The Filling of Gaps in Geophysical Time Series by Artificial Neural Networks
Author
Dergachev, Valentin A.Gorban, A. N.
Rossiev, A. A.
Karimova, L. M.
Kuandykov, E. V.
Makarenko, G. G.
Steier, Peter
Issue Date
2001-01-01Keywords
neural networksself similarity
time series analysis
cosmogenic elements
calibration
mathematical methods
mathematical models
statistical analysis
accuracy
data processing
C 14
carbon
isotopes
radioactive isotopes
absolute age
Metadata
Show full item recordCitation
Dergachev, V. A., Gorban, A. N., Rossiev, A. A., Karimova, L. M., Kuandykov, E. B., Makarenko, N. G., & Steier, P. (2001). The filling of gaps in geophysical time series by artificial neural networks. Radiocarbon, 43(2A), 365-371.Journal
RadiocarbonDescription
From the 17th International Radiocarbon Conference held in Jerusalem, Israel, June 18-23, 2000.Additional Links
http://radiocarbon.webhost.uits.arizona.edu/Abstract
Nowadays, there is a large number of time series of natural data to study geophysical and astrophysical phenomena and their characteristics. However, short length and data gaps pose a substantial problem for obtaining results on properties of the underlying physical phenomena with existing algorithms. Using only an equidistant subset of the data with coarse steps leads to loss of information. We present a method to recover missing data in time series. The approach is based on modeling the time series with manifolds of small dimension, and it is implemented with the help of neural networks. We applied this approach to real data on cosmogenic isotopes, demonstrating that it could successfully repair gaps where data was purposely left out. Multi-fractal analysis was applied to a true radiocarbon time series after recovering missing data.Type
Proceedingstext
Language
enISSN
0033-8222ae974a485f413a2113503eed53cd6c53
10.1017/S0033822200038224