Authors
Esteban García-Cuesta, Inés M Galván, Antonio J de Castro
Publication date
2008/2/1
Journal
Engineering Applications of Artificial Intelligence
Volume
21
Issue
1
Pages
26-34
Publisher
Pergamon
Description
In this paper, a combustion temperature retrieval approximation for high-resolution infrared ground-based measurements has been developed based on a multilayer perceptron (MLP) technique. The introduction of a selection subset of features is mandatory due to the problems related to the high dimensionality data and the worse performance of MLPs with this high input dimensionality. Principal component analysis is used to reduce the input data dimensionality, selecting the physically important features in order to improve MLP performance. The use of a priori physical information over other methods in the chosen feature's phase has been tested and has appeared jointly with the MLP technique as a good alternative for this problem.
Total citations
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Scholar articles
E García-Cuesta, IM Galván, AJ de Castro - Engineering Applications of Artificial Intelligence, 2008