首页> 外文会议>Conference on Remote Sensing of Clouds and the Atmosphere >Evaluating layer precipitable water and lifted index from SEVIRI
【24h】

Evaluating layer precipitable water and lifted index from SEVIRI

机译:评估层可沉淀水和Seviri的抬起指数

获取原文

摘要

The Spinning Enhanced Visible and Infrared Imager (SEVIRI) instrument, onboard the Meteosat Second Generation (MSG) is a radiometer with 8 infrared (IR) spectral bands. IR retrievals of Layer Precipitable Water (LPW) and Lifted Index (LI) allow to identify potential severe weather when the system is still in a preconvective state. Statistical retrieval is computationally fast and it is a requirement for the SAFNWC PGEs. The study presented here, is part of an attempt to improve the algorithm developed in the SAFNWC framework to calculate Layer Precipitable Water and Stability Analysis Imagery (SAI) from SEVIRI radiances. The first codified algorithms (in the SAFNWC version 0.1 package) are a statistical retrieval where neural networks were trained with the available data (simulated radiances using numerical profiles from 60L-SD and RTTOV-7). These statistical retrievals have been evaluated against co-located products obtained from numerical weather analysis and radiosonde profiles, as well as MODIS products obtained in the areas scanned at the same time. The availability of real SEVIRI radiances allows us to compare real SEVIRI radiances with simulated radiances and to detect systematic bias among both datasets. In this study, first the retrieved LPW and LI will be evaluated, and the error sources will be identified. And later, the method for correcting the detected bias, between real and simulated radiances, will be analysed, and the improvements will be compared to calculated ("clear") values from the nearest (in space and time) ECMWF profiles and similar MODIS products.
机译:纺纱增强的可见和红外成像仪(Seviri)仪器,车载Meteosat第二代(MSG)是具有8个红外(IR)光谱带的辐射计。 IR检索层可降水水(LPW)和升降指数(LI)允许在系统仍处于预摄取状态时识别潜在的恶劣天气。统计检索是快速的计算方式,这是SAFNWC钢琴的要求。此处提出的研究是尝试改进SafnWC框架中开发的算法的一部分,以计算Seviri Aradiances的层降低水和稳定性分析图像(SAI)。第一个编码算法(在SAFNWC版本0.1包中)是统计检索,其中通过可用数据训练神经网络(使用来自60L-SD和RTTOV-7的数值轮廓的模拟辐射)。已经评估了从数值天气分析和无线电探测器型材中获得的共同定位产品进行评估,以及在同一时间扫描的区域中获得的MODIS产品。 Real Seviri Radiances的可用性使我们能够将真实的Seviri Aradiance与模拟的辐射进行比较并检测两个数据集之间的系统偏差。在本研究中,首先将评估检索到的LPW和LI,并将识别出误差源。然后,将分析用于校正检测到的偏置的方法,在实际和模拟的广域之间进行分析,并将改进与最近的(空间和时间)ECMWF配置文件和类似的MODIS产品计算(“清除”)值和类似的MODIS产品。

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