A statistical modeling framework for characterising uncertainty in large datasets: application to ocean colour
Land, PE; Bailey, TC; Taberner, M; et al.Pardo, S; Sathyendranath, S; Nejabati Zenouz, K; Brammall, V; Shutler, JD; Quartley, G
Date: 2 May 2018
Journal
Remote Sensing
Publisher
MDPI
Publisher DOI
Abstract
Uncertainty estimation is crucial to establishing confidence in any data analysis, and this
is especially true for Essential Climate Variables, including ocean colour. Methods for deriving
uncertainty vary greatly across data types, so a generic statistics-based approach applicable to
multiple data types is an advantage to simplify ...
Uncertainty estimation is crucial to establishing confidence in any data analysis, and this
is especially true for Essential Climate Variables, including ocean colour. Methods for deriving
uncertainty vary greatly across data types, so a generic statistics-based approach applicable to
multiple data types is an advantage to simplify the use and understanding of uncertainty data.
Progress towards rigorous uncertainty analysis of ocean colour has been slow, in part because of
the complexity of ocean colour processing. Here, we present a general approach to uncertainty
characterisation, using a database of satellite-in situ matchups to generate a statistical model of
satellite uncertainty as a function of its contributing variables. With an example NASA MODIS-Aqua
chlorophyll-a matchups database mostly covering the north Atlantic, we demonstrate a model that
explains 67% of the squared error in log(chlorophyll-a) as a potentially correctable bias, with the
remaining uncertainty being characterised as standard deviation and standard error at each pixel.
The method is quite general, depending only on the existence of a suitable database of matchups or
reference values, and can be applied to other sensors and data types such as other satellite observed
Essential Climate Variables, empirical algorithms derived from in situ data, or even model data.
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