Hybrid streamflow modelling using machine learning and multi-model combination
Summary
Global hydrological models (GHMs) enable global estimation of freshwater availability, but
their uncertainties and limitations hinder precise predictions. Multi-model combination (MMC)
is a promising solution that combines the outputs of numerous hydrological models to create
an ensembled output that surpasses the individual hydrological models. Moreover, the use of
Machine Learning (ML) as a hybrid post-processing strategy is growing in popularity.
However, there is a need to combine these two methods and investigate their performance in
streamflow predictions. In this study, we demonstrate that using Random Forest (RF) as a nonlinear MMC approach significantly enhances streamflow forecasts when multiple global
hydrological models' outputs are combined. In streamflow forecasting, the RF-MMC method
outperforms individual models and linear MMC approaches, demonstrating its potential. In
addition, incorporating catchment attributes improved the generalizability of the RF-MMC
method when tested on a river basin that was not in the training set. Significant potential exists
for the application of RF-MMC to generate accurate streamflow forecasts, thereby providing
valuable support for water resource management, flood mitigation, and decision-making
processes. Future research can investigate additional machine learning algorithms and
incorporate additional variables to improve the predictive ability and generalizability of MMC
strategies in hydrological modelling.