Spatiotemporal prediction and attribution of groundwater storage anomaly using enhanced hybrid deep learning modeling with uncertainty quantification | Synapse
March 3, 2026
Spatiotemporal prediction and attribution of groundwater storage anomaly using enhanced hybrid deep learning modeling with uncertainty quantification
Puntos clave
Groundwater storage anomalies were effectively predicted with high accuracy using advanced deep learning techniques, enhancing forecasting abilities.
The modeling approach integrates uncertainty quantification to evaluate prediction reliability, providing insights into potential groundwater resource management.
Using hybrid deep learning models, changes in groundwater storage over time and space were assessed, demonstrating effective anomaly attribution.
The findings highlight the need for robust modeling methods in environmental monitoring, which may improve management strategies for water resources.