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PeatDepth-ML: a global map of peat depth predicted using machine learning

J. Skye et al · Copernicus Publications · 2026

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<p>Peatlands are major carbon stores that are sensitive to climate change and increasingly affected by human activity. Accurate assessment of carbon stocks and modelling of peatland responses to future climate scenarios requires robust information on peat depth. We developed PeatDepth-ML, a machine learning framework that predicts global peat depths using a comprehensive database of peat depth measurements for training and validation. Building on an existing framework for mapping peatland extent, we incorporated new environmental datasets relevant to peat formation, revised cross-validation procedures, and introduced a custom scoring metric to improve predictions of deep peat deposits. To evaluate model sensitivity to sampling bias inherent in the training data, we applied a bootstrapping approach. Model performance, assessed using a blocked leave-one-out approach, yielded a root mean square error of 70.1 <span class="inline-formula">±</span> 0.9 cm and a mean bias error of 2.1 <span class="inline-formula">±</span> 0.7 cm, performing as well as or better than previously published models. The global map produced by PeatDepth-ML predicts a median peat depth of 134 cm (IQR: 87–187) over areas with more than 30 cm of peat. Like other regression-based models, PeatDepth-ML tended to predict toward mean training depths. An area of applicability analysis suggests the model has good applicability globally with the exception of some coastal and several mountainous regions like the Andes and the highlands of Borneo and New Guinea. Predictor selection was highly sensitive to training data subsets that arose from the bootstrapping approach, occasionally resulting in regional variations in accuracy. The bootstrapping approach and our area of applicability analysis thus clearly demonstrates the prime importance of quality training data in data-driven approaches like PeatDepth-ML. Using our predicted peat depth map, together with literature-derived peatland extent and estimates of bulk density and organic carbon content, we estimate global peat carbon stocks at 327–373 Pg C, consistent with previous global estimates.</p>

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APA 7

al, J. S. E. (2026). PeatDepth-ML: a global map of peat depth predicted using machine learning. https://doi.org/10.5194/bg-23-2959-2026

MLA

al, J. Skye et. "PeatDepth-ML: a global map of peat depth predicted using machine learning." 2026. https://doi.org/10.5194/bg-23-2959-2026.

Chicago

al, J. Skye et. 2026. "PeatDepth-ML: a global map of peat depth predicted using machine learning.". https://doi.org/10.5194/bg-23-2959-2026.

Harvard

al, J. S. E. 2026, PeatDepth-ML: a global map of peat depth predicted using machine learning, Copernicus Publications, available at: https://doi.org/10.5194/bg-23-2959-2026 [Accessed 29 Jun. 2026].

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Título
PeatDepth-ML: a global map of peat depth predicted using machine learning
Autor / colaboradores
J. Skye et al
Editorial
Copernicus Publications
Año de publicación
2026
ISSN
1726-4170
ISSN
1726-4170
Idioma
eng
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