Forest harvest regimes were quantified in 11 European countries using re-measured plot data from forest inventories. Harvest regimes were described in terms of frequency and intensity of harvest events and the information from the forest inventory data was aggregated on a 1-degree resolution grid. In addition to this spatial characterisation of harvest regimes, we built predictive models using random forest algorithms, by linking the harvest variables to the pre-harvest status of the forest, but also the climatic, topographic and socio-economic factors, and the recent history of natural disturbances. These results showed variation in harvest strategies between countries and quantified the importance of different drivers in explaining harvest frequency and intensity.
Model simulations for 10 European countries were carried out in 0.5-degree resolution with the LPJ-GUESS model. For the simulation set-up, we used raster data for forest age in Europe and defined species compositions in each grid cell from the forest inventory data, leading to improved representation of current European tree species composition, that is strongly affected by human management. Forest structure in the simulation results were evaluated against the forest inventory data. This simulation set-up and evaluation builds a base for implementing the empirical harvest functions produced in ForMMI in the model.
Forest inventories in Europe planned and implemented by each country, leading to variation in the inventory sampling designs. This makes harmonisation of different data sets an important task for producing comparable information across different countries. Since this is a critical issue in ForMMI, we assessed how the different the sample plot designs between countries affect calculation of variables describing forest structure. These results showed that consistent estimated for tree size structure are achieved with most sample plot designs, when the size-dependent sampling probabilities of trees are accounted for. However, estimation of tree size structure from angle count plots has higher uncertainties. We also created an R package containing tools for carrying out similar assessments for user-defined variables, thus supporting data use of forest inventory data and harmonisation efforts in the future.