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A Machine Learning approach for the validation and optimization of permittivity mixing rules for binary liquids

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Monteagudo Honrubia, Miguel
Herraiz Martínez, Francisco Javier
Matanza Domingo, Javier
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info:eu-repo/semantics/draft
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Abstract
 
 
This paper presents the application of Support Vector Regressor models trained with glycerin-water mixture signals from a Dielectric Resonator sensor. Each signal is labeled with a concentration considered. The performance of these models indicates which mixing rule fits the most with experimental permittivity values. Some modifications of these formulas are validated to acquire better estimations.
 
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http://hdl.handle.net/11531/87264
A Machine Learning approach for the validation and optimization of permittivity mixing rules for binary liquids
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