Tools for Predicting Uncertainty and confidence Intervals in Radiometric Data Products
Datum
1999-12Autor
Mahan, J. R.
Sánchez, María Cristina
Ayala, Edwin A.
Priestley, Kory J.
Metadata
Zur LanganzeigeZusammenfassung
Spaced-based observations of atmospheric
energetics, such as those provided by NASA’s
Clouds and the Earth’s Radiant Energy System
(CERES), produce data products intended to be
shared with the larger scientific community and
merged with other complemental)’ data sets.
Meaningful fusion of complementary data requires
a well-founded common statistical basis for cited
precision and accuracy. A high—level numerical
model is available capable of predicting the
dynamic opto-electrothermal behavior of CERES
like radiometric channels. The paper reports use of
this model to explore the sensitivity of data
products to variations in individual optical, thermal
and electronic parameters. The optical/thermal
radiative part of the model is based on the Monte Carlos Ray-Trace (MCRT~ method in which millions
of rays are traced. Several hours of execution time
on a large computer are required to simulate a
single scan across the Earth’s surface, thus making
it impractical to run the simulation for every possible variation of each parameter. A key element
of the research involves an effort to determine the minimum number of simulations required to
produce statistically meaningful results.