...
首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >ADVANCES IN SOIL MOISTURE RETRIEVAL FROM NEAR-SURFACE MEASUREMENTS USING SATELLITE REMOTE SENSING
【24h】

ADVANCES IN SOIL MOISTURE RETRIEVAL FROM NEAR-SURFACE MEASUREMENTS USING SATELLITE REMOTE SENSING

机译:利用卫星遥感近地测量土壤水分的研究进展

获取原文
           

摘要

Soil moisture influences numerous environmental processes occurring over large spatial and temporal scales. It profoundly influences the hydrological and meteorological activity together with climate predictions and hazard analysis. Space-borne sensors are capable of retrieving the surface soil moisture over a region on a regular basis. Latent heat measurements of soil, reflectance based methods, microwave measurements and synergistic approaches are some of the techniques used since long for providing soil moisture estimates over regional and global scales. Due to the dynamic interaction of soil with crops, retrieval of surface soil moisture is always challenging. This paper gives a brief overview of advance in soil moisture retrieval techniques, and an attempt to generate surface soil moisture from fine-resolution satellite remote sensing data. The optical remote sensing explores the linear relationship between land surface reflectance and soil moisture content, and through development of empirical spectral vegetation indices. Another way to estimate soil moisture emerged by measuring amplitude of diurnal temperature, which is closely related to thermal conductivity and heat capacity of soil. Emergence of radiometric satellite measurements at fine resolution has reached at a higher level of technology these days. Microwave remote sensing techniques have a long legacy of providing surface soil moisture estimates with reasonable accuracy. The SMOS (Soil Moisture and Ocean Salinity) and SMAP (Soil Moisture Passive and Active) missions launched in 2009 and 2015 respectively, are completely dedicated for providing soil moisture at global scale with a spatial resolution of 35?km & 3–40?km. These soil moisture products, however, provides data at highly coarser spatial resolution. The launch of Sentinels gave insight by providing active radar and optical data at higher resolution (~10?m). Sentinel-1 is the first SAR (Synthetic Aperture Radar) constellation having 6-day revisit time providing data in C-band with dual polarisations. However, no algorithm or methodology is available to generate surface soil moisture product at a finer resolution from dual polarisations. Sentinel-1 data has been used to generate regional surface soil moisture image through modelling. The same has been also used for generating surface soil moisture map of IARI farm at New Delhi. Dubois, a bare surface model, was tested for its suitability for surface soil moisture retrieval of the farm. In addition, radar- based Soil moisture (SM) proxy method was used over Sentinel-1 data for the month of July 2018, and validated through actual surface soil moisture (gravimetric) measurements. Results were satisfactory for a range of 4–16?msup3/sup?msup?3/sup of soil moisture, with coefficient of determination (Rsup2/sup) as 0.45, RMSE of 2.35 and a p-value of 0.005. However, over a higher range of soil moisture (21–33?msup3/sup?msup?3/sup), which occurred after the rainfall, the Rsup2/sup value reduced to 0.22 with larger RMSE. Results suggested that SM-proxy approach might work well for a limited range (drier part) of soil moisture content, and not for the wet soil.
机译:土壤水分会影响在大时空尺度上发生的许多环境过程。它对水文和气象活动以及气候预测和危害分析产生了深远的影响。星载传感器能够定期检索某个区域的表层土壤水分。长期以来,土壤潜热测量,基于反射的方法,微波测量和协同方法都是用于提供区域和全球范围内土壤湿度估算值的一些技术。由于土壤与农作物之间的动态相互作用,表层土壤水分的获取一直是一项挑战。本文简要概述了土壤水分检索技术的进展,并尝试了从高分辨率的卫星遥感数据生成地表土壤水分。光学遥感通过开发经验光谱植被指数,探索了地表反射率与土壤水分之间的线性关系。通过测量昼夜温度幅度出现了另一种估算土壤水分的方法,这与土壤的热导率和热容量密切相关。这些天来,高分辨率的辐射卫星测量的出现已经达到了更高的技术水平。微波遥感技术长期以来一直以合理的精度提供土壤表层水分的估算值。分别于2009年和2015年启动的SMOS(土壤水分和海洋盐度)和SMAP(被动和主动土壤水分)任务完全致力于在全球范围内以35?km和3-40?km的空间分辨率提供土壤湿度。 。但是,这些土壤水分产物以较高的空间分辨率提供了数据。 Sentinels的发射通过提供更高分辨率(〜10?m)的有源雷达和光学数据而提供了见识。 Sentinel-1是第一个具有6天重访时间的SAR(合成孔径雷达)星座,可提供双极化C波段数据。但是,没有可用的算法或方法来从双极化产生更精细的分辨率的地表土壤水分产物。 Sentinel-1数据已用于通过建模生成区域表层土壤湿度图像。新德里IARI农场的表层土壤湿度图也已被使用。 Dubois是一个裸露的地面模型,已经测试了其适合农场表面土壤水分获取的适合性。此外,2018年7月对Sentinel-1数据使用了基于雷达的土壤水分(SM)替代方法,并通过实际的表层土壤水分(重力)测量进行了验证。在土壤水分为4–16?m 3 ?m ?3 的范围内,结果具有令人满意的测定系数(R 2 )为0.45,RMSE为2.35,p值为0.005。但是,在降雨之后出现的较高土壤湿度范围(21–33?m 3 ?m ?3 )上,R 2

著录项

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