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利用数字技术评价自然发酵对绿阿拉比卡咖啡和烘焙阿拉比卡咖啡理化特性及感官特征的影响。

Evaluation of spontaneous fermentation impact on the physicochemical properties and sensory profile of green and roasted arabica coffee by digital technologies.

机构信息

School of Agriculture, Food and Ecosystem Sciences, Faculty of Sciences, The University of Melbourne, Parkville 3010, VIC, Australia.

Digital Agriculture, Food and Wine Group, School of Agriculture, Food and Ecosystem Sciences, Faculty of Sciences, The University of Melbourne, Parkville 3010, VIC, Australia.

出版信息

Food Res Int. 2024 Jan;176:113800. doi: 10.1016/j.foodres.2023.113800. Epub 2023 Dec 9.

Abstract

There is a growing demand for specialty coffee with more pleasant and uniform sensory perception. Wet fermentation could modulate and confer additional aroma notes to final roasted coffee brew. This study aimed to assess differences in volatile compounds and the intensities of sensory descriptors between unfermented and spontaneously fermented coffee using digital technologies. Fermented (F) and unfermented (UF) coffee samples, harvested from two Australia local farms Mountain Top Estate (T) and Kahawa Estate (K), with four roasting levels (green, light-, medium-, and dark-) were analysed using near-infrared spectrometry (NIR), and a low-cost electronic nose (e-nose) along with some ground truth measurements such as headspace/gas chromatography-mass spectrometry (HS-SPME-GC-MS), and quantitative descriptive analysis (QDA ®). Regression machine learning (ML) modelling based on artificial neural networks (ANN) was conducted to predict volatile aromatic compounds and intensity of sensory descriptors using NIR and e-nose data as inputs. Green fermented coffee had significant perception of hay aroma and flavor. Roasted fermented coffee had higher intensities of coffee liquid color, crema height and color, aftertaste, aroma and flavor of dark chocolate and roasted, and butter flavor (p < 0.05). According to GC-MS detection, volatile aromatic compounds, including methylpyrazine, 2-ethyl-5-methylpyrazine, and 2-ethyl-6-methylpyrazine, were observed to discriminate fermented and unfermented roasted coffee. The four ML models developed using the NIR absorbance values and e-nose measurements as inputs were highly accurate in predicting (i) the peak area of volatile aromatic compounds (Model 1, R = 0.98; Model 3, R = 0.87) and (ii) intensities of sensory descriptors (Model 2 and Model 4; R = 0.91), respectively. The proposed efficient, reliable, and affordable method may potentially be used in the coffee industry and smallholders in the differentiation and development of specialty coffee, as well as in process monitoring and sensory quality assurance.

摘要

人们对具有更愉悦和均匀感官感知的特种咖啡的需求日益增长。湿发酵可以调节和赋予最终烘焙咖啡冲泡物额外的香气。本研究旨在使用数字技术评估未发酵和自然发酵咖啡之间挥发性化合物和感官描述符强度的差异。使用近红外光谱 (NIR) 以及低成本电子鼻 (e-nose) 以及一些地面实况测量值(如顶空/气相色谱-质谱联用 (HS-SPME-GC-MS) 和定量描述性分析 (QDA ®))分析来自澳大利亚两个当地农场 Mountain Top Estate (T) 和 Kahawa Estate (K) 的发酵 (F) 和未发酵 (UF) 咖啡样品,以及四个烘焙水平(绿色、浅度、中度和深度)。基于人工神经网络 (ANN) 的回归机器学习 (ML) 模型用于预测挥发性芳香化合物和感官描述符的强度,使用 NIR 和 e-nose 数据作为输入。绿色发酵咖啡具有明显的干草香气和风味。发酵烘焙咖啡具有更高的咖啡液体颜色、奶泡高度和颜色、回味、深巧克力和烘焙香气和风味以及黄油风味的强度(p<0.05)。根据 GC-MS 检测,观察到包括甲基吡嗪、2-乙基-5-甲基吡嗪和 2-乙基-6-甲基吡嗪在内的挥发性芳香化合物可区分发酵和未发酵的烘焙咖啡。使用 NIR 吸光度值和 e-nose 测量值作为输入开发的四个 ML 模型在预测 (i) 挥发性芳香化合物的峰面积(模型 1,R=0.98;模型 3,R=0.87)和 (ii) 感官描述符的强度(模型 2 和模型 4;R=0.91)方面非常准确。该方法高效、可靠且经济实惠,可能在咖啡行业和小农户中用于特种咖啡的差异化和开发,以及过程监测和感官质量保证。

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