Improvements of satellite observations through data merging: status and
challenges
Abstract
Satellite-derived data provide useful information about the rationale of
Earth’s functioning. While satellite remote sensing has been regarded as
the almost only means for observing the entire Earth in near-real-time,
errors in satellite observations have limited their direct usage in
applications. Merging two or more data sources has been regarded as a
simple but effective way to decrease such errors (e. g. minimizing mean
square errors between the observation and truth). The principle of data
merging is to combine independent information of each data source,
improving over each individual product by canceling out random errors,
with effectiveness by the degree of independence over the data sources.
In the case of linearly combining data, qualitative assessments of the
error (i.e. error variance/covariance and data-truth correlation) are
essential to calculate the optimal weight for each candidate product.
However, such reference “truth” is rarely available in practical. To
overcome this limitation, a triple collocation (TC) technique is often
used to estimate data error by using a data triplet without the truth.
Despite the usefulness and simplicity of the TC-based error estimation,
the inherent assumptions (e.g. error independence) in the approach tend
to induce sub-optimal results in the error estimation and/or data
combination. There have been also further efforts to address the
limitation such as quadruple collocation (QC) using a data quadruple to
partially estimate error cross-correlation and single/double
instrumental variable methods to lessen the difficulty in obtaining
multiple datasets. In this presentation, we review the status of error
estimation and data merging approaches based on the collocation methods
and then present challenges to be addressed through future research.