Non-linear machine learning coupled near infrared spectroscopy enhanced model performance and insights for coffee origin traceability

Author:

Sim Joy1ORCID,McGoverin Cushla23,Oey Indrawati14,Frew Russell5,Kebede Biniam1

Affiliation:

1. Department of Food Science, University of Otago, Dunedin, New Zealand

2. Department of Physics, University of Auckland, Auckland, New Zealand

3. The Dodd-Walls Centre for Photonic and Quantum Technologies, Auckland, New Zealand

4. Riddet Institute, Palmerston North, New Zealand

5. Oritain Global Limited, Dunedin, New Zealand

Abstract

Over the past decade, there has been overwhelming interest in rapid and routine origin tracing and authentication methods, such as near infrared (NIR) spectroscopy. In a systematic and comprehensive approach, this study coupled NIR with advanced machine learning models to explore the origin classification of coffee at various scales (continental to regional level). Speciality green coffee beans were sourced from three continents, eight countries, and 22 regions. The dispersive bulk NIR spectra were used for spectral registration in the reflectance mode, and the obtained spectra were preprocessed with extended multiplicative scatter correction and mean centering. The classical linear partial least squares-discriminant analysis (PLS-DA) adequately predicted origin at the continental and country level, and showed promise at the regional level. Non-linear machine learning models improved predictions further, with the best accuracy found using random forest with accuracies up to 0.99. Discriminating wavelength regions and constituents were identified at each origin scale, with more minor wavelength regions selected by random forest. This proof of concept work demonstrated the potential of NIR spectroscopy coupled with machine learning for rapid origin classification of coffee from the continental to the regional level.

Publisher

SAGE Publications

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