首页> 外文会议>SPIE Conference on Microwave Remote Sensing of the Atmosphere and Environment >Estimation of global snow cover using passive microwave data
【24h】

Estimation of global snow cover using passive microwave data

机译:使用被动微波数据估计全球雪覆盖

获取原文

摘要

This paper describes an approach to estimate global snow cover using satellite passive microwave data. Snow cover is detected using the high frequency scattering signal from natural microwave radiation, which is observed by passive microwave instruments. Developed for the retrieval of global snow depth and snow water equivalent using Advanced Microwave Scanning Radiometer EOS (AMSR-E), the algorithm uses passive microwave radiation along with a microwave emission model and a snow grain growth model to estimate snow depth. The microwave emission model is based on the Dense Media Radiative Transfer (DMRT) model that uses the quasi-crystalline approach and sticky particle theory to predict the brightness temperature from a single layered snowpack. The grain growth model is a generic single layer model based on an empirical approach to predict snow grain size evolution with time. Gridding to the 25 km EASE-grid projection, a daily record of Special Sensor Microwave Imager (SSM/I) snow depth estimates was generated for December 2000 to March 2001. The estimates are tested using ground measurements from two continental-scale river catchments (Nelson River and the Ob River in Russia). This regional-scale testing of the algorithm shows that for passive microwave estimates, the average daily snow depth retrieval standard error between estimated and measured snow depths ranges from 0 cm to 40 cm of point observations. Bias characteristics are different for each basin. A fraction of the error is related to uncertainties about the grain growth initialization states and uncertainties about grain size changes through the winter season that directly affect the parameterization of the snow depth estimation in the DMRT model. Also, the algorithm does not include a correction for forest cover and this effect is clearly observed in the retrieval. Finally, error is also related to scale differences between in situ ground measurements and area-integrated satellite estimates. With AMSR-E data, improvements to snow depth and water equivalent estimates are expected since AMSR-E will have twice the spatial resolution of the SSM/I and will be able to characterize better the subnivean snow environment from an expanded range of microwave frequencies.
机译:本文介绍了一种使用卫星被动微波数据估计全球雪覆盖的方法。使用来自自然微波辐射的高频散射信号检测雪盖,由无源微波仪器观察。使用先进的微波扫描辐射计EOS(AMSR-E)的全球雪深度和雪水等同于雪水的检索,该算法使用被动微波辐射以及微波发射模型和雪谷生长模型来估算雪深。微波发射模型基于密集介质辐射转移(DMRT)模型,其使用准晶体方法和粘性粒子理论来预测单层积雪的亮度温度。谷物生长模型是一种基于跨越时间的经验方法的通用单层模型。 Gridding到25公里的缓解电网投影,每日特殊传感器微波成像器(SSM / I)雪深度估计的日常记录是在2001年12月到2001年3月产生的。使用来自两个大陆河流集水区的地面测量来测试估计数(尼尔森河和俄罗斯的ob河)。该算法的这种区域规模测试表明,对于被动微波估计,估计和测量的雪深度之间的平均每日雪深度检索标准误差范围为0厘米至40厘米的点观察。每个盆地的偏差特性都不同。误差的一部分与关于谷物生长初始化状态的不确定性和关于谷物尺寸的不确定性通过冬季改变的冬季,即直接影响DMRT模型中的雪深度估计的参数化。此外,该算法不包括森林覆盖的校正,并且在检索中清楚地观察到这种效果。最后,误差也与原位地测量和面积集成卫星估计之间的比例差异有关。通过AMSR-E数据,预计AMSR-E将有两倍于SSM / I的空间分辨率,预计对雪深度和水当量估计的改进,并且能够从扩展范围的微波频率进行表征序列雪环境。

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