首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Optimal estimation of sea surface temperature from split-window observations
【24h】

Optimal estimation of sea surface temperature from split-window observations

机译:从分窗观测中最佳估计海面温度

获取原文
获取原文并翻译 | 示例
       

摘要

Optimal estimation (OE) improves sea surface temperature (SST) estimated from satellite infrared imagery in the "split-window", in comparison to SST retrieved using the usual multi-channel (MCSST) or non-linear (NLSST) estimators. This is demonstrated using three months of observations of the Advanced Very High Resolution Radiometer (AVHRR) on the first Meteorological Operational satellite (Metop-A), matched in time and space to drifter SSTs collected on the global telecommunications system. There are 32,175 matches. The prior for the OE is forecast atmospheric fields from the Meteo-France global numerical weather prediction system (ARPEGE), the forward model is RTTOV8.7, and a reduced state vector comprising SST and total column water vapour (TCWV) is used. Operational NLSST coefficients give mean and standard deviation (SD) of the difference between satellite and drifter SSTs of 0.00 and 0.72 K. The "best possible" NLSST and MCSST coefficients, empirically regressed on the data themselves, give zero mean difference and SDs of 0.66 K and 0.73 K respectively. Significant contributions to the global SD arise from regional systematic errors (biases) of several tenths of kelvin in the NLSST. With no bias corrections to either prior fields or forward model, the SSTs retrieved by OE minus drifter SSTs have mean and SD of -0.16 and 0.49 K respectively. The reduction in SD below the "best possible" regression results shows that OE deals with structural limitations of the NLSST and MCSST algorithms. Using simple empirical bias corrections to improve the OE, retrieved minus drifter SSTs are obtained with mean and SD of -0.06 and 0.44 K respectively. Regional biases are greatly reduced, such that the absolute bias is less than 0.1 K in 61 % of 10 degrees-latitude by 30 degrees-longitude cells. OE also allows a statistic of the agreement between modelled and measured brightness temperatures to be calculated. We show that this measure is more efficient than the current system of confidence levels at identifying reliable retrievals, and that the best 75% of satellite SSTs by this measure have negligible bias and retrieval error of order 0.25 K. (C) 2007 Elsevier Inc. All rights reserved.
机译:与使用常规多通道(MCSST)或非线性(NLSST)估算器检索到的SST相比,最佳估算(OE)改进了从“分割窗口”中的卫星红外图像估算的海面温度(SST)。这是通过对第一颗气象业务卫星(Metop-A)进行的超高分辨率高分辨率辐射计(AVHRR)的三个月观测得到证明的,该卫星在时间和空间上与全球电信系统上收集的漂移SST相匹配。有32,175个匹配项。 OE的先验条件是法国气象局全球数值天气预报系统(ARPEGE)预测的大气场,正向模型为RTTOV8.7,并使用包含SST和总塔水蒸气(TCWV)的简化状态向量。可操作的NLSST系数给出卫星和漂移SST之间的差异的平均值和标准偏差(SD),分别为0.00和0.72K。“最佳” NLSST和MCSST系数根据数据本身进行经验回归,得出零均值差,SD为0.66 K和0.73K。 NLSST中十分之几的开尔文的区域系统误差(偏差)对全球可持续发展做出了重要贡献。在没有对先验场或前向模型进行偏差校正的情况下,OE减去漂移器SST检索到的SST的均值和SD分别为-0.16和0.49K。 SD降低到“最佳”回归结果以下表明OE处理了NLSST和MCSST算法的结构限制。使用简单的经验偏差校正来改善OE,可以得到均值和SD分别为-0.06和0.44 K的检索到的负漂移SST。大大减少了区域偏差,因此在30度经度的单元中,在10%纬度的61%中,绝对偏差小于0.1K。 OE还允许计算模型亮度和测量亮度温度之间一致性的统计数据。我们证明,在确定可靠的检索结果方面,该措施比当前的置信度系统更有效,并且通过此措施,最好的75%的卫星SST具有可忽略的偏差和0.25 K的检索误差。(C)2007 Elsevier Inc.版权所有。

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