Use of genetic algorithms in the wavelength selection of FT-MIR spectra to classify unifloral honeys from Sardinia
Articolo
Data di Pubblicazione:
2023
Citazione:
Use of genetic algorithms in the wavelength selection of FT-MIR spectra to classify unifloral honeys from Sardinia / Caredda, M.; Mara, A.; Ciulu, M.; Floris, I.; Pilo, M. I.; Spano, N.; Sanna, G.. - In: FOOD CONTROL. - ISSN 0956-7135. - 146:(2023), p. 109559. [10.1016/j.foodcont.2022.109559]
Abstract:
Beekeeping is among the oldest activities in Sardinia (Italy). Among others, here are produced four valuable
unifloral honeys appreciated worldwide for their quality and organoleptic properties, i.e., asphodel (Asphodelus
microcarpus), eucalyptus (Eucalyptus camaldulensis), strawberry tree (Arbutus unedo L.) and thistle (Galactites
tomentosa).
The main purpose of this contribution was to assess a botanical classification method by analyzing 125 honeys using Fourier-Transform Mid-Infrared (FT-MIR) spectroscopy. Spectra were used to develop a predictive model by means of linear discriminant analysis (LDA), using different spectral pretreatments techniques. Predictors were selected using principal component analysis (PCA) or genetic algorithms (GA) tools. In particular, GA selected 34 wavelengths in the spectral regions from 1726 to 1543 cm− 1, and the application of LDA to this selection provided an accuracy of 93.6% in cross validation and an accuracy of 87.8% in the validation on a test set of honey samples.
The results were compared, in terms of pros and cons, with other targeted and non-targeted approaches previously assessed by this research group on the same four unifloral honeys.
unifloral honeys appreciated worldwide for their quality and organoleptic properties, i.e., asphodel (Asphodelus
microcarpus), eucalyptus (Eucalyptus camaldulensis), strawberry tree (Arbutus unedo L.) and thistle (Galactites
tomentosa).
The main purpose of this contribution was to assess a botanical classification method by analyzing 125 honeys using Fourier-Transform Mid-Infrared (FT-MIR) spectroscopy. Spectra were used to develop a predictive model by means of linear discriminant analysis (LDA), using different spectral pretreatments techniques. Predictors were selected using principal component analysis (PCA) or genetic algorithms (GA) tools. In particular, GA selected 34 wavelengths in the spectral regions from 1726 to 1543 cm− 1, and the application of LDA to this selection provided an accuracy of 93.6% in cross validation and an accuracy of 87.8% in the validation on a test set of honey samples.
The results were compared, in terms of pros and cons, with other targeted and non-targeted approaches previously assessed by this research group on the same four unifloral honeys.
Tipologia CRIS:
1.1 Articolo in rivista
Keywords:
Honey
Genetic algorithms
Chemometrics
Fourier transform infrared spectroscopy
Linear discriminant analysis
Classification
Elenco autori:
Caredda, M.; Mara, A.; Ciulu, M.; Floris, I.; Pilo, M. I.; Spano, N.; Sanna, G.
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