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Cited article:

Multiple non-linear regression for microwaves characterization of dielectric materials

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An approach based on ANFIS and input selection procedure for microwave characterization of dielectric materials

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Predictors Generation by Partial Least Square Regression for microwave characterization of dielectric materials

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Improved measurement of complex permittivity using artificial neural networks with scaled inputs

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Support vector machines for measuring dielectric properties of materials

T. Hacib, Sławomir Wiak, H. Acikgoz, et al.
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Direct and Inverse Modeling of a Microwave Sensor Determining the Proportion of Fluids in a Pipeline

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Generation and use of optimised databases in microwave characterisation

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