Centre alpien de phytogéographie CAP, Fondation Aubert, Route de l'Adray 27, CH-1938, Champex-Lac, Switzerland.
Department of Ecology and Evolution, University of Lausanne, Biophore, CH-1015, Ecublens, Switzerland.
Sci Data. 2024 Feb 23;11(1):231. doi: 10.1038/s41597-024-03055-z.
We present forecasts of land-use/land-cover (LULC) change for Switzerland for three time-steps in the 21 century under the representative concentration pathways 4.5 and 8.5, and at 100-m spatial and 14-class thematic resolution. We modelled the spatial suitability for each LULC class with a neural network (NN) using > 200 predictors and accounting for climate and policy changes. We improved model performance by using a data augmentation algorithm that synthetically increased the number of cells of underrepresented classes, resulting in an overall quantity disagreement of 0.053 and allocation disagreement of 0.15, which indicate good prediction accuracy. These class-specific spatial suitability maps outputted by the NN were then merged in a single LULC map per time-step using the CLUE-S algorithm, accounting for LULC demand for the future and a set of LULC transition rules. As the first LULC forecast for Switzerland at a thematic resolution comparable to available LULC maps for the past, this product lends itself to applications in land-use planning, resource management, ecological and hydraulic modelling, habitat restoration and conservation.
我们展示了瑞士在 21 世纪三个时间点下,代表浓度路径 4.5 和 8.5 以及 100 米空间和 14 类主题分辨率下的土地利用/土地覆盖(LULC)变化预测。我们使用神经网络(NN)对每个 LULC 类的空间适宜性进行建模,使用了超过 200 个预测因子,并考虑了气候和政策变化。我们通过使用数据扩充算法来提高模型性能,该算法可以综合增加代表性不足的类别的单元格数量,从而导致总体数量差异为 0.053,分配差异为 0.15,这表明具有良好的预测准确性。然后,使用 CLUE-S 算法将这些特定于类别的 NN 输出的空间适宜性图合并为每个时间点的单个 LULC 图,考虑到未来的 LULC 需求和一组 LULC 转换规则。作为瑞士在主题分辨率方面的第一个 LULC 预测,与过去可用的 LULC 地图相当,该产品可应用于土地利用规划、资源管理、生态和水力建模、栖息地恢复和保护。