Predictor inputs and label data for crop yield forecasting are not always available at the same spatial resolution. We propose a deep learning framework that uses high resolution inputs and low resolution labels to produce crop yield forecasts for both spatial levels. The forecasting model is calibrated by weak supervision from low resolution crop area and yield statistics. We evaluated the framework by disaggregating regional yields in Europe from parent statistical regions to sub-regions for five countries (Germany, Spain, France, Hungary, Italy) and two crops (soft wheat and potatoes). Performance of weakly supervised models was compared with linear trend models and Gradient-Boosted Decision Trees (GBDT). Higher resolution crop yield forecasts are useful to policymakers and other stakeholders. Weakly supervised deep learning methods provide a way to produce such forecasts even in the absence of high resolution yield data.
翻译:用于作物产量预测的预测投入和标签数据并非总能在同一空间分辨率中找到。我们提议一个深层次学习框架,使用高分辨率投入和低分辨率标签来制作两个空间水平的作物产量预测。预测模型由低分辨率作物面积和产量统计数据的薄弱监督加以校准。我们通过将欧洲五个国家(德国、西班牙、法国、匈牙利、意大利)和两个作物(软小麦和土豆)的区域产量从母统计区域分列到次区域,对该框架进行了评估。对受监督薄弱模型的性能与线性趋势模型和Gradient-boosted决策树(GDT)进行了比较。高分辨率作物产量预测对决策者和其他利益攸关者都有用。即使没有高分辨率产量数据,但受监督的深度学习方法也为生成此类预测提供了一种途径。