Rapid assessment of canola spoilage under sub-optimal storage condition using FTIR spectroscopy

Q4 Engineering
C. Erkinbaev, Whitney Morse, J. Paliwal
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引用次数: 1

Abstract

The storage environment of grains and oilseeds influences their physico-chemical properties that determine shelf-life and nutritional quality. In case of oilseeds, and more specifically canola, analytical chemistry methods are commonly used to determine their quality which is characterized by fatty acid value (FAV) of samples. As wet chemistry methods are time consuming and require the use of chemicals, Fourier transform infrared (FTIR) spectroscopy combined with multivariate data analysis was investigated for rapid assessment of canola quality as affected by sub-optimal storage. Moreover, in order to conduct the analysis on-site outside of a laboratory setting, the feasibility of using a portable instrument was studied. An FTIR spectrum of canola seeds stored at sub-optimal storage condition (35°C and 84% relative humidity) was obtained weekly for a period of five weeks. The quality degradation over this storage period was measured in terms of reduction in germination and FAV content. Principal components analysis (PCA) was applied on FTIR spectral data for dimensionality reduction and the first two principal components could successfully separate canola samples of different qualities (based on their respective storage durations). Quantitative analysis for prediction of FAV using partial least squares (PLS) regression method was done and models were built utilizing the entire spectral data as well by grouping the spectral into three spectral bands. A root mean square error of prediction (RMSEP) of 4.4% and R2=0.96, was achieved with the model built using the entire mid-infrared region. The spectral bands of 1000–1500 cm-1 and 2500–3000 cm-1 were also able to provide comparable results. Various combinations of spectral pre-processing of data were also explored. The results establish that portable FTIR instruments provide an accurate and rapid alternative to chemical analysis for predicting spoilage and determining canola quality.
利用FTIR光谱快速评估次优贮藏条件下油菜籽的腐败程度
谷物和油籽的储存环境影响其物理化学性质,这些性质决定了其保质期和营养质量。对于油籽,更具体地说是油菜籽,通常使用分析化学方法来确定其质量,其特征是样品的脂肪酸值(FAV)。由于湿法化学方法耗时且需要使用化学品,因此研究了傅立叶变换红外光谱与多元数据分析相结合的方法,以快速评估受次优储存影响的油菜籽质量。此外,为了在实验室环境之外进行现场分析,研究了使用便携式仪器的可行性。每周获得在次优储存条件(35°C和84%相对湿度)下储存五周的油菜籽种子的FTIR光谱。根据发芽率和FAV含量的降低来测量该储存期内的质量退化。主成分分析(PCA)用于FTIR光谱数据的降维,前两个主成分可以成功地分离不同质量的油菜籽样品(基于它们各自的储存时间)。使用偏最小二乘(PLS)回归方法对FAV的预测进行了定量分析,并通过将光谱分组为三个光谱带,利用整个光谱数据建立了模型。使用整个中红外区域建立的模型实现了4.4%的预测均方根误差(RMSEP)和R2=0.96。1000–1500 cm-1和2500–3000 cm-1的光谱带也能够提供可比较的结果。还探讨了数据光谱预处理的各种组合。结果表明,便携式FTIR仪器为预测腐败和确定油菜籽质量提供了一种准确快速的化学分析替代品。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.30
自引率
0.00%
发文量
12
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