Ågren, Anneli
- Institutionen för skogens ekologi och skötsel, Sveriges lantbruksuniversitet
Forskningsartikel2021Vetenskapligt granskadÖppen tillgång
Agren, Anneli M.; Larson, Johannes; Paul, Siddhartho Shekhar; Laudon, Hjalmar; Lidberg, William
Spatially extensive high-resolution soil moisture mapping is valuable in practical forestry and land management, but challenging. Here we present a novel technique involving use of LIDAR-derived terrain indices and machine learning (ML) algorithms capable of accurately modeling soil moisture at 2 m spatial resolution across the entire Swedish forest landscape. We used field data from about 20,000 sites across Sweden to train and evaluate multiple ML models. The predictor features (variables) included a suite of terrain indices generated from a national LIDAR digital elevation model and ancillary environmental features, including surficial geology, climate and land use, enabling adjustment of soil moisture class maps to regional or local conditions. Extreme gradient boosting (XGBoost) provided better performance for a 2-class model, manifested by Cohen's Kappa and Matthews Correlation Coefficient (MCC) values of 0.69 and 0.68, respectively, than the other tested ML methods: Artificial Neural Network, Random Forest, Support Vector Machine, and Naive Bayes classification. The depth to water index, topographic wetness index, and `wetland' categorization derived from Swedish property maps were the most important predictors for all models. The presented technique enabled generation of a 3-class model with Cohen's Kappa and MCC values of 0.58. In addition to the classified moisture maps, we investigated the technique's potential for producing continuous soil moisture maps. We argue that the probability of a pixel being classified as wet from a 2-class model can be used as a 0-100% index (dry to wet) of soil moisture, and the resulting maps could provide more valuable information for practical forest management than classified maps.
LIDAR; Soil moisture; Machine learning; Extreme gradient boosting; Land-use management
Geoderma
2021, Volym: 404, artikelnummer: 115280
Utgivare: ELSEVIER
Markvetenskap
DOI: https://doi.org/10.1016/j.geoderma.2021.115280
https://res.slu.se/id/publ/113863