PG-RSSNN adds recurrent structures to physics-guided neural networks to enable stable multi-step prediction that beats both physics-only and black-box models even with partial physics and limited data.
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Physics-Guided Recurrent State-Space Neural Networks for Multi-Step Prediction
PG-RSSNN adds recurrent structures to physics-guided neural networks to enable stable multi-step prediction that beats both physics-only and black-box models even with partial physics and limited data.