Abstract

Abstract. An idealized synthetic database loosely resembling 3-channel passive microwave observations of precipitation against a variable background is employed to examine the performance of a conventional Bayesian retrieval algorithm. For this dataset, algorithm performance is found to be poor owing to an irreconcilable conflict between the need to find matches in the dependent database versus the need to exclude inappropriate matches. It is argued that the likelihood of such conflicts increases sharply with the dimensionality of the observation space of real satellite sensors, which may utilize 9 to 13 channels to retrieve precipitation, for example. An objective method is described for distilling the relevant information content from N real channels into a much smaller number (M) of pseudochannels while also regularizing the background (geophysical plus instrument) noise component. The pseudochannels are linear combinations of the original N channels obtained via a two-stage principal component analysis of the dependent dataset. Bayesian retrievals based on a single pseudochannel applied to the independent dataset yield striking improvements in overall performance. The differences between the conventional Bayesian retrieval and reduced-dimensional Bayesian retrieval suggest that a major potential problem with conventional multichannel retrievals – whether Bayesian or not – lies in the common but often inappropriate assumption of diagonal error covariance. The dimensional reduction technique described herein avoids this problem by, in effect, recasting the retrieval problem in a coordinate system in which the desired covariance is lower-dimensional, diagonal, and unit magnitude.

Highlights

  • We begin with a straightforward retrieval method conceptually similar to that currently used for TMI and envisaged as well for the future Global Precipitation Measurement Microwave Imager (GMI)

  • Starting with an idealized synthetic database that loosely resembles 3-channel passive microwave observations of precipitation against a highly variable background, we examined the performance of a conventional Bayesian retrieval algorithm that searched for matches in the full threedimensional channel space

  • First we showed that even when the algorithm is applied to the dependent (TRAIN) data, performance suffers when the match criterion is too loose

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Summary

Bayesian estimation

Bayesian retrieval algTorhitehmCs pruyroposrtptho eobrteain estimates of an environmental variable (e.g., rain rate) via application of Published by Copernicus Publications on behalf of the European Geosciences Union. With only one known exception (Chiu and Petty, 2006), the prior joint and marginal PDFs are represented not as the continuous functions implied by Eq (1) but rather via a large database of candidate solutions with associated observed or modeled multichannel radiances. This variation has been aptly called a Bayesian Monte Carlo method (L’Ecuyer and Stephens, 2002), that more precise terminology does not seem to have achieved wider usage. For the conceptual basis and practical implementation of several Bayesian cloud and/or precipitation retrieval schemes, the reader is referred to Evans et al (1995), Kummerow et al (1996), Marzano et al (1999) and L’Ecuyer and Stephens (2002)

Practical limitations
Objectives
Synthetic database
Method
Application to TRAIN data
Application to VAL data
Preliminary assessment
General goals
Stage 1
Stage 2
Bayesian retrieval in pseudochannel space
Findings
Conclusions and discussion
Full Text
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