Classifying PDO Kalamata Olive Oil from Geographic Origins of the Messenia Region based on Statistical Machine Learning

Theodoros Anagnostopoulos, Ioakeim Spiliopoulos
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Abstract

Kalamata is a smart city located in southeastern Greece in the Mediterranean basin and it is the capital of the Messenia regional unit. It is known for the famous Protected Designation of Origin (PDO) Kalamata olive oil produced mainly from the Koroneiki olive variety. The PDO Kalamata olive oil, established by Council regulation (EC) No 510/2006, owes its quality and special characteristics to the geographical environment, olive tree variety, and human factor. The PDO Kalamata olive oil is produced exclusively in the regional unit of Messenia, being the main profit of local farmers. However, soil chemical composition, microclimates, and agronomic factors are changed within the Messenia spatial area leading to differentiation of PDO Kalamata olive oil characteristic. In this paper, we use statistical machine learning algorithms to determine the geographical origin of Kalamata olive oil at PDO level based on synchronous excitation−emission fluorescence spectroscopy of olive oils. Evaluations of the statistical models are promising for differentiating the origin of PDO Kalamata olive oil with high values of prediction accuracy thus enabling companies that process and bottle kalamata olive oil to choose olive oil from a specific region of Messenia that fulfills certain characteristics. Concretely, the current research effort focuses on a specific olive oil variety within a limited geographic region. Intuitively, future research should also focus on validation of the proposed methodology to other olive oil varieties and production areas.
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基于统计机器学习的梅塞尼亚地区 PDO 卡拉马塔橄榄油地理原产地分类
卡拉马塔(Kalamata)是位于希腊东南部地中海盆地的一座智慧城市,也是梅塞尼亚大区的首府。卡拉马塔因著名的原产地名称(PDO)卡拉马塔橄榄油而闻名,该橄榄油主要产自 Koroneiki 橄榄品种。卡拉玛塔原产地保护橄榄油是根据欧盟理事会第 510/2006 号法规(EC)制定的,其质量和特性得益于地理环境、橄榄树品种和人为因素。PDO 卡拉玛塔橄榄油只在梅塞尼亚地区生产,是当地农民的主要收入来源。然而,土壤化学成分、微气候和农艺因素在梅塞尼亚空间区域内发生了变化,导致了 PDO 卡拉玛塔橄榄油特征的差异。在本文中,我们根据橄榄油的同步激发-发射荧光光谱,使用统计机器学习算法来确定卡拉马塔橄榄油在 PDO 级别的地理原产地。对统计模型的评估结果表明,该模型在区分 PDO 卡拉玛塔橄榄油原产地方面具有很高的预测准确性,从而使加工和装瓶卡拉玛塔橄榄油的公司能够选择来自美塞尼亚特定地区且符合特定特征的橄榄油。具体来说,目前的研究工作主要集中在有限地理区域内的特定橄榄油品种上。直观地说,未来的研究还应侧重于验证所建议的方法是否适用于其他橄榄油品种和产区。
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