首页> 外文期刊>Atmospheric Measurement Techniques Discussions >Application of spectral analysis techniques to the intercomparison of aerosol data – Part 4: Synthesized analysis of multisensor satellite and ground-based AOD measurements using combined maximum covariance analysis
【24h】

Application of spectral analysis techniques to the intercomparison of aerosol data – Part 4: Synthesized analysis of multisensor satellite and ground-based AOD measurements using combined maximum covariance analysis

机译:光谱分析技术在气溶胶数据的依照上的应用 - 第4部分:使用组合最大协方差分析的多传感器卫星和地面AOD测量的合成分析

获取原文
获取外文期刊封面目录资料

摘要

In this paper, we introduce the usage of a newly developed spectral decomposition technique – combined maximum covariance analysis (CMCA) – in the spatiotemporal comparison of four satellite data sets and ground-based observations of aerosol optical depth (AOD). This technique is based on commonly used principal component analysis (PCA) and maximum covariance analysis (MCA). By decomposing the cross-covariance matrix between the joint satellite data field and Aerosol Robotic Network (AERONET) station data, both parallel comparison across different satellite data sets and the evaluation of the satellite data against the AERONET measurements are simultaneously realized. We show that this new method not only confirms the seasonal and interannual variability of aerosol optical depth, aerosol-source regions and events represented by different satellite data sets, but also identifies the strengths and weaknesses of each data set in capturing the variability associated with sources, events or aerosol types. Furthermore, by examining the spread of the spatial modes of different satellite fields, regions with the largest uncertainties in aerosol observation are identified. We also present two regional case studies that respectively demonstrate the capability of the CMCA technique in assessing the representation of an extreme event in different data sets, and in evaluating the performance of different data sets on seasonal and interannual timescales. Global results indicate that different data sets agree qualitatively for major aerosol-source regions. Discrepancies are mostly found over the Sahel, India, eastern and southeastern Asia. Results for eastern Europe suggest that the intense wildfire event in Russia during summer 2010 was less well-represented by SeaWiFS (Sea-viewing Wide Field-of-view Sensor) and OMI (Ozone Monitoring Instrument), which might be due to misclassification of smoke plumes as clouds. Analysis for the Indian subcontinent shows that here SeaWiFS agrees best with AERONET in terms of seasonality for both the Gangetic Basin and southern India, while on interannual timescales it has the poorest agreement.
机译:在本文中,我们介绍了一种新开发的光谱分解技术 - 组合最大协方差分析(CMCA) - 在四颗卫星数据集的时空比较和气溶胶光学深度(AOD)的地面观察中。该技术基于常用的主成分分析(PCA)和最大协方差分析(MCA)。通过分解联合卫星数据字段和气溶胶机器人网络(AEROONET)站数据之间的交叉协方差矩阵,同时实现了不同卫星数据集的并联比较以及针对机动车测量的卫星数据的评估。我们表明,这种新方法不仅确认了雾化光学深度,气溶胶源区和不同卫星数据集代表的事件的季节性和续际变化,而且还识别了在捕获与源相关的可变性时所设定的每个数据的强度和弱点,事件或气溶胶类型。此外,通过检查不同卫星领域的空间模式的扩散,鉴定了具有最大的气溶胶观察中不确定性的区域。我们还提出了两个区域案例研究,分别展示了CMCA技术在评估不同数据集中的极端事件的代表方面的能力,以及评估不同数据集在季节性和际时间尺度上的性能。全球结果表明,不同的数据集同意主要的气溶胶源区。差异大多是在萨赫勒,印度,东南亚和东南亚。东欧的结果表明,2010年夏季俄罗斯的激烈野火活动不太良好地由海盗(海域视野传感器)和OMI(臭氧监测仪)表示,这可能是由于烟雾的错误分类羽毛作为云。对印度次大陆的分析表明,这里的Seawifs在甘露池和印度南部的季节性方面与Aeronet同意,而在际时间尺度上,它具有最糟糕的协议。

著录项

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