TITLE

Analysis of geomagnetic field reversal pattern by neural network

AUTHOR(S)
Kondo, Shin-ichiro
PUB. DATE
June 2000
SOURCE
AIP Conference Proceedings;2000, Vol. 519 Issue 1, p241
SOURCE TYPE
Academic Journal
DOC. TYPE
Article
ABSTRACT
© 2000 American Institute of Physics.
ACCESSION #
5665056

 

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