10Windstorms cause major disturbances in European forests and forest management can play 11 a key role in making forests more persistent to disturbances. However, better information is 12 needed to support decision making that effectively accounts for wind disturbances. Here we 13show how empirical probability models of wind damage, combined with existing spatial 14 datasets, can be used to provide fine-scale spatial information about disturbance probability 15 over large areas. First, we created stand-level damage probability models with predictors 16 describing forest characteristics, recent forest management history and local wind, soil, site 17and climate conditions. We tested three different methods for creating the damage 18 probability models -generalized linear models (GLM), generalized additive models (GAM) 19 and boosted regression trees (BRT). Then, the damage probability maps were calculated by 20 combining the models (GLM, GAM and BRT) with GIS data sets representing the model 21predictors. Finally, we demonstrated the predictive performance of the maps with a large, 22 high spatial resolution (16 x 16 m 2 raster resolution), making it useful in assessing the 28 vulnerability of individual forest stands when making management decisions. The map is 29 also a powerful tool for communicating disturbance risks to forest owners and managers and 30 it has the potential to steer forest management practices to a more disturbance aware 31 direction. Our study showed that in spite of the inherent stochasticity of the wind and 32 damage phenomena at all spatial scales, it can be modelled with good accuracy across 33 large spatial scales when existing ground and earth observation data sources are combined 34 smartly. With improving data quality and availability, map-based risk assessments can be 35 extended to other regions and other disturbance types. 36