most effective method for quantification of soil salinity. Unfortunately, these methods are expensive, time consuming, and need considerable human resources for land surveying. Moreover, the dynamic nature of soil salinity in space and time makes it more difficult to use conventional methods for comparisons over large areas. A major challenge of remote sensing, as a potential alternative technique, is to detect different levels of soil salinity. The main aim of this research is to assess the potential of the Advanced Land Imager (ALI) sensor on board the Earth Observing-1 (EO-1) satellite, with its rich infrared bands, for the discrimination and mapping of slight and moderate soil salinity in the Tadla's irrigated agricultural perimeter in Morocco. To achieve this goal, semi-empirical predictive models developed in a previous study using second order regression analysis between the EC of salt-affected soils and different spectral salinity indices were applied to the ALI image. This was atmospherically corrected and the radiometric sensor drift was calibrated. Visual comparisons and statistical validation of these models using ground truth were undertaken in order to identify the best semi-empirical model for slight and moderate salinity mapping. The obtained results show that the model based on the Normalized Difference Salinity Index (NDSI) does not give any results. The model based on the Salinity Index-1 (SI-1) and the SI-Advanced Space-borne Thermal Emission and Reflection Radiometer (SI-ASTER) confuses vegetation with high soil salinity, although the model does bring out areas of lower salinity. Both R-2 of 0.67 for the SI-1 and 0.65 for the SI-ASTER further reinforce that these models cause too much confusion to be used with accuracy for salt-affected soil detection. The semi-empirical model based on Soil Salinity and Sodicity Index-1 (SSSI-1) performs better than the two last models. However, there is a relative confusion between the classes in the slight and moderate salinity and in areas that are shown by the validation map; the higher class of salinity does not appear to contain higher levels of salinity. The statistical validation of this model reinforces what is seen on the derived map with only an R-2=0.68. The model based on the SSSI-2 clearly provides the best results in comparison to the ground truth. Its derived map gives the closest overall visual approximation of the EC map, with a whole range of values.
机译:在世界各地,特别是在半干旱地区,每年抛弃数百万公顷的灌溉农业土地由于对灌溉的不利影响,主要是次级盐度和素质。关于盐度和善良性的程度,幅度和空间分布的准确信息将有助于创造农业资源的可持续发展。在地中海南部的摩洛哥,植被的增长和潜在产量受到高温和水赤字的关节影响的限制。因此,与农业强化相结合的表面和地面水的过度使用产生二级土壤盐度。知道何时可能发生的盐度以及如何发生盐度对任何灌溉生产系统的可持续发展非常重要。补救措施需要可靠的信息来帮助设置优先级并选择每种情况中最适合的操作类型。土壤导电率(EC)的地基电磁测量通常被认为是定量土壤盐度的最有效方法。不幸的是,这些方法昂贵,耗时,并且需要相当大的人力资源进行土地测量。此外,空间和时间的土壤盐度的动态性质使得在大面积上使用常规方法更加困难。遥感的主要挑战是一种潜在的替代技术,是检测不同水平的土壤盐度。该研究的主要目的是评估地球观测-1(EO-1)卫星的高级陆地成像仪(ALI)传感器的潜力,其中具有富含红外条带,用于轻微和中度土壤的歧视和测绘在摩洛哥的塔尔拉灌溉农业周边的盐度。为实现这一目标,在ALI图像中使用二阶回归分析在先前研究中开发的半经验预测模型和不同的光谱盐度指数。这是大气校正的,并且校准了辐射传感器漂移。采用地面真理对这些模型的视觉比较和统计验证,以确定用于轻微和中度盐度映射的最佳半实证模型。所得结果表明,基于归一化差异盐度指数(NDSI)的模型不给出任何结果。该模型基于盐度Inder-1(Si-1)和Si-Advanced Scalove-Forne热排放和反射辐射计(Si-aster)使植被与高土壤盐度相混淆,尽管模型确实带出低盐度的区域。对于Si-1和0.65的Si-1和0.65的R-2均为Si-Aster进一步加强了这些模型引起太多的混淆,以便与盐影响土壤检测的准确性一起使用。基于土壤盐度和钠度指数-1(SSSI-1)的半实证模型比上次模型更好地表现出优于两个模型。然而,在验证地图所示的轻微和中度盐度和区域之间存在相对混淆;较高的盐度似乎没有含有更高水平的盐度。该模型的统计验证强化了派生地图上看到的内容,只有R-2 = 0.68。与地面真理相比,基于SSSI-2的模型显然提供了最佳结果。它的派生地图提供了EC地图的最接近的整体视觉近似,具有整体值范围。

著录项

相似文献

  • 外文文献
  • 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