Gunaratne Thejani M, Gonzalez Viejo Claudia, Gunaratne Nadeesha M, Torrico Damir D, Dunshea Frank R, Fuentes Sigfredo
School of Agriculture and Food, Faculty of Veterinary and Agricultural Sciences, University of Melbourne, Melbourne, VIC 3010, Australia.
Department of Wine, Food and Molecular Biosciences, Faculty of Agriculture and Life Sciences, Lincoln University, Lincoln 7647, New Zealand.
Foods. 2019 Sep 20;8(10):426. doi: 10.3390/foods8100426.
Chocolates are the most common confectionery and most popular dessert and snack across the globe. The quality of chocolate plays a major role in sensory evaluation. In this study, a rapid and non-destructive method was developed to predict the quality of chocolate based on physicochemical data, and sensory properties, using the five basic tastes. Data for physicochemical analysis (pH, Brix, viscosity, and color), and sensory properties (basic taste intensities) of chocolate were recorded. These data and results obtained from near-infrared spectroscopy were used to develop two machine learning models to predict the physicochemical parameters (Model 1) and sensory descriptors (Model 2) of chocolate. The results show that the models developed had high accuracy, with = 0.99 for Model 1 and = 0.93 for Model 2. The thus-developed models can be used as an alternative to consumer panels to determine the sensory properties of chocolate more accurately with lower cost using the chemical parameters.
巧克力是全球最常见的糖果,也是最受欢迎的甜点和零食。巧克力的品质在感官评价中起着重要作用。在本研究中,开发了一种基于物理化学数据和感官特性(使用五种基本味觉)的快速无损方法来预测巧克力的品质。记录了巧克力的物理化学分析数据(pH值、糖度、粘度和颜色)以及感官特性(基本味觉强度)。这些数据以及从近红外光谱获得的结果被用于开发两个机器学习模型,以预测巧克力的物理化学参数(模型1)和感官描述符(模型2)。结果表明,所开发的模型具有很高的准确性,模型1的R² = 0.99,模型2的R² = 0.93。如此开发的模型可以作为消费者小组的替代方法,利用化学参数以更低的成本更准确地确定巧克力的感官特性。