Dept. of Food Engineering, Univ. of Campinas - (UNICAMP), Rua Monteiro Lobato 80 - Cidade Universitária Zeferino Vaz, CEP 13083-862, Campinas, SP, Brazil.
Dept. of Food Science, Univ. of Campinas - (UNICAMP), Rua Monteiro Lobato 80 - Cidade Universitária Zeferino Vaz, CEP 13083-862, Campinas, SP, Brazil.
J Food Sci. 2019 Mar;84(3):406-411. doi: 10.1111/1750-3841.14467. Epub 2019 Feb 13.
Palm oil is widely used in the food industry, and its quality is associated with the free fatty acids (FFA) content. Determination of FFA in oil is time-consuming, requires chemicals and generates residues. There is a trend of applying process analytical technologies (PAT) for fast and nondestructive determination of oil parameters. Portable near-infrared (NIR) spectrometers are cheaper than bench top equipment, and have been used for several tasks in the food processing industry, as it provides fast and reliable data for inline measurements. This study investigated the use of NIR spectra using a portable equipment, combined with both unsupervised and supervised multivariate analyses for identification of palm oil samples with different levels of FFA. Soft independent modeling of class analogy , k-Nearest Neighbors, and linear discriminant analysis models were able to correctly identify 100% of the studied samples with selected wavelengths from NIR spectra. Calibration models were performed for acidity prediction, achieving R = 0.97, with root mean square error of prediction = 4.37 for partial least squares model using most relevant wavelengths. These results demonstrate the feasibility of applying a low-cost portable NIR spectrophotometer to predict quality parameters of palm oil. PRACTICAL APPLICATION: This work presents results that show the feasibility of using a low-cost portable near-infrared spectrophotometer for the classification of raw palm oil samples according to free fatty acids contents. Regression models are presented as a fast and nondestructive alternative to classify samples for acidity, which is an important quality parameter and that directly affects the market value of crude palm oil.
棕榈油广泛应用于食品工业,其质量与游离脂肪酸(FFA)含量有关。油中 FFA 的测定既费时又需要使用化学物质,而且会产生残留物。应用过程分析技术(PAT)快速、无损地测定油参数的趋势正在发展。便携式近红外(NIR)光谱仪比台式设备便宜,并且已经在食品加工业的多个任务中得到应用,因为它可以为在线测量提供快速可靠的数据。本研究使用便携式设备研究了 NIR 光谱的应用,结合无监督和有监督多元分析,用于识别不同 FFA 水平的棕榈油样品。软独立建模分类类比、k-最近邻和线性判别分析模型能够正确识别 100%的研究样本,选择来自 NIR 光谱的特定波长。对酸度进行了校准模型预测,使用最相关波长的偏最小二乘模型,R = 0.97,预测均方根误差 = 4.37。这些结果表明,应用低成本便携式近红外分光光度计预测棕榈油质量参数是可行的。实际应用:本工作结果表明,使用低成本便携式近红外分光光度计根据游离脂肪酸含量对未精炼棕榈油样品进行分类是可行的。提出了回归模型,作为一种快速无损的替代方法,用于对酸度进行分类,酸度是一个重要的质量参数,直接影响粗棕榈油的市场价值。