Litcius/Paper detail

Detection for Frying Times of Various Edible Oils Based on Near-Infrared Spectroscopy

Yi Liu, Laijun Sun, Hongyi Bai, Zhi-Yong Ran

2020Applied Sciences15 citationsDOIOpen Access PDF

Abstract

Taking a variety of edible oils as the research object, including soybean oil, peanut oil, rapeseed oil, a method based on Near-Infrared Spectroscopy (NIRS) to identify the frying times is proposed to evaluate the quality of frying oil. Ten rounds of frying experiments are carried out for each of the three oils. The spectra of the first eight rounds are used to build the model, and the last two are used for model testing. First, all the original spectra are preprocessed using the first derivative (1D). Then, the correlation coefficient between the sequence of frying times and absorbance is calculated, and the characteristic wavelengths with a high correlation coefficient are extracted. Finally, a differential prediction model is established based on the characteristic wavelengths. The results show that the differential prediction model accurately predicts the frying times of various edible oils and provides a new method for quality inspection of frying oil, and the predicted accuracy of the frying times of three frying oils is 100% within the allowable range of error.

Topics & Concepts

RapeseedCorrelation coefficientAbsorbanceMathematicsPeanut oilBiological systemMaterials scienceChemistryFood scienceChromatographyStatisticsBiologyOrganic chemistryRaw materialSpectroscopy and Chemometric AnalysesEdible Oils Quality and AnalysisAdvanced Chemical Sensor Technologies