首页> 外文期刊>Journal of Agricultural and Food Chemistry >Variable Selection, Outlier Detection, and Figures of Merit Estimation in a Partial Least-Squares Regression Multivariate Calibration Model. A Case Study for the Determination of Quality Parameters in the Alcohol Industry by Near-Infrared Spectroscop
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Variable Selection, Outlier Detection, and Figures of Merit Estimation in a Partial Least-Squares Regression Multivariate Calibration Model. A Case Study for the Determination of Quality Parameters in the Alcohol Industry by Near-Infrared Spectroscop

机译:偏最小二乘回归多元校准模型中的变量选择,离群值检测和优值估计。近红外光谱法测定酒精工业质量参数的案例研究

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摘要

Practical implementation of multivariate calibration models has been limited in several areas due to the requirement of appropriate development and validation to prove their performance to standardization agencies. Herein, a detailed description of the application of multivariate calibration based on partial least-squares regression models (PLSR) for the determination of soluble solids (BRIX), polarizable sugars (POL), and reducing sugars (RS) in sugar cane juice, based on near infrared spectroscopy (NIR), for the alcohol industries is presented. The development of the models, including variable selection and outlier elimination, and their validation by determination of figures of merit, such as accuracy, precision, sensitivity, analytical sensitivity, prediction intervals, and limits of detection and quantification, are described for a representative data set of 1381 sugar cane samples. Values estimated by PLSR are compared with appropriate reference methods, where the results indicated that the PLSR models can be used in the alcohol industry as an alternative to refractometry and lead clarification before polarization measurements (standard methods for BRIX and POL, respectively). For RS, the results of a titration reference method were compared with the PLSR estimates and also with an estimate based on BRIX and POL values, as actually used in the alcohol industry. The PLSR method presented a better agreement with the titration method. However, the results indicated that the RS estimates from both PLSR and those based on the BRIX and POL values, actually used, should be improved to a safe determination of RS.
机译:由于需要适当的开发和验证以向标准化机构证明其性能,因此多元校准模型的实际实施在几个领域受到限制。本文中,基于偏最小二乘回归模型(PLSR)的多元校准在确定甘蔗汁中的可溶性固体(BRIX),可极化糖(POL)和还原糖(RS)方面的应用的详细说明介绍了用于酒精工业的近红外光谱(NIR)。描述了模型的开发,包括变量选择和异常值消除,以及通过确定品质因数(例如准确度,精确度,灵敏度,分析灵敏度,预测区间以及检测和定量限)进行的验证。 1381套甘蔗样品。将PLSR估计的值与适当的参考方法进行比较,结果表明PLSR模型可用于酒精工业,以替代偏振测量之前的折光法和铅澄清(分别用于BRIX和POL的标准方法)。对于RS,将滴定参考方法的结果与PLSR估算值进行了比较,并且还与基于BRIX和POL值的估算值进行了比较,如酒精行业中实际使用的那样。 PLSR法与滴定法具有更好的一致性。但是,结果表明,应该改进从PLSR以及基于实际使用的BRIX和POL值得出的RS估算值,以安全确定RS。

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