首页> 外文期刊>GIScience & remote sensing >Microwave-based vegetation descriptors in the parameterization of water cloud model at L-band for soil moisture retrieval over croplands
【24h】

Microwave-based vegetation descriptors in the parameterization of water cloud model at L-band for soil moisture retrieval over croplands

机译:田间土壤水分检索水云模型参数化的微波植被描述符

获取原文
获取原文并翻译 | 示例

摘要

Synthetic aperture radar (SAR) data have significant potential for soil moisture monitoring because of their high spatial resolution and independence from cloud coverage. However, it is challenging to retrieve soil moisture from SAR data over vegetated areas, as vegetation significantly affects backscattered radar signals. Auxiliary vegetation information obtained from optical images, such as the normalized difference vegetation index (NDVI) and the leaf area index (LAI), is commonly used to correct vegetation effects. However, it is generally difficult to obtain SAR and optical data in the same area simultaneously, because of the discrepancies in satellite coverage and the effects of cloud coverage. This study focuses on whether vegetation descriptors obtained directly from radar data at L-band can adequately parameterize the semi-empirical backscattering water cloud model (WCM) to support soil moisture retrieval. Four vegetation descriptors (three based on radar images and one based on optical images), were chosen to assess the parameterization and calibration of the WCM and the retrieval accuracy of soil moisture. The results showed that the vegetation descriptor of backscattering at VH polarization outperformed the other three vegetation descriptors (NDVI-derived vegetation water content, radar vegetation index, and the ratio of cross-polarization to VV polarization) in the investigation of four crop types (canola, corn, bean, and wheat) based on the Soil Moisture Active Passive Validation Experiment in 2012 (SMAPVEX12) in Canada. For the vegetation descriptor of VH, the overall accuracy of retrieved soil moisture was promising by separating into two growth stages, with unbiased root mean squared errors of 0.056, 0.053, 0.098, and 0.079 cm(3)/cm(3) for canola, corn, bean, and wheat, respectively. The results also confirmed that variations in vegetation growth affect the accuracy of soil moisture retrieval. In addition, the retrieval performance was undermined when the vegetation changed dramatically, leading to variations or uncertainty in the vegetation structure. This study provides new insights into soil moisture retrieval methods with active L-band microwave observations.
机译:合成孔径雷达(SAR)数据由于其高空间分辨率和云覆盖范围的独立性而具有显着的土壤湿度监测潜力。然而,由于植被显着影响反向散射雷达信号,因此挑战从植被区域从SAR数据中检索来自SAR数据。从光学图像获得的辅助植被信息,例如归一化差异植被指数(NDVI)和叶区域指数(LAI),通常用于纠正植被效应。然而,由于卫星覆盖范围的差异和云覆盖的影响,通常难以同时在同一区域中获得SAR和光学数据。本研究重点介绍是否直接从L波段获得的雷达数据获得的植被描述符可以充分参数化半经验反向散射水云模型(WCM)以支持土壤水分检索。选择了四个植被描述符(基于雷达图像和基于光学图像的三个),以评估WCM的参数化和校准和土壤水分的检索精度。结果表明,在研究四种作物类型的研究中,VH偏振的反向散射的植被描述符超越了其他三种植被描述符(NDVI衍生的植被水含量,雷达植被指数,与vV偏振的比率)(Catola基于2012年(Smapvex12)在加拿大的土壤湿度无源被动验证实验,玉米,豆类和小麦。对于VH的植被描述符,通过分离成两个生长阶段,检索到的土壤水分的总体精度是有前途的,对于油菜,具有0.056,0.053,0.098和0.079厘米(3)/ cm(3)的无偏异的根部平均平均误差。玉米,豆和小麦分别。结果还证实植被生长的变化影响了土壤水分检索的准确性。此外,当植被发生巨大变化时,检索性能被破坏,导致植被结构中的变化或不确定性。本研究提供了具有有源L波段微波观测的土壤水分检索方法的新见解。

著录项

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