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Linear and nonlinear trending and prediction for AVHRR time series dataThe variability of AVHRR calibration coefficient in time was analyzed using algorithms of linear and non-linear time series analysis. Specifically we have used the spline trend modeling, autoregressive process analysis, incremental neural network learning algorithm and redundancy functional testing. The analysis performed on available AVHRR data sets revealed that (1) the calibration data have nonlinear dependencies, (2) the calibration data depend strongly on the target temperature, (3) both calibration coefficients and the temperature time series can be modeled, in the first approximation, as autonomous dynamical systems, (4) the high frequency residuals of the analyzed data sets can be best modeled as an autoregressive process of the 10th degree. We have dealt with a nonlinear identification problem and the problem of noise filtering (data smoothing). The system identification and filtering are significant problems for AVHRR data sets. The algorithms outlined in this study can be used for the future EOS missions. Prediction and smoothing algorithms for time series of calibration data provide a functional characterization of the data. Those algorithms can be particularly useful when calibration data are incomplete or sparse.
Document ID
19950020970
Acquisition Source
Legacy CDMS
Document Type
Conference Paper
Authors
Smid, J.
(Morgan State Univ. Baltimore, MD, United States)
Volf, P.
(Ceskoslovenska Akademie Ved Prague., United States)
Slama, M.
(Ceskoslovenska Akademie Ved Prague., United States)
Palus, M.
(Santa Fe Inst. NM., United States)
Date Acquired
September 6, 2013
Publication Date
May 1, 1995
Publication Information
Publication: NASA. Goddard Space Flight Center, The 1995 Goddard Conference on Space Applications of Artificial Intelligence and Emerging Information Technologies
Subject Category
Documentation And Information Science
Accession Number
95N27391
Funding Number(s)
CONTRACT_GRANT: NAG5-2686
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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