Cross-Scale Reservoir Computing for large spatio-temporal forecasting and modeling
By: Nicola Alboré , Gabriele Di Antonio , Fabrizio Coccetti and more
Potential Business Impact:
Predicts ocean temperatures much better, longer.
We propose a new reservoir computing method for forecasting high-resolution spatiotemporal datasets. By combining multi-resolution inputs from coarser to finer layers, our architecture better captures both local and global dynamics. Applied to Sea Surface Temperature data, it outperforms standard parallel reservoir models in long-term forecasting, demonstrating the effectiveness of cross-layers coupling in improving predictive accuracy. Finally, we show that the optimal network dynamics in each layer become increasingly linear, revealing the slow modes propagated to subsequent layers.
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