Advances in Meteorology (Jan 2016)

Accelerating the SCE-UA Global Optimization Method Based on Multi-Core CPU and Many-Core GPU

  • Guangyuan Kan,
  • Ke Liang,
  • Jiren Li,
  • Liuqian Ding,
  • Xiaoyan He,
  • Youbing Hu,
  • Mark Amo-Boateng

DOI
https://doi.org/10.1155/2016/8483728
Journal volume & issue
Vol. 2016

Abstract

Read online

The famous global optimization SCE-UA method, which has been widely used in the field of environmental model parameter calibration, is an effective and robust method. However, the SCE-UA method has a high computational load which prohibits the application of SCE-UA to high dimensional and complex problems. In recent years, the hardware of computer, such as multi-core CPUs and many-core GPUs, improves significantly. These much more powerful new hardware and their software ecosystems provide an opportunity to accelerate the SCE-UA method. In this paper, we proposed two parallel SCE-UA methods and implemented them on Intel multi-core CPU and NVIDIA many-core GPU by OpenMP and CUDA Fortran, respectively. The Griewank benchmark function was adopted in this paper to test and compare the performances of the serial and parallel SCE-UA methods. According to the results of the comparison, some useful advises were given to direct how to properly use the parallel SCE-UA methods.