Informed Learning for Estimating Drought Stress at Fine-Scale Resolution Enables Accurate Yield Prediction
By: Miro Miranda , Marcela Charfuelan , Matias Valdenegro Toro and more
Potential Business Impact:
Predicts crop harvests based on water.
Water is essential for agricultural productivity. Assessing water shortages and reduced yield potential is a critical factor in decision-making for ensuring agricultural productivity and food security. Crop simulation models, which align with physical processes, offer intrinsic explainability but often perform poorly. Conversely, machine learning models for crop yield modeling are powerful and scalable, yet they commonly operate as black boxes and lack adherence to the physical principles of crop growth. This study bridges this gap by coupling the advantages of both worlds. We postulate that the crop yield is inherently defined by the water availability. Therefore, we formulate crop yield as a function of temporal water scarcity and predict both the crop drought stress and the sensitivity to water scarcity at fine-scale resolution. Sequentially modeling the crop yield response to water enables accurate yield prediction. To enforce physical consistency, a novel physics-informed loss function is proposed. We leverage multispectral satellite imagery, meteorological data, and fine-scale yield data. Further, to account for the uncertainty within the model, we build upon a deep ensemble approach. Our method surpasses state-of-the-art models like LSTM and Transformers in crop yield prediction with a coefficient of determination ($R^2$-score) of up to 0.82 while offering high explainability. This method offers decision support for industry, policymakers, and farmers in building a more resilient agriculture in times of changing climate conditions.
Similar Papers
A Novel Deep Neural Network Architecture for Real-Time Water Demand Forecasting
Machine Learning (CS)
Predicts water use more accurately, with less complexity.
Water Demand Forecasting of District Metered Areas through Learned Consumer Representations
Machine Learning (CS)
Predicts water use better by grouping similar users.
Fine Flood Forecasts: Incorporating local data into global models through fine-tuning
Machine Learning (CS)
Helps predict floods better using local data.