Butt rot (BR) damages associated with Norway spruce (Picea abies [L.] Karst.) account for considerable economic losses in timber production across the northern hemisphere. While information on BR damages is critical for optimal decision-making in forest management, the maps of BR damages are typically lacking in forest information systems. We predicted timber volume damaged by BR at the stand-level in Norway using harvester information of 186,026 stems (clear-cuts), remotely sensed, and environmental data (e.g. climate and terrain characteristics). We utilized random forest (RF) models with two sets of predictor variables: (1) predictor variables available after harvest (theoretical case) and (2) predictor variables available prior to harvest (mapping case). We found that forest attributes characterizing the maturity of forest, such as remote sensing-based height, harvested timber volume and quadratic mean diameter at breast height, were among the most important predictor variables. Remotely sensed predictor variables obtained from airborne laser scanning data and Sentinel-2 imagery were more important than the environmental variables. The theoretical case with a leave-stand-out cross-validation achieved an RMSE of 11.4 $m^3ha^{-1}$ (pseudo $R^2$: 0.66) whereas the mapping case resulted in a pseudo $R^2$ of 0.60. When the spatially distinct k-means clusters of harvested forest stands were used as units in the cross-validation, the RMSE value and pseudo $R^2$ associated with the mapping case were 15.6 $m^3ha^{-1}$ and 0.37, respectively. This indicates that the knowledge about the BR status of spatially close stands is of high importance for obtaining satisfactory error rates in the mapping of BR damages.
翻译:与挪威树苗(Picea abies [L.] Karst.)有关的植物腐蚀(BR)损害(BR) 与挪威树苗(Picea abies [L.] Karst.) 有关的破坏(BR) 造成大量经济损失。虽然有关BR损害的信息对于森林管理的最佳决策至关重要,但森林信息系统中通常缺乏BR损害的地图。我们利用186,026根树枝(清除)、遥感和环境数据(例如气候和地形特征),预测BR在挪威的地面上受到木材损害的数量。我们使用随机森林(RF)模型,有两组预测或变量:(1) 收获后预测或变量(理论案例),以及(2) 收获前的预测或变量。我们发现,森林成熟的森林属性,如遥感高度、伐木量和振动平均直径直径直径等,是最重要的预测变量。从空中激光扫描数据中获取的遥感预测值值值值值值值值,Sentinel-2图像比环境变量更重要。在收获后可得到的近置值(R-stan-fore) r_ r_ ration ration = $ $ $ =x_ 15=xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx