首页> 外文会议>IEEE International Geoscience and Remote Sensing Symposium >Neural Network Estimation of Atmospheric Pro?les Using AIRS/AMSU Observations: Improved Uncertainty Assessments
【24h】

Neural Network Estimation of Atmospheric Pro?les Using AIRS/AMSU Observations: Improved Uncertainty Assessments

机译:使用Airs / AMSU观测的大气预测Quality网络估算:改善不确定性评估

获取原文

摘要

Neural networks are developed for estimating the rms accuracy pro?les of individual infrared and microwave atmospheric temperature and humidity pro?le retrievals, thus potentially signi?cantly improving their assimilation into numerical weather prediction models. Currently most assimilation processes compute retrieval variances or error-covariance matrices as ensemble averages over diverse pro?les, or simply ?ag problematic retrievals. Although retrieval accuracies vary considerable from pro?le to pro?le because of clouds, even in cloud-free cases they can differ markedly. The ability to estimate accurately the variances of individual pro?les is one of the bene?ts of hyperspectral infrared and microwave sounding. The variance-estimating neural network was trained to estimate the logarithm of variance, which was then mapped to standard deviation. Examples utilizing AIRS/AMSU/HSB soundings [1] on the NASA Aqua satellite and those from a proposed hyperspectral microwave sounder [2], [3] show that when the predicted rms errors for a single altitude are strati?ed, they agree with the actual rms errors within perhaps ten percent of the dynamic range of the strati?cations thus signi?cantly improving the potential for accurately weighting soundings against model parameters during assimilation. Simple quality indicators using the new variance estimates also favorably compare to AIRS Level 2 Version 5 quality ?ags.
机译:开发了神经网络,用于估计RMS精度Pro?LES的单独红外和微波大气温度和湿度Pro?Le检索,因此可能导致其同化进入数值天气预报模型。目前,大多数同化过程将检索差异或错误协方差矩阵作为各种Pro?LES的集合平均值,或简单?AG有问题的检索。虽然检索准确性因云而从PRO获取差异很大,但甚至在无云的情况下,它们也可以显着不同。准确估计单个专业差异的能力是高光谱红外线和微波探测的BENE?TS之一。训练方差估计神经网络训练以估计方差的对数,然后映射到标准偏差。利用AIRS实例/ AMSU / HSB探测[1]在NASA的Aqua卫星和那些从所提议的高光谱微波探测仪[2],[3]示出的是,当针对单个高度预测的rms误差是分层?ED,他们同意因此,实际的RMS误差在Strati的动态范围的百分之十的百分之一张,因此在同化过程中,可以通过突出改善准确加权探测的可能性。使用新方差的简单质量指标估计也有利地比较AIRS 2级版本5质量?AGS。

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