LGGEO-PHJul 24, 2025

Multi-Model Ensemble and Reservoir Computing for River Discharge Prediction in Ungauged Basins

arXiv:2507.18423v12 citationsh-index: 1
Originality Incremental advance
AI Analysis

This provides a robust and efficient solution for flood prediction and water management in regions lacking river discharge data, though it is incremental as it builds on existing ensemble and reservoir computing techniques.

The paper tackled the problem of accurate river discharge prediction in ungauged basins with limited data by proposing HYPER, a method combining multi-model ensemble and reservoir computing, achieving a median KGE of 0.55 in data-scarce scenarios compared to an LSTM's -0.04, with 5% computational time in data-rich cases.

Despite the critical need for accurate flood prediction and water management, many regions lack sufficient river discharge observations, limiting the skill of rainfall-runoff analyses. Although numerous physically based and machine learning models exist, achieving high accuracy, interpretability, and computational efficiency under data-scarce conditions remains a major challenge. We address this challenge with a novel method, HYdrological Prediction with multi-model Ensemble and Reservoir computing (HYPER) that leverages multi-model ensemble and reservoir computing (RC). Our approach first applies Bayesian model averaging (BMA) to 43 "uncalibrated" catchment-based conceptual hydrological models. An RC model is then trained via linear regression to correct errors in the BMA output, a non-iterative process that ensures high computational efficiency. For ungauged basins, we infer the required BMA and RC weights by linking them to catchment attributes from gauged basins, creating a generalizable framework. We evaluated HYPER using data from 87 river basins in Japan. In a data-rich scenario, HYPER (median Kling-Gupta Efficiency, KGE, of 0.56) performed comparably to a benchmark LSTM (KGE 0.55) but required only 5% of its computational time. In a data-scarce scenario (23% of basins gauged), HYPER maintained robust performance (KGE 0.55) and lower uncertainty, whereas the LSTM's performance degraded significantly (KGE -0.04). These results reveal that individual conceptual hydrological models do not necessarily need to be calibrated when an effectively large ensemble is assembled and combined with machine-learning-based bias correction. HYPER provides a robust, efficient, and generalizable solution for discharge prediction, particularly in ungauged basins, making it applicable to a wide range of regions.

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