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AIRS near-real-time products and algorithms in support of operational numerical weather prediction

机译:支持业务数值天气预报的AIRS近实时产品和算法

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摘要

The assimilation of Atmospheric InfraRed Sounder, Advanced Microwave Sounding Unit-A, and Humidity Sounder for Brazil (AIRS/AMSU/HSB) data by Numerical Weather Prediction (NWP) centers is expected to result in improved forecasts. Specially tailored radiance and retrieval products derived from AIRS/AMSU/HSB data are being prepared for NWP centers. There are two types of products - thinned radiance data and full-resolution retrieval products of atmospheric and surface parameters. The radiances are thinned because of limitations in communication bandwidth and computational resources at NWP centers. There are two types of thinning: (1) spatial and spectral thinning and (2) data compression using principal component analysis (PCA). PCA is also used for quality control and for deriving the retrieval first guess used in the AIRS processing software. Results show that PCA is effective in estimating and filtering instrument noise. The PCA regression retrievals show layer mean temperature (1 km in troposphere, 3 km in stratosphere) accuracies of better than 1 K in most atmospheric regions from simulated AIRS data. Moisture errors are generally less than 15% in 2-km layers, and ozone errors are near 10% over approximately 5-km layers from simulation. The PCA and regression methodologies are described. The radiance products also include clear field-of-view (FOV) indicators. The residual cloud amount, based on simulated data, for FOVs estimated to be clear (free of clouds) is about 0.5% over ocean and 2.5% over land.
机译:预计通过数值天气预报(NWP)中心对大气红外测深仪,先进的微波测深仪-A和巴西湿度测深仪(AIRS / AMSU / HSB)数据进行同化,将改善预报。正在为NWP中心准备根据AIRS / AMSU / HSB数据量身定制的辐射和检索产品。产品有两种类型-稀薄的辐射数据和大气和表面参数的全分辨率检索产品。由于NWP中心的通信带宽和计算资源有限,辐射变薄。细化有两种类型:(1)空间和频谱细化以及(2)使用主成分分析(PCA)进行数据压缩。 PCA还用于质量控制和推导在AIRS处理软件中使用的检索第一猜测。结果表明,PCA可以有效地估计和过滤仪器噪声。 PCA回归检索显示,根据模拟的AIRS数据,在大多数大气区域中,层平均温度(对流层1 km,平流层3 km)的精度优于1K。根据模拟,在2 km的层中水分误差通常小于15%,在大约5 km的层中臭氧误差接近10%。描述了PCA和回归方法。辐射产品还包括清晰的视野(FOV)指示器。根据模拟数据,对于估计为晴朗(无云)的FOV,剩余云量约为海洋的0.5%和陆地的2.5%。

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