首页> 外文期刊>Journal of Climate >Retrieval of Atmospheric and Cloud Property Anomalies and Their Trend from Temporally and Spatially Averaged Infrared Spectra Observed from Space
【24h】

Retrieval of Atmospheric and Cloud Property Anomalies and Their Trend from Temporally and Spatially Averaged Infrared Spectra Observed from Space

机译:从空间观测的时空平均红外光谱反演大气和云层性质异常及其趋势

获取原文
获取原文并翻译 | 示例
           

摘要

A surface, atmospheric, and cloud (fraction, height, optical thickness, and particle size) property anomaly retrieval from highly averaged longwave spectral radiances is simulated using 28 years of reanalysis. Instantaneous nadir-view spectral radiances observed from an instrument on a 90 inclination polar orbit are computed. Spectral radiance changes caused by surface, atmospheric, and cloud property perturbations are also computed and used for the retrieval. This study's objectives are 1) to investigate whether or not separating clear sky from cloudy sky reduces the retrieval error and 2) to estimate the error in a trend of retrieved properties. This simulation differs from earlier studies in that annual 10 latitude zonal cloud and atmospheric property anomalies defined as the deviation from 28-yr climatological means are retrieved instead of the difference of these properties from two time periods. The root-mean-square (RMS) difference of temperature and humidity anomalies retrieved from all-sky radiance anomalies is similar to the RMS difference derived from clear-sky radiance anomalies computed by removing clouds. This indicates that the cloud property anomaly retrieval error does not affect the retrieved temperature and humidity anomalies. When retrieval errors are nearly random, the error in the trend of retrieved properties is small. Approximately 30% of 10 latitude zones meet conditions that the true temperature and water vapor amount trends are within a 95% confidence interval of retrieved trends, and that the standard deviation of retrieved anomalies sigma(ret) is within 20% of the standard deviation of true anomalies sigma(n). If sigma(ret)/sigma(n) - 1 is within +/- 0.2, 91% of the true trends fall within the 95% confidence interval of the corresponding retrieved trend.
机译:使用28年的重新分析,模拟了从高度平均的长波光谱辐射度中检索到的表面,大气和云(分数,高度,光学厚度和粒径)属性异常。计算从仪器在90度倾斜极轨道上观察到的瞬时天底视图光谱辐射。还计算了由表面,大气和云属性扰动引起的光谱辐射率变化,并将其用于检索。这项研究的目的是:1)研究将晴空与多云的天空分开是否会减少取回误差,以及2)估计取回特性趋势中的误差。此模拟与早期研究的不同之处在于,它获取了年度10纬度纬向云和大气性质异常,定义为与28年气候平均值的偏差,而不是两个时期内这些性质的差异。从全天辐射异常中检索到的温度和湿度异常的均方根(RMS)差异类似于从去除云计算得出的晴空辐射异常中得出的RMS差异。这表明云属性异常检索错误不影响检索到的温度和湿度异常。当检索误差几乎是随机的时,检索特性趋势的误差很小。 10个纬度区中约30%满足以下条件:真实温度和水汽量趋势在所检索趋势的95%置信区间内,并且所检索到的异常sigma(ret)的标准偏差在20%的标准偏差之内。真实异常sigma(n)。如果sigma(ret)/ sigma(n)-1在+/- 0.2范围内,则91%的真实趋势落在相应检索趋势的95%置信区间内。

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