Dept of Food Science, Univ of Bologna, Piazza Goidanich 60, 47521 Cesena, FC, Italy.
J Food Sci. 2012 Sep;77(9):C960-5. doi: 10.1111/j.1750-3841.2012.02851.x. Epub 2012 Aug 21.
An electronic nose (EN) based on an array of 10 metal oxide semiconductor sensors was used, jointly with an artificial neural network (ANN), to predict coffee roasting degree. The flavor release evolution and the main physicochemical modifications (weight loss, density, moisture content, and surface color: L*, a*), during the roasting process of coffee, were monitored at different cooking times (0, 6, 8, 10, 14, 19 min). Principal component analysis (PCA) was used to reduce the dimensionality of sensors data set (600 values per sensor). The selected PCs were used as ANN input variables. Two types of ANN methods (multilayer perceptron [MLP] and general regression neural network [GRNN]) were used in order to estimate the EN signals. For both neural networks the input values were represented by scores of sensors data set PCs, while the output values were the quality parameter at different roasting times. Both the ANNs were able to well predict coffee roasting degree, giving good prediction results for both roasting time and coffee quality parameters. In particular, GRNN showed the highest prediction reliability.
Actually the evaluation of coffee roasting degree is mainly a manned operation, substantially based on the empirical final color observation. For this reason it requires well-trained operators with a long professional skill. The coupling of e-nose and artificial neural networks (ANNs) may represent an effective possibility to roasting process automation and to set up a more reproducible procedure for final coffee bean quality characterization.
基于 10 个金属氧化物半导体传感器阵列的电子鼻(EN)与人工神经网络(ANN)一起用于预测咖啡烘焙程度。在不同的烘焙时间(0、6、8、10、14、19 分钟)监测咖啡烘焙过程中的风味释放演变和主要物理化学变化(失重、密度、水分含量和表面颜色:L*、a*)。主成分分析(PCA)用于降低传感器数据集的维数(每个传感器 600 个值)。选择的 PC 用作 ANN 的输入变量。为了估计 EN 信号,使用了两种类型的 ANN 方法(多层感知器[MLP]和广义回归神经网络[GRNN])。对于这两种神经网络,输入值由传感器数据集 PC 的分数表示,而输出值为不同烘焙时间的质量参数。两种神经网络都能够很好地预测咖啡烘焙程度,对烘焙时间和咖啡质量参数都有很好的预测结果。特别是,GRNN 显示了最高的预测可靠性。
实际上,咖啡烘焙程度的评估主要是人工操作,主要基于经验观察的最终颜色。因此,它需要经过长时间专业培训的操作人员。电子鼻和人工神经网络(ANNs)的结合可能代表了烘焙过程自动化和建立更具重现性的最终咖啡豆质量特征描述程序的有效可能性。