...
首页> 外文期刊>International journal of applied earth observation and geoinformation >Estimating land-surface temperature under clouds using MSG/SEVIRI observations
【24h】

Estimating land-surface temperature under clouds using MSG/SEVIRI observations

机译:使用MSG / SEVIRI观测值估算云层下的地表温度

获取原文
获取原文并翻译 | 示例

摘要

The retrieval of land-surface temperature (LST) from thermal infrared satellite sensor observations is known to suffer from cloud contamination. Hence few studies focus on LST retrieval under cloudy conditions. In this paper a temporal neighboring-pixel approach is presented that reconstructs the diurnal cycle of LST by exploiting the temporal domain offered by geo-stationary satellite observations (i.e. MSG/SEVIRI), and yields LST estimates even for overcast moments when satellite sensor can only record cloud-top temperatures. Contrasting to the neighboring pixel approach as presented by Jin and Dickinson (2002), our approach naturally satisfies all sorts of spatial homogeneity assumptions and is hence more suited for earth surfaces characterized by scattered land-use practices. Validation is performed against in situ measurements of infrared land-surface temperature obtained at two validation sites in Africa. Results vary and show a bias of -3.68K and a RMSE of 5.55K for the validation site in Kenya, while results obtained over the site in Burkina Faso are more encouraging with a bias of 0.37K and RMSE of 5.11 K. Error analysis reveals that uncertainty of the estimation of cloudy sky LST is attributed to errors in estimation of the underlying clear sky LST, all-sky global radiation, and inaccuracies inherent to the 'neighboring pixel' scheme itself. An error propagation model applied for the proposed temporal neighboring-pixel approach reveals that the absolute error of the obtained cloudy sky LST is less than 1.5K in the best case scenario, and the uncertainty increases linearly with the absolute error of clear sky LST. Despite this uncertainty, the proposed method is practical for retrieving the LST under a cloudy sky condition, and it is promising to reconstruct diurnal LST cycles from geo-stationary satellite observations.
机译:从热红外卫星传感器的观测结果中检索地表温度(LST)受到云污染的困扰。因此,很少有研究关注多云条件下的LST检索。在本文中,提出了一种时间邻近像素方法,该方法通过利用对地静止卫星观测(即MSG / SEVIRI)提供的时域来重建LST的昼夜周期,甚至在卫星传感器只能观测到阴天时也能得出LST估计值。记录云顶温度。与Jin和Dickinson(2002)提出的邻近像素方法相反,我们的方法自然满足各种空间同质性假设,因此更适合以零散的土地利用方式为特征的地球表面。验证是针对在非洲两个验证点获得的红外陆地表面温度的原位测量而进行的。结果各不相同,肯尼亚验证站点的偏差为-3.68K,RMSE为5.55K,而在布基纳法索站点获得的结果则更令人鼓舞,偏差为0.37K,RMSE为5.11K。误差分析表明多云天空LST估计的不确定性归因于基本晴朗天空LST的估计错误,全天空全球辐射以及“相邻像素”方案本身固有的不准确性。应用于所提出的时间相邻像素方法的误差传播模型表明,在最佳情况下,所获得的多云天空LST的绝对误差小于1.5K,并且不确定性随晴朗天空LST的绝对误差线性增加。尽管存在这种不确定性,但是所提出的方法对于在多云的天空条件下检索LST是实用的,并且有望从对地静止卫星观测中重建昼夜LST周期。

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