Abstract

The new generation of atmospheric composition sensors such as TROPOMI is capable of providing spectra of high spatial and spectral resolution. To process this vast amount of spectral information, fast radiative transfer models (RTMs) are required. In this regard, we analyzed the efficiency of two acceleration techniques based on the principal component analysis (PCA) for simulating the Hartley-Huggins band spectra. In the first one, the PCA is used to map the data set of optical properties of the atmosphere to a lower-dimensional subspace, in which the correction function for an approximate but fast RTM is derived. The second technique is based on the dimensionality reduction of the data set of spectral radiances. Once the empirical orthogonal functions are found, the whole spectrum can be reconstructed by performing radiative transfer computations only for a specific subset of spectral points. We considered a clear-sky atmosphere where the optical properties are defined by Rayleigh scattering and trace gas absorption. Clouds can be integrated into the model as Lambertian reflectors. High computational performance is achieved by combining both techniques without losing accuracy. We found that for the Hartley-Huggins band, the combined use of these techniques yields an accuracy better than 0.05% while the speedup factor is about 20. This innovative combination of both PCA-based techniques can be applied in future works as an efficient approach for simulating the spectral radiances in other spectral regions.

Highlights

  • The new generation of atmospheric composition sensors such as the TROPospheric OzoneMonitoring Instrument (TROPOMI) delivers a great amount of data

  • We investigate the efficiency of the dimensionality reduction technique of optical parameters in the Hartley-Huggins band and improve upon the methods to maximize the advantages of the data reduction concept

  • By using principal component analysis (PCA), we find an M-dimensional subspace spanned by a set of linear independent vectors {qk }kM=1 such that the centered data xw − xlie mainly on this subspace, i.e., M

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Summary

Introduction

The new generation of atmospheric composition sensors such as the TROPospheric Ozone. The key component of retrieval algorithms is the radiative transfer models (RTMs), which convert optical parameters of the atmosphere (i.e., input space) into spectral radiances (i.e., output space). The input space reduction technique was proposed by Natraj et al [6], and its main idea is to reproduce the residual between the accurate and the approximate RTMs in the reduced space of optical parameters. In the output space reduction technique, the principal component analysis (PCA) is used to map the spectral radiances into a lower-dimensional subspace and to obtain a set of empirical orthogonal functions.

Radiative Transfer Models
Correction Function in the Reduced Input Space
PCA Description
Reconstruction of the Full Resolution Spectrum
Spectral Sampling
Results
Principal Component Analysis of the Data Set of Spectral Radiances
Combined Use of Input and Output Space Reduction Techniques
Summary
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