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首页> 外文期刊>International Journal of Biochemistry Research & Review >Detection of Adulteration in Edible Oil Using FT-IR Spectroscopy and Machine Learning
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Detection of Adulteration in Edible Oil Using FT-IR Spectroscopy and Machine Learning

机译:FT-IR光谱和机器学习技术检测食用油中的掺假

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Aims: To detect the adulterant in edible oil rapidly. Study Design: Authenticity and adulteration detection in edible oils are the increasing challenges for researchers, consumers, industries and regulatory agencies. Traditional approaches may not be the most effective option to combat against adulteration in edible oils as that’s are complex, laborious, expensive, require a high degree of technical knowledge when interpreting data and produce hazardous chemical. Consequently, a cost effective, rapid and reliable method is required. Place and Duration of the Study: The experiment was conducted jointly in the laboratory of the Department of Food Technology and Rural Industries, Bangladesh Agricultural University, Mymensingh and the Institute of Food Science and Technology, BCSIR, Dhaka. Methods: In this study, Fourier Transform Infrared spectroscopy coupled with multivariate analysis was used for adulteration detection in sunflower and rice bran oil. Sunflower oil was adulterated with soybean oil in the range of 10-50% (v/v) and rice bran oil was adulterated with palm oil in the range of 4-40% (v/v) at approximately 10% and 5% increments respectively. FTIR spectra were recorded in the wavenumber range of 4000-650cmsup-1/sup. Results: FTIR spectra data in the whole spectral range and reduced spectral range were used to develop a partial least square regression (PLSR) model to predict the level of adulteration in sunflower and palm oils. Good prediction model was obtained for all PLSR models with a coefficient of determination (Rsup2/sup) of = 0.985 and root mean square errors of calibration (RMSEC) in the range of 0-1.7325%. Conclusion: The result suggested that FTIR spectroscopy associated with multivariate analysis has the great potential for a rapid and non-destructive detection of adulteration in edible oils laborious conventional analytical techniques.
机译:目的:快速检测食用油中的杂质。研究设计:食用油的真实性和掺假检测是研究人员,消费者,行业和监管机构日益严峻的挑战。传统方法可能不是对抗食用油掺假的最有效方法,因为它复杂,费力,昂贵,并且在解释数据和生产危险化学品时需要高度的技术知识。因此,需要一种成本有效,快速且可靠的方法。研究的地点和持续时间:该实验在Mymensingh的孟加拉国农业大学食品技术和农村工业系的实验室以及达卡BCSIR的食品科学技术研究所共同进行。方法:在这项研究中,傅里叶变换红外光谱结合多变量分析用于向日葵和米糠油中的掺假检测。葵花籽油用10-50%(v / v)范围的大豆油掺假,米糠油掺入4-40%(v / v)范围内的棕榈油掺假,增量分别为10%和5%。分别。 FTIR光谱记录在4000-650cm -1 的波数范围内。结果:使用整个光谱范围和缩减光谱范围的FTIR光谱数据建立偏最小二乘回归(PLSR)模型,以预测葵花籽油和棕榈油中的掺假水平。对于所有PLSR模型,均获得了良好的预测模型,其确定系数(R 2 )> = 0.985,并且校准的均方根误差(RMSEC)在0-1.7325%的范围内。结论:该结果表明,与多变量分析相关的FTIR光谱具有快速,无损检测食用油费力的常规分析技术中掺假的巨大潜力。

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