Abstract

This study investigated the strength and limitations of two widely used multi-model averaging frameworks—Bayesian model averaging (BMA) and reliability ensemble averaging (REA), in post-processing runoff projections derived from coupled hydrological models and climate downscaling models. The performance and weight distributions of five model ensembles were thoroughly compared, including simple equal-weight averaging, BMA, and REAs optimizing mean (REA-mean), maximum (REA-max), and minimum (REA-min) monthly runoff. The results suggest that REA and BMA both can synthesize individual models’ diverse skills with comparable reliability, despite of their different averaging strategies and assumptions. While BMA weighs candidate models by their predictive skills in the baseline period, REA also forces the model ensembles to approximate a convergent projection towards the long-term future. The type of incorporation of the uncertain future climate in REA weighting criteria, as well as the differences in parameter estimation (i.e., the expectation maximization (EM) algorithm in BMA and the Markov Chain Monte Carlo sampling method in REA), tend to cause larger uncertainty ranges in the weight distributions of REA ensembles. Moreover, our results show that different averaging objectives could cause much larger discrepancy than that induced by different weighting criteria or parameter estimation algorithms. Among the three REA ensembles, REA-max most resembled BMA because the EM algorithm of BMA converges to the minimum aggregated error, and thus emphasize the simulation of high flows. REA-min achieved better performance in terms of inter-annual temporal pattern, yet at the cost of compromising accuracy in capturing mean behaviors. Caution should be taken to strike a balance among runoff features of interest.

Highlights

  • Climate change is significantly altering runoff characteristics and affects water availability for both ecosystem and humans [1,2,3,4,5]

  • This study aims to investigate the merits of Bayesian Model Averaging (BMA) and reliability ensemble averaging (REA) in post-processing runoff projections derived from multiple combinations of downscaling models and hydrological models

  • Runoff projection under climate change is much more challenging than retrospective rainfall-runoff simulations, as uncertainties from climate models and emission scenarios compound with those inherited in the structure of downscaling models and hydrological models

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Summary

Introduction

Climate change is significantly altering runoff characteristics and affects water availability for both ecosystem and humans [1,2,3,4,5]. Due to the gap between spatial scales in global climate models (GCMs) and regional hydrological simulations, climate under future scenarios are usually reanalyzed with downscaling tools before fed into hydrological models for runoff projections. Various downscaling techniques and hydrological models have been developed and applied for understanding and quantifying climate change impacts on runoff [6,7]. Hydrological models range from simple water balance models (Mpelasoka et al, 2008), large scale energy-water balance equations [11], and conceptual rainfall-runoff models [12,13] to more complex landscape distributed models [14]. Previous studies suggest that no single model is perfect, and it is necessary to compare the strength and weakness of diverse downscaling methods and hydrological models before applying them on specific circumstances [9,15,16,17]

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