论文标题
具有1D横向神经网络的荧光光谱从荧光光谱中提取物理化学特性:应用于橄榄油
Physico-chemical properties extraction from the fluorescence spectrum with 1D-convolutional neural networks: application to olive oil
论文作者
论文摘要
橄榄油部门对地中海的经济和生活方式产生了重大影响。存在许多研究,试图优化橄榄油生产过程中的不同步骤。橄榄油生产商面临的主要挑战之一是在生产周期期间能够进行驴和控制质量的能力。为此,需要确定几个参数,例如酸度,紫外线吸收或乙酯含量。为此,必须将样品发送到认可的实验室进行化学分析。这种方法很昂贵,不能经常执行,这使得对橄榄油的质量控制成为真正的挑战。这项工作探讨了一种基于荧光光谱和人工智能(即1-D卷积神经网络)的新方法,以预测橄榄油的五个化学质量指标(酸度,过氧化物价值,UV光谱参数$ k_ {270} $和$ k_ {270} $和$ k_ {232} $,以及简单的eSterscements)。荧光光谱是一种非常有吸引力的光学技术,因为它不需要样品制备,无破坏性,并且如本工作所示,可以轻松地以小型且具有成本效益的传感器实现。结果表明,所提出的方法在质量确定方面给出了出色的结果,并将在生产过程中和之后对橄榄油的持续质量控制成为现实。此外,这种新颖的方法将潜在的应用提出,以支持欧洲法规所定义的橄榄油质量规格。
The olive oil sector produces a substantial impact in the Mediterranean's economy and lifestyle. Many studies exist which try to optimize the different steps in the olive oil's production process. One of the main challenges for olive oil producers is the ability to asses and control the quality during the production cycle. For this purpose, several parameters need to be determined, such as the acidity, the UV absorption or the ethyl esters content. To achieve this, samples must be sent to an approved laboratory for chemical analysis. This approach is expensive and cannot be performed very frequently, making quality control of olive oil a real challenge. This work explores a new approach based on fluorescence spectroscopy and artificial intelligence (namely, 1-D convolutional neural networks) to predict the five chemical quality indicators of olive oil (acidity, peroxide value, UV spectroscopic parameters $K_{270}$ and $K_{232}$, and ethyl esters) from simple fluorescence spectra. Fluorescence spectroscopy is a very attractive optical technique since it does not require sample preparation, is non destructive, and, as shown in this work, can be easily implemented in small and cost-effective sensors. The results indicate that the proposed approach gives exceptional results in the quality determination and would make the continuous quality control of olive oil during and after the production process a reality. Additionally, this novel methodology presents potential applications as a support for quality specifications of olive oil, as defined by the European regulation.