AI Article Synopsis

  • The demand for organic cocoa beans has led to food fraud issues like mislabeling and adulteration, prompting calls for verification of authenticity in international markets.
  • This study developed robust models using laser-induced fluorescence (LIF) and chemometric techniques to quickly classify cocoa beans as organic or conventional, finding distinct differences in fluorescence intensity and peak wavelengths.
  • Advanced classification models like Linear Discriminant Analysis and Neural Networks demonstrated high accuracy rates (up to 100%) in distinguishing between the two types, showing that this method can help ensure integrity and reduce fraud in the cocoa supply chain.

Article Abstract

The craving for organic cocoa beans has resulted in fraudulent practices such as mislabeling, adulteration, all known as food fraud, prompting the international cocoa market to call for the authenticity of organic cocoa beans before export. In this study, we proposed robust models using laser-induced fluorescence (LIF) and chemometric techniques for rapid classification of cocoa beans as either organic or conventional. The LIF measurements were conducted on cocoa beans harvested from organic and conventional farms. From the results, conventional cocoa beans exhibited a higher fluorescence intensity compared to organic ones. In addition, a general peak wavelength shift was observed when the cocoa beans were excited using a 445 nm laser source. These results highlight distinct characteristics that can be used to differentiate between organic and conventional cocoa beans. Identical compounds were found in the fluorescence spectra of both the organic and conventional ones. With preprocessed fluorescence spectra data and utilizing principal component analysis, classification models such as Linear Discriminant Analysis (LDA), Support Vector Machine (SVM), Neural Network (NN) and Random Forest (RF) models were employed. LDA and NN models yielded 100.0% classification accuracy for both training and validation sets, while 99.0% classification accuracy was achieved in the training and validation sets using SVM and RF models. The results demonstrate that employing a combination of LIF and either LDA or NN can be a reliable and efficient technique to classify authentic cocoa beans as either organic or conventional. This technique can play a vital role in maintaining integrity and preventing fraudulent practices in the cocoa bean supply chain.

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Source
http://dx.doi.org/10.1007/s10895-023-03499-3DOI Listing

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