不同海拔和产地咖啡豆的电子鼻分析

Wandee Aunsa-Ard, T. Kerdcharoen
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引用次数: 3

摘要

由于气候变化、害虫、疾病,咖啡行业面临着越来越多的挑战,导致产量下降,对咖啡品质产生负面影响。因此,咖啡从生产到烘焙、冲泡的质量保证就显得尤为重要,尤其是咖啡的风味和香气。本研究旨在研究电子鼻(e-nose)及其算法在不同产地咖啡香气检测中的适用性。实验中使用的咖啡豆来自泰国北部的不同地区。这些咖啡豆有不同的生长条件、海拔、加工和烘焙条件。本研究从三个方面对电子鼻进行了研究;(i)电子鼻对咖啡气味的敏感度,(ii)电子鼻正确识别检测到的气味的能力,以及(iii)影响咖啡气味的因素,如海拔高度、加工和烘焙条件。电子鼻系统由8个金属氧化物半导体(MOX)气体传感器和内部开发的分析软件组成。主成分分析(PCA)是一种用于咖啡香气模式识别的分类算法。实验结果表明,电子鼻技术能够检测和区分不同海拔、加工和烘焙过程产生的咖啡气味。在咖啡工业中,电子鼻是提高咖啡品质的一种合适的香气检测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Electronic Nose for Analysis of Coffee Beans Obtained from Different Altitudes and Origin
The coffee industry is facing increasing challenges due to climate change, pests, diseases, which leads to the reduced production and negative impact on coffee qualities. Thus, quality assurance of coffee from production to roasting and brewing becomes more important, especially coffee flavor and aroma. This research aims to study the applicability of electronic nose (e-nose) and algorithm to detect coffee aroma obtained from different origins. The coffee beans used in this experiment were obtained from different areas in northern Thailand. These coffee beans have different growing conditions, altitude, processing and roasting condition. In this study, the three aspects of e-nose were investigated; (i) e-nose sensitivity to coffee odors, (ii) e-nose capability of correctly recognizing the detected odors and (iii) factors that influence coffee odors such as altitude, processing and roasting conditions. The e-nose system comprises of eight metal oxide semiconductor (MOX) gas sensors and in-house developed analysis software. Principal Component Analysis (PCA) is a classification algorithm for pattern recognition of different coffee aroma. Based on experimental results, the e-nose technology shows a capability to detect and distinguish the coffee odors caused by different altitude, processing and roasting process. E-nose is a suitable method for aroma detection in coffee industry to enhance the quality.
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