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Using machine learning on tree-ring data to determine the geographical provenance of historical construction timbers

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    0570811 - ÚVGZ 2024 RIV US eng J - Journal Article
    Kuhl, E. - Zang, C. - Esper, Jan - Riechelmann, D. F. C. - Büntgen, Ulf - Briesch, M. - Reinig, F. - Roemer, P. - Konter, O. - Schmidhalter, M. - Hartl, C.
    Using machine learning on tree-ring data to determine the geographical provenance of historical construction timbers.
    Ecosphere. Roč. 14, č. 3 (2023), č. článku e4453. ISSN 2150-8925. E-ISSN 2150-8925
    R&D Projects: GA MŠMT(CZ) EF16_019/0000797
    Research Infrastructure: CzeCOS IV - 90248
    Institutional support: RVO:86652079
    Keywords : artificial intelligence * dendrochronology * dendroprovenancing * European Alps * Extreme Gradient Boosting * Larix decidua * tree-ring density * tree-ring width
    OECD category: Environmental sciences (social aspects to be 5.7)
    Impact factor: 2.7, year: 2022
    Method of publishing: Open access
    https://esajournals.onlinelibrary.wiley.com/doi/10.1002/ecs2.4453

    Dendroclimatology offers the unique opportunity to reconstruct past climate at annual resolution and wood from historical buildings can be used to extend such information back in time up to several millennia. However, the varying and often unclear origin of timbers affects the climate sensitivity of individual tree-ring samples. Here, we compare tree-ring width and density of 143 living larch (Larix decidua Mill.) trees at seven sites along an elevational transect from 1400 to 2200 m asl and 99 historical tree-ring series to parametrize state-of-the-art classification models for the European Alps. To achieve geographical provenance of the historical series, nine different supervised machine learning algorithms are trained and tested in their capability to solve our classification problem. Based on this assessment, we consider a tree-ring density-based and a tree-ring width-based dataset for model building. For each of these datasets, a general not species-related model and a larch-specific model including the cyclic larch budmoth influence are built. From the nine tested machine learning algorithms, Extreme Gradient Boosting showed the best performance. The density-based models outperform the ring-width models with the larch-specific density model reaching the highest skill (f(1) score = 0.8). The performance metrics reveal that the larch-specific density model also performs best within individual sites and particularly in sites above 2000 m asl, which show the highest temperature sensitivities. The application of the specific density model for larch allows the historical series to be assigned with high confidence to a particular elevation within the valley. The procedure can be applied to other provenance studies using multiple tree growth characteristics. The novel approach of building machine learning models based on tree-ring density features allows to omit a common period between reference and historical data for finding the provenance of relict wood and will therefore help to improve millennium-length climate reconstructions.
    Permanent Link: https://hdl.handle.net/11104/0342148

     
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