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.

Evaluation of Coffee Roasting Degree by Using Electronic Nose and Artificial Neural Network for Off-line Quality Control / S. Romani; C. Cevoli; A. Fabbri; L. Alessandrini;M. Dalla Rosa. - In: JOURNAL OF FOOD SCIENCE. - ISSN 0022-1147. - ELETTRONICO. - 77:(2012), pp. C960-C965. [10.1111/j.1750-3841.2012.02851.x]

Evaluation of Coffee Roasting Degree by Using Electronic Nose and Artificial Neural Network for Off-line Quality Control

ROMANI, SANTINA;CEVOLI, CHIARA;FABBRI, ANGELO;ALESSANDRINI, LAURA;DALLA ROSA, MARCO
2012

Abstract

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.
2012
Evaluation of Coffee Roasting Degree by Using Electronic Nose and Artificial Neural Network for Off-line Quality Control / S. Romani; C. Cevoli; A. Fabbri; L. Alessandrini;M. Dalla Rosa. - In: JOURNAL OF FOOD SCIENCE. - ISSN 0022-1147. - ELETTRONICO. - 77:(2012), pp. C960-C965. [10.1111/j.1750-3841.2012.02851.x]
S. Romani; C. Cevoli; A. Fabbri; L. Alessandrini;M. Dalla Rosa
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/128526
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