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特级初榨橄榄油的氧化稳定性:采用自适应神经模糊推理系统(ANFIS)进行评估和预测。

Oxidative stability of virgin olive oil: evaluation and prediction with an adaptive neuro-fuzzy inference system (ANFIS).

机构信息

Vice-chancellery of Food and Drug, Shahroud University of Medical Sciences, Shahroud, Iran.

Department of Physics, South Tehran Branch, Islamic Azad University, Tehran, Iran.

出版信息

J Sci Food Agric. 2019 Sep;99(12):5358-5367. doi: 10.1002/jsfa.9777. Epub 2019 Jun 13.

Abstract

BACKGROUND

An adaptive neuro-fuzzy inference system (ANFIS) was employed to predict the oxidative stability of virgin olive oil (VOO) during storage as a function of time, storage temperature, total polyphenol, α-tocopherol, fatty acid profile, ultraviolet (UV) extinction coefficient (K ), and diacylglycerols (DAGs).

RESULTS

The mean total quantities of polyphenols and DAGs were 1.1 and 1.9 times lower in VOOs stored at 25 °C than in the initial samples, and the mean total quantities of polyphenols and DAGs were 1.3 and 2.26 times lower in VOOs stored at 37 °C than in the initial samples, respectively. In a single sample, α-tocopherol was reduced by between 0.52 and 0.91 times during storage, regardless of the storage temperature. The mean specific UV extinction coefficients (K ) for VOO stored at 25 and 37 °C were reported as 0.15 (ranging between 0.06-0.39) and 0.13 (ranging between 0.06-0.35), respectively. The ANFIS model created a multi-dimensional correlation function, which used compositional variables and environmental conditions to assess the quality of VOO. The ANFIS model, with a generalized bell-shaped membership function and a hybrid learning algorithm (R  = 0.98; MSE = 0.0001), provided more precise predictions than other algorithms.

CONCLUSION

Minor constituents were found to be the most important factors influencing the preservation status and freshness of VOO during storage. Relative changes (increases and reductions) in DAGs were good indicators of oil oxidative stability. The observed effectiveness of ANFIS for modeling oxidative stability parameters confirmed its potential use as a supplemental tool in the predictive quality assessment of VOO. © 2019 Society of Chemical Industry.

摘要

背景

采用自适应神经模糊推理系统(ANFIS)预测了在时间、储存温度、总多酚、α-生育酚、脂肪酸组成、紫外线(UV)消光系数(K)和二酰基甘油(DAG)等因素作用下,特级初榨橄榄油(VOO)在储存过程中的氧化稳定性。

结果

在 25℃储存的 VOO 中,多酚和 DAG 的总量分别比初始样品低 1.1 和 1.9 倍,在 37℃储存的 VOO 中,多酚和 DAG 的总量分别比初始样品低 1.3 和 2.26 倍。在单个样本中,无论储存温度如何,α-生育酚的含量在储存过程中减少了 0.52 至 0.91 倍。在 25 和 37℃储存的 VOO 的平均特定 UV 消光系数(K)分别为 0.15(范围在 0.06-0.39)和 0.13(范围在 0.06-0.35)。创建的 ANFIS 模型采用多维相关函数,使用组成变量和环境条件来评估 VOO 的质量。ANFIS 模型采用广义钟形隶属函数和混合学习算法(R = 0.98;MSE = 0.0001),比其他算法提供了更精确的预测。

结论

次要成分被发现是影响 VOO 在储存过程中保存状态和新鲜度的最重要因素。DAG 的相对变化(增加和减少)是油氧化稳定性的良好指标。观察到的 ANFIS 对氧化稳定性参数建模的有效性证实了其作为 VOO 预测质量评估的补充工具的潜在用途。 © 2019 英国化学学会。

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