首页> 外文会议>2017 IEEE International Geoscience and Remote Sensing Symposium >Fusing microwave and optical satellite observations for high resolution soil moisture data products
【24h】

Fusing microwave and optical satellite observations for high resolution soil moisture data products

机译:融合微波和光学卫星观测以获取高分辨率的土壤水分数据产品

获取原文
获取原文并翻译 | 示例

摘要

With the loss of the L-band radar, the NASA SMAP satellite lost the capability to directly provide high resolution global soil moisture data products after July 7th, 2015. However, the SMAP L-band radiometer has been successfully and continuously providing high quality coarse resolution observations with the best RFI mitigation since April 2015. These coarse resolution soil moisture observations could be downscaled to finer resolution using finer scale observations of soil moisture sensitive quantities from existing satellite sensors. In the past decade, several algorithms have been introduced to downscale passive microwave soil moisture observations. Most of these methods exploit the soil moisture information from optical sensing of land surface temperature and vegetation dynamics while others use active microwave (radar) observations. In this study, alternative algorithms are intercompared in order to find out the most reliable algorithm that could be implemented for routine or operational product generation. In this paper, coarse scale satellite data are from NASA SMAP radiometer and fine scale satellite data are backscatter from SMAP radar, land surface temperature (LST) and vegetation index from NOAA GOES, and AMSR2 Ka band observations for the warm seasons in 2015 and 2016. Results from three downscaling algorithms were analyzed. They were the NASA SMAP Active-Passive product algorithm, a simple LST regression algorithm, and a regression tree algorithm. Four sets of in situ soil moisture measurement data were collected and processed from Millbrook, NY, Walnut Gulch, AZ, Tibetan Plateau, China, and Yanco, Australia, respectively. Preliminary results of this inter-comparison study are reported.
机译:随着L波段雷达的丢失,NASA SMAP卫星在2015年7月7日之后失去了直接提供高分辨率的全球土壤湿度数据产品的能力。但是,SMAP L波段辐射计已成功并持续提供高质量的粗自2015年4月以来,RFI缓解效果最好的高分辨率观测结果。可以使用现有卫星传感器对土壤湿度敏感量的更精细观测结果,将这些粗分辨率的土壤湿度观测结果缩减为更高分辨率。在过去的十年中,引入了几种算法来降低被动微波土壤湿度的观测值。这些方法中的大多数利用土地表面温度和植被动态的光学传感来获取土壤水分信息,而其他方法则使用主动微波(雷达)观测。在这项研究中,将替代算法进行比较,以便找出可以用于常规或可操作产品生成的最可靠算法。本文中,粗尺度卫星数据来自NASA SMAP辐射计,细尺度卫星数据来自SMAP雷达的反向散射,地表温度(LST)和NOAA GOES的植被指数,以及2015和2016年暖季的AMSR2 Ka波段观测分析了三种缩减算法的结果。它们是NASA SMAP主动-被动乘积算法,简单的LST回归算法和回归树算法。分别从纽约州米尔布鲁克,亚利桑那州核桃谷,中国青藏高原和澳大利亚Australia科收集并处理了四组原位土壤水分测量数据。报告了这项比较研究的初步结果。

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