E-nose as a non-destructive and fast method for identification and classification of coffee beans based on soft computing models

Abstrakt

E-nose device, data from GC-MS (measured data), and statistical and mathematical analytic techniques like PCA, PLSR, LDA, and ANN was used in this study and then a GEP programing model developed to estimate caffeine content of samples. Various samples of coffee beans were tested, when caffeine was used as the reference data, R2 for the PLSR and ANN models were 0.9577 and 0.9634, respectively. R2 for the LDA model were identical to 0.9714. Additionally, R2 of the PLSR and ANN models for palmitic acid respectively, was reported 0.893 and 0.9388. Caffeine calibration data produced the greatest results for identifying, according to the information gathered, also GEP model R2 was reported 0.9581.

Autorzy

Ehsan Aghdamifar
Ehsan Aghdamifar
Vali Rasooli Sharabiani
Vali Rasooli Sharabiani
Ebrahim Taghinezhad
Ebrahim Taghinezhad
artykuł
SENSORS AND ACTUATORS B-CHEMICAL
Angielski
2023
393
134229
otwarte czasopismo
CC BY-NC-ND Uznanie autorstwa-Użycie niekomercyjne-Bez utworów zależnych 4.0
ostateczna wersja opublikowana
w momencie opublikowania
2023-06-28
200
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