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Neural network models for infrared spectrum interpretation

โœ Scribed by Munk, Morton E. ;Madison, Mark S. ;Robb, Ernest W.


Publisher
Springer-Verlag
Year
1991
Weight
559 KB
Volume
104
Category
Article
ISSN
0344-838X

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