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Applications of an electronic nose in the prediction of oxidative stability of stored biodiesel derived from soybean and waste cooking oil

机译:电子鼻源在大豆和废料衍生的生物柴油氧化稳定性预测中的应用

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摘要

Waste cooking oil (WCO) is a valuable feedstock for the synthesis of biodiesel but the product exhibits poor oxidative stability. Techniques available for assessing this parameter are generally expensive and time-consuming, hence the purpose of this study was to develop and validate a rapid and reliable predictive system based on signals from the sensors of a commercial hand-held e-nose instrument. Biodiesels were synthesized from soybean oil and six samples of WCO, and their physicochemical characteristics and oxidative stabilities determined before and after storage in different types of containers for 30 or 60 days at room temperature or 43 degrees C. Linear regression models were constructed based on principal component analysis of the signals generated by all 32 e-nose sensors and stochastic modeling of signal profiles from individual sensors. The regression model with principal components as predictors was unable to explain the oxidative stability of biodiesels, while the regression model with stochastic parameters (combining signals from 11 sensors) as predictors showed an excellent goodness of fit (R-2 = 0.91) with a 45-sample training set and a good quality of prediction (R-2 = 0.84) with a 18-sample validation set. The proposed e-nose system was shown to be accurate and efficient and could be used to advantage by producers/distributors of biodiesel in the assessment fuel quality.
机译:废物食用油(WCO)是一种有价值的原料,用于合成生物柴油,但产品表现出较差的氧化稳定性。可用于评估该参数的技术通常昂贵且耗时,因此该研究的目的是基于来自商业手持电子鼻仪器的传感器的信号开发和验证快速可靠的预测系统。从大豆油和六个WCO样品中合成生物柴油,它们在室温或43℃下在不同类型容器中储存的物理化学特性和氧化稳定性,或者在室温下或43℃。基于主体,构建了线性回归模型。由所有32个E鼻传感器产生的信号分析以及各个传感器信号谱的随机建模。具有主要成分作为预测器的回归模型无法解释生物柴油的氧化稳定性,而具有随机参数的回归模型(11个传感器的信号组合信号)作为预测因子显示出具有45的优异优点(R-2 = 0.91),具有45 -Sample训练集和良好的预测质量(R-2 = 0.84),具有18样本验证集。所提出的电子鼻系统被证明是准确和高效的,可用于通过生物柴油的生产商/分销商在评估燃料质量中的优势。

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