Comparing machine learning algorithms for simultaneous prediction of tree diameter distribution percentiles
Elsevier
2025
Ciceu_etal_2025_EcologInform_Comparing_machine.pdf - Publisher's version - 4.13 MB
How to cite: Albert Ciceu, Hasan Aksoy, Ovidiu Badea, Bronson P. Bullock, Jacinta Ukamaka Ezenwenyi, Jose Javier Gorgoso-Varela, Ştefan Leca, Thomas Ledermann, Harri Mäkinen, Friday N. Ogana, Sheng-I Yang, Lauri Mehtätalo, Comparing machine learning algorithms for simultaneous prediction of tree diameter distribution percentiles, Ecological Informatics, Volume 92, 2025, 103500,
https://doi.org/10.1016/j.ecoinf.2025.103500.
Pysyvä osoite
Tiivistelmä
Accurate predictions of tree diameter distributions are important for assessing forest structure, quantifying biodiversity, and estimating carbon sequestration. Percentile-based approaches are among the most effective methods for reconstructing diameter distributions from stand-level variables. In this study, we compared three modelling approaches, generalised least squares (GLS), Multi-Output Random Forest (MORF), and a multi-output deep learning-based model (MODL), across nine datasets representing different forest types and management regimes, aiming to predict simultaneously six diameter distribution percentiles. Our results show that MODL consistently outperformed both GLS and MORF in predictive accuracy across all nine training subsets and five out of nine test subsets, demonstrating strong generalisation across diverse forest types. MODL was particularly effective in achieving high accuracy while preserving the standard deviation of the response variables. While GLS performed slightly better in predicting the 100th percentile, MODL showed superior performance at the lower percentiles in most datasets. Interestingly, although MORF was generally the least accurate, it was the only method that consistently maintained the monotonicity of the predicted percentiles, a desirable property not inherently ensured by GLS or MODL, especially in the case of narrow diameter distributions. These findings underscore the strong potential of deep learning models for predicting diameter distribution percentiles and position MODL as a promising alternative to traditional parametric approaches.
ISBN
OKM-julkaisutyyppi
A1 Alkuperäisartikkeli tieteellisessä aikakauslehdessä
Julkaisusarja
Ecological informatics
Volyymi
92
Numero
Sivut
Sivut
13 p.
ISSN
1574-9541
1878-0512
1878-0512
