Multi-modal graph neural networks for localized off-grid weather forecasting
Urgent applications like wildfire management and renewable energy generation require precise, localized weather forecasts near the Earth's surface. However, weather forecast products from machine learning or numerical weather models are currently generated on a global regular grid, on which a n...
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Zusammenfassung: | Urgent applications like wildfire management and renewable energy generation
require precise, localized weather forecasts near the Earth's surface. However,
weather forecast products from machine learning or numerical weather models are
currently generated on a global regular grid, on which a naive interpolation
cannot accurately reflect fine-grained weather patterns close to the ground. In
this work, we train a heterogeneous graph neural network (GNN) end-to-end to
downscale gridded forecasts to off-grid locations of interest. This multi-modal
GNN takes advantage of local historical weather observations (e.g., wind,
temperature) to correct the gridded weather forecast at different lead times
towards locally accurate forecasts. Each data modality is modeled as a
different type of node in the graph. Using message passing, the node at the
prediction location aggregates information from its heterogeneous neighbor
nodes. Experiments using weather stations across the Northeastern United States
show that our model outperforms a range of data-driven and non-data-driven
off-grid forecasting methods. Our approach demonstrates how the gap between
global large-scale weather models and locally accurate predictions can be
bridged to inform localized decision-making. |
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DOI: | 10.48550/arxiv.2410.12938 |