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一种便携式拉曼传感器,可根据果实品质快速鉴别橄榄。

A portable Raman sensor for the rapid discrimination of olives according to fruit quality.

机构信息

IFAPA Centro Venta del Llano, Crta. Nacional Bailén-Motril Km 18.5, 23620 Mengíbar, Jaén, Spain.

出版信息

Talanta. 2012 May 15;93:94-8. doi: 10.1016/j.talanta.2012.01.053. Epub 2012 Feb 2.

Abstract

In the real marketplace, providing high-quality olive oil is important from the perspective of both consumers and producers. Quality control should meet all requirements in the production process, from farm to packaging. The quality of olive oil can be affected by several factors, including agricultural techniques, seasonal conditions, farming systems, maturity, method and duration of storage, and process technology. The quality of oil produced also depends largely on the quality of the olives. In an enterprise aimed at producing high-quality oils, olives with defects ('ground'; i.e., fallen to the ground) should be separated from healthy fruit ('sound'; i.e., collected directly from the tree), because a very small portion of low-quality fruit can ruin the whole batch. The fruit falls partly because of its maturation process, but also because of pest and disease attack or weather conditions (strong wind). Fruit that has fallen to the ground can suffer a rapid deterioration in quality. Currently, the separation of fruits is based mainly on visual inspection or information provided by the farmer. These are not very reliable procedures. Methods using analytical parameters to characterize the oil, such as acidity and peroxide value, can be applied, but they require a lot of time and materials. Alternative techniques are therefore needed for the rapid and inexpensive discrimination of olives as part of a quality control strategy. The work described here aims to determine the potential of low-resolution Raman spectroscopy for the discrimination of olives before the oil processing stage in order to detect whether they have been collected directly from the tree (i.e., healthy fruit) or not. Low-resolution Raman spectroscopy was applied together with multivariate procedures to achieve this aim. PCA was used to find natural clusters in the data. Supervised classification methods were then applied: Soft Independent Modeling of Class Analogy (SIMCA), PLS Discriminate Analysis (PLS-DA) and K-nearest neighbors (KNN). The best results were obtained using the KNN method, with prediction abilities of 100% for 'sound' and 97% for 'ground' in an independent validation set. These results demonstrated the potential of a portable Raman instrument for detecting good quality olives before the oil processing stage, by developing models that could be applied before this stage, thus contributing to an overall improvement in quality control.

摘要

在现实市场中,从消费者和生产者的角度来看,提供高质量的橄榄油都很重要。质量控制应满足生产过程中的所有要求,从农场到包装。橄榄油的质量可能会受到几个因素的影响,包括农业技术、季节性条件、种植系统、成熟度、储存方法和时间长短以及加工技术。所生产的油的质量在很大程度上还取决于橄榄的质量。在一个旨在生产高质量油的企业中,应将有缺陷的橄榄(“落地”;即掉在地上)与健康的果实(“完好”;即直接从树上采摘)分开,因为一小部分质量差的果实可能会毁掉整批果实。果实掉落部分是因为其成熟过程,但也是因为病虫害或天气条件(强风)。掉在地上的果实质量会迅速恶化。目前,果实的分离主要基于视觉检查或农民提供的信息。这些程序不是很可靠。可以使用分析参数来描述油的特性,例如酸度和过氧化物值,来进行分析,但需要大量的时间和材料。因此,需要替代技术来快速且廉价地鉴别橄榄,作为质量控制策略的一部分。这里描述的工作旨在确定低分辨率拉曼光谱在油加工阶段之前鉴别橄榄的潜力,以检测它们是否是直接从树上采摘的(即健康的果实)。低分辨率拉曼光谱与多元程序一起应用于实现此目标。PCA 用于在数据中找到自然聚类。然后应用监督分类方法:软独立建模分类分析(SIMCA)、偏最小二乘判别分析(PLS-DA)和 K-最近邻(KNN)。使用 KNN 方法获得了最佳结果,在独立验证集中,“完好”的预测能力为 100%,“落地”的预测能力为 97%。这些结果表明,通过开发可在该阶段之前应用的模型,便携式拉曼仪器有可能在油加工阶段之前检测到高质量的橄榄,从而有助于整体提高质量控制水平。

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