Towards the chemical verification of terroir using spectroscopy and machine learning for wine classification
Abstract
Terroir influences winegrape production and thereby wine quality, style, product image, and ultimately the reputation of a region. Typically defined in terms of climate, soil, topography, and the like, there could also be chemical verification of terroir based on the effect of biophysical factors on grape composition. This could be especially useful when focusing on finer scales of terroir, such as subregion or even single vineyard. To enable the implementation of data-driven terroir classification, this study employed an absorbance-transmittance and fluorescence excitation-emission matrix (A-TEEM) approach to determine the molecular fingerprints of bottle-aged Shiraz research wines produced from five subregions of the Barossa Valley in South Australia. Classification models were developed from A-TEEM data using extreme gradient boosting discriminant analysis (XGBDA) with cross-validation, yielding 100% accuracy for prediction of vintage year and 99.5% accuracy for subregion. Using an external validation approach based on splitting the data into training and testing sets, vintage year and subregion classification accuracies remained impressive, at 98.8% and 93.8%, respectively. Addressing model stability over time, classification of a subset of the bottle-aged wines using a previously developed XGBDA model yielded 100% correct class assignment according to vintage year and over 90% accuracy according to subregion for wines from 2018 and 2021. Importantly, 2021 wines were not included in the original model, which highlights the robustness of the approach when analysing new wines as well as those that have aged since the generation of the model. As such, the influence of terroir on wine molecular fingerprints was conserved over time and upon ageing of wine in bottle. Considering the close proximity of the subregional sites, this work emphasises the potential of A-TEEM and machine learning to objectively classify terroir at a fine scale based on potentially subtle differences in wine composition.
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Acknowledgments
Access to the research wines was made possible due to a Wine Australia funded project (UA1602) and is gratefully acknowledged. John Gledhill from WIC Winemaking Services is thanked for his assistance with wine sample collection. Technical support with the Aqualog instrument provided by Ruchira Ranaweera, Adam Gilmore, and Andrew Jane is appreciated. H.W. received financial support from the Mortlock Honours Scholarship and project funding from the School of Agriculture, Food and Wine, The University of Adelaide.
Issue: Terclim 2026
Type: Oral
Authors
1 School of Agriculture, Food and Wine, and Waite Research Institute, Adelaide University
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Keywords
A-TEEM spectroscopy, fluorescence, classification, extreme gradient boosting, Shiraz