A decision support tool to analyze the properties of wheat, cocoa beans and mangoes from their NIR spectra

Author:

Parrenin Loïc12ORCID,Danjou Christophe12ORCID,Agard Bruno12ORCID,Marchesini Giancarlo34,Barbosa Flávio4

Affiliation:

1. Laboratoire en Intelligence des Données (LID), Département de Mathématiques et Génie Industriel Polytechnique de Montréal Montreal Quebec Canada

2. Laboratoire Poly‐Industrie 4.0, Département de Mathématiques et Génie Industriel Polytechnique de Montréal Montreal Quebec Canada

3. Laboratory AI3 ‐ Artificial Intelligence for Industrial Innovation, UniSENAI Campus Florianópolis Florianópolis Santa Catarina Brazil

4. SENAI Innovation Institute for Embedded Systems Florianópolis Santa Catarina Brazil

Abstract

AbstractNear infrared spectroscopy (NIRS) is an analytical technique that offers a real advantage over laboratory analysis in the food industry due to its low operating costs, rapid analysis, and non‐destructive sampling technique. Numerous studies have shown the relevance of NIR spectra analysis for assessing certain food properties with the right calibration. This makes it useful in quality control and in the continuous monitoring of food processing. However, the NIR calibration process is difficult and time‐consuming. Analysis methods and techniques vary according to the configuration of the NIR instrument, the sample to be analyzed and the attribute that is to be predicted. This makes calibration a challenge for many manufacturers. This paper aims to provide a data‐driven methodology for developing a decision support tool based on the smart selection of NIRS wavelength to assess various food properties. The decision support tool based on the methodology has been evaluated on samples of cocoa beans, grains of wheat and mangoes. Promising results were obtained for each of the selected models for the moisture and fat content of cocoa beans (R2cv: 0.90, R2test: 0.93, RMSEP: 0.354%; R2cv: 0.73, R2test: 0.79, RMSEP: 0.913%), acidity and vitamin C content of mangoes (R2cv: 0.93, R2test: 0.97, RMSEP: 17.40%; R2cv: 0.66, R2test: 0.46, RMSEP: 0.848%), and protein content of wheat—DS2 (R2cv: 0.90, R2test:0.92, RMSEP: 0.490%) respectively. Moreover, the proposed approach allows results to be obtained that are better than benchmarks for the moisture and protein content of wheat—DS1 (R2cv: 0.90, R2test: 94, RMSEP: 0.337%; R2cv: 0.99, R2test: 0.99, RMSEP: 0.177%), respectively.Practical ApplicationThis research introduces a practical tool aimed at determining the quality of food by identifying specific light wavelengths. However, it is important to acknowledge potential challenges, such as overfitting. Before implementation, it is crucial for further research to address and mitigate the issues to ensure the reliability and accuracy of the solution. If successfully applied, this tool could significantly enhance the accuracy of near‐infrared spectroscopy in assessing food quality attributes. This advancement would provide invaluable support for decision‐making in industries involved in food production, ultimately leading to better overall product quality for consumers.

Funder

Natural Sciences and Engineering Research Council of Canada

Mitacs

Publisher

Wiley

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