The Ideal Flow-Based Multi-Model Ensemble Strategy for Projecting Future Runoff with CMIP6 GCMs
Seung Taek Chae,
Mohammed Magdy Hamed,
Shamsuddin Shahid and
Eun-Sung Chung ()
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Seung Taek Chae: Seoul National University of Science and Technology, Faculty of Civil Engineering
Mohammed Magdy Hamed: Arab Academy for Science, Technology and Maritime Transport (AASTMT), Construction and Building Engineering Department, College of Engineering and Technology
Shamsuddin Shahid: National Center for Meteorology, Regional Climate Change Center
Eun-Sung Chung: Seoul National University of Science and Technology, Faculty of Civil Engineering
Water Resources Management: An International Journal, Published for the European Water Resources Association (EWRA), 2025, vol. 39, issue 14, No 5, 7457-7473
Abstract:
Abstract The increasing number of global climate models (GCMs) has intensified the uncertainty of future runoff projection. A multi-model ensemble (MME) approach has emerged to address this issue. However, ambiguities remain regarding whether to include all GCMs or select a subset based on performance, and whether to assign equal or unequal weights to GCMs during MME construction. This study used three MME generation methods which are climate-based, mixed climate-flow-based and flow-based approaches, coupled with two GCM selection methods (all GCMs and five best-performing GCMs), and two weight assignment methods (equal and unequal) to prepare the best MME to assess their performances in simulating historical runoff and reducing uncertainty in future simulations. The GCMs were selected from 20 coupled model intercomparison project phase 6 (CMIP6) models, while Storm Water Management Model (SWMM) was used for long-term runoff simulation based on MMEs for four shared socioeconomic pathway scenarios (SSPs). Four evaluation metrics were used to verify the performance of each method. The uncertainty in future runoff simulations was quantified using the reliability ensemble averaging (REA) method. The flow-based MME approach outperformed the other methods in simulating historical runoff and reducing uncertainty in future runoff simulations. The efficient subset of GCMs combined with unequal weight assignment proved more effective than using all GCMs with equal weights. The results of this study offer valuable insights for researchers conducting future runoff projections using GCMs.
Keywords: GCMs; Multi-model ensemble; REA; SWMM; TOPSIS (search for similar items in EconPapers)
Date: 2025
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DOI: 10.1007/s11269-025-04302-7
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