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Daniel Rivero
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Journal Articles
Using genetic algorithms to improve support vector regression in the analysis of atomic spectra of lubricant oils
Available to PurchaseCarlos Fernandez-Lozano, Francisco Cedrón, Daniel Rivero, Julian Dorado, José Manuel Andrade-Garda, Alejandro Pazos, Marcos Gestal
Journal:
Engineering Computations
Engineering Computations (2016) 33 (4): 995–1005.
Published: 13 June 2016
