0000000000129277

AUTHOR

Chiara Cevoli

showing 1 related works from this author

Use of electronic nose to determine defect percentage in oils. Comparison with sensory panel results

2010

Abstract An electronic nose based on an array of 6 metal oxide semiconductor sensors was used, jointly with linear discriminant analysis (LDA) and artificial neural network (ANN) method, to classify oils containing the five typical virgin olive oil (VOO) sensory defects (fusty, mouldy, muddy, rancid and winey). For this purpose, these defects, available as single standards of the International Olive Council, were added to refined sunflower oil. According to the LDA models and the ANN method, the defected samples were correctly classified. On the other hand, the electronic nose data was used to predict the defect percentage added to sunflower oil using multiple linear regression models. All …

food.ingredientOLIVE OILfoodOxide semiconductorSensory defectLinear regressionMaterials ChemistryStatistical analysisElectrical and Electronic EngineeringInstrumentationMathematicsElectronic nosebusiness.industrySunflower oilELECTRONIC NOSEMetals and AlloysPattern recognitionSTATISTICAL ANALYSISCondensed Matter PhysicsLinear discriminant analysisSurfaces Coatings and FilmsElectronic Optical and Magnetic MaterialsSENSORY DEFECTSENSORY THRESHOLDArtificial intelligencebusinessOlive oil
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