Evaluation of global optimization algorithms for parameter calibration of a computationally intensive hydrologic model Academic Article uri icon

abstract

  • With the popularity of complex hydrologic models, the time taken to run these models is increasing substantially. Comparing and evaluating the efficacy of different optimization algorithms for calibrating computationally intensive hydrologic models is becoming a nontrivial issue. In this study, five global optimization algorithms (genetic algorithms, shuffled complex evolution, particle swarm optimization, differential evolution, and artificial immune system) were tested for automatic parameter calibration of a complex hydrologic model, Soil and Water Assessment Tool (SWAT), in four watersheds. The results show that genetic algorithms (GA) outperform the other four algorithms given model evaluation numbers larger than 2000, while particle swarm optimization (PSO) can obtain better parameter solutions than other algorithms given fewer number of model runs (less than 2000). Given limited computational time, the PSO algorithm is preferred, while GA should be chosen given plenty of computational resources. When applying GA and PSO for parameter optimization of SWAT, small population size should be chosen. Copyright 2008 John Wiley & Sons, Ltd.

published proceedings

  • HYDROLOGICAL PROCESSES

altmetric score

  • 0.5

author list (cited authors)

  • Zhang, X., Srinivasan, R., Zhao, K., & Van Liew, M.

citation count

  • 122

complete list of authors

  • Zhang, Xuesong||Srinivasan, Raghavan||Zhao, Kaiguang||Van Liew, Mike

publication date

  • January 2009

publisher