| Literature DB >> 25624249 |
Ernest Teye1, Xingyi Huang2, Livingstone K Sam-Amoah3, Jemmy Takrama4, Daniel Boison5, Francis Botchway6, Francis Kumi3.
Abstract
Rapid analysis of cocoa beans is an important activity for quality assurance and control investigations. In this study, Fourier transform near infrared spectroscopy (FT-NIRS) and chemometric techniques were attempted to estimate cocoa bean quality categories, pH and fermentation index (FI). The performances of the models were optimised by cross-validation and examined by identification rate (%), correlation coefficient (Rpre) and root mean square error of prediction (RMSEP) in the prediction set. The optimal identification model by back propagation artificial neural network (BPANN) was 99.73% at 5 principal components. The efficient variable selection model derived by synergy interval back propagation artificial neural network regression (Si-BPANNR) was superior for pH and FI estimation. Si-BPANNR model for pH was Rpre=0.98 and RMSEP=0.06, while for FI was Rpre=0.98 and RMSEP=0.05. The results demonstrated that FT-NIRS together with BPANN and Si-BPANNR model could successfully be used for cocoa beans examination.Entities:
Keywords: Cocoa bean categories; FT-NIRS; Fermentation index; Multivariate algorithms; pH
Mesh:
Year: 2014 PMID: 25624249 DOI: 10.1016/j.foodchem.2014.12.042
Source DB: PubMed Journal: Food Chem ISSN: 0308-8146 Impact factor: 7.514