TY - JOUR
T1 - A fusion-based data assimilation framework for runoff prediction considering multiple sources of precipitation
AU - Bahrami, Maziyar
AU - Talebbeydokhti, Nasser
AU - Rakhshandehroo, Gholamreza
AU - Nikoo, Mohammad Reza
AU - Adamowski, Jan Franklin
N1 - Publisher Copyright:
© 2023 IAHS.
PY - 2023
Y1 - 2023
N2 - A fusion-based framework, in which a particle filter Markov chain Monte Carlo (PFMCMC) data assimilation method was coupled with the hydrological Sacramento Soil Moisture Accounting Model (SAC-SMA), was developed to improve the model’s capacity to predict one-day-ahead runoff. A case study was applied where mean daily precipitation from multiple sources served as forcing data in the data assimilation procedure, while ground station and multiple bias-corrected satellite-based precipitation datasets served as precipitation input datasets. The model training period used six years (2002–2007) of data to determine optimal weights through a genetic algorithm optimization model, while two years (2008–2009) were used to test the model. The proposed framework, applied to a real case study, improved SAC-SMA runoff prediction accuracy by incorporating precipitation datasets from multiple sources in the data assimilation procedure. On average, the PFMCMC-based data assimilation procedure led to a 13.7% improvement in SAC-SMA model performance metrics (NSE, MAB, RMSE, RMSRE, RMRE).
AB - A fusion-based framework, in which a particle filter Markov chain Monte Carlo (PFMCMC) data assimilation method was coupled with the hydrological Sacramento Soil Moisture Accounting Model (SAC-SMA), was developed to improve the model’s capacity to predict one-day-ahead runoff. A case study was applied where mean daily precipitation from multiple sources served as forcing data in the data assimilation procedure, while ground station and multiple bias-corrected satellite-based precipitation datasets served as precipitation input datasets. The model training period used six years (2002–2007) of data to determine optimal weights through a genetic algorithm optimization model, while two years (2008–2009) were used to test the model. The proposed framework, applied to a real case study, improved SAC-SMA runoff prediction accuracy by incorporating precipitation datasets from multiple sources in the data assimilation procedure. On average, the PFMCMC-based data assimilation procedure led to a 13.7% improvement in SAC-SMA model performance metrics (NSE, MAB, RMSE, RMSRE, RMRE).
KW - data assimilation
KW - fusion
KW - ORNESS weighting method
KW - particle filter
KW - SAC-SMA model
KW - satellite precipitation
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U2 - 10.1080/02626667.2023.2180375
DO - 10.1080/02626667.2023.2180375
M3 - Article
AN - SCOPUS:85150769952
SN - 0262-6667
JO - Hydrological Sciences Journal
JF - Hydrological Sciences Journal
ER -