Process-Aware AI for Rainfall-Runoff Modeling: A Mass-Conserving Neural Framework with Hydrological Process Constraints
arXiv cs.LG / 3/27/2026
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Key Points
- The paper introduces a Mass-Conserving Perceptron (MCP) framework for rainfall-runoff modeling that enforces hydrological conservation principles while learning process relationships from data.
- It proposes a hierarchical approach that incrementally augments a single MCP storage unit with physically meaningful components (e.g., bounded soil storage, state-dependent conductivity, variable porosity, infiltration capacity, ponding, vertical drainage, and nonlinear water-table dynamics).
- Across 15 U.S. catchments in five hydroclimatic regions, progressively adding process structure generally improves predictive accuracy and interpretability versus a minimal MCP formulation.
- The benefits of specific process constraints are hydroclimate-dependent, with vertical drainage strongly improving skill in arid and snow-dominated basins but hurting performance in rainfall-dominated regions, while surface ponding shows relatively small impact.
- The best MCP variants nearly match a Long Short-Term Memory benchmark’s predictive skill while retaining explicit physical interpretability, supporting the value of embedding process constraints into AI architectures.
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