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Assessing potato chip oil quality using a portable infrared spectrometer combined with pattern recognition analysis

机译:使用便携式红外光谱仪结合模式识别分析评估薯片油的质量

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The objective of this study was to evaluate the performance of a portable FT-IR spectrometer equipped with a 5-bounce heated ZnSe crystal to develop classification methods for the authentication of potato chip frying oils and to generate prediction models for monitoring oil quality parameters for real-time and field-based applications. Oil from commercial potato chips (n = 95) was expelled mechanically by a hydraulic press and the fatty acid profile determined by GC-FAME to identify the oil type used for chip manufacturing. The peroxide value (PV), free fatty acids (FFAs), and p-anisidine value (p-AV) were also evaluated to determine quality parameters of the oils. IR spectra were collected using a portable FT-IR equipped with a heating stage (65 ?°C) and analyzed by pattern recognition using a soft independent modeling of class analogy algorithm (SIMCA) and partial least squares regression (PLSR). SIMCA showed that different oil types successfully formed distinct clusters allowing detection of the mislabeling of frying oils in commercial chips. PLSR models predicted the fatty acid profile (GC-FAME) with excellent correlation (Rcal a‰¥ 0.93) and the standard error of cross-validation (SECV) of a??1.0% for major fatty acids. The models for FFAs, PV and p-AV gave an Rcal a‰¥ 0.93 and SECV of 0.05%, 1.27 meq kga?’1, and 5.94 p-AV, respectively. Profits and trading advantages from mislabeling prejudice consumers and manufacturers, and our data supports that IR portable instruments present great potential for in situ surveillance of vegetable oils used for potato chip frying.
机译:这项研究的目的是评估配备有5反弹加热的ZnSe晶体的便携式FT-IR光谱仪的性能,以开发用于鉴定薯片油炸油的分类方法,并生成用于监控实际油质量参数的预测模型。时间和基于字段的应用程序。用液压机将商用土豆片(n = 95)中的油排出,并通过GC-FAME确定脂肪酸谱,以鉴定用于芯片制造的油类型。还评估了过氧化物值(PV),游离脂肪酸(FFA)和对茴香胺值(p-AV)以确定油的质量参数。使用配备有加热台(65°C)的便携式FT-IR收集红外光谱,并使用类别模拟算法(SIMCA)和偏最小二乘回归(PLSR)的软独立模型通过模式识别进行分析。 SIMCA显示,不同类型的油成功形成了独特的簇,从而可以检测到商用薯片中油炸油的标签错误。 PLSR模型预测的脂肪酸谱(GC-FAME)具有极好的相关性(Rcal±0.93),并且主要脂肪酸的交叉验证标准误差(SECV)为a ?? 1.0%。 FFA,PV和p-AV的模型的Rcal≥0.93和SECV分别为0.05%,1.27 meq kga?-1和5.94 p-AV。贴错标签的消费者和制造商带来的利润和交易优势,我们的数据支持IR便携式仪器具有就地监测用于炸薯片的植物油的巨大潜力。

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