4.8 Article

Improving water quantity simulation & forecasting to solve the energy-water-food nexus issue by using heterogeneous computing accelerated global optimization method

Journal

APPLIED ENERGY
Volume 210, Issue -, Pages 420-433

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.apenergy.2016.08.017

Keywords

Energy-water-food nexus; Parameter optimization; SCE-UA; Heterogeneous computing; OpenMP; CUDA Fortran

Funding

  1. IWHR Research & Development Support Program [JZ0145B052016, KY1605]
  2. Specific Research of China Institute of Water Resources and Hydropower Research [Fangji 1240]
  3. Third Sub-Project: Flood Forecasting, Controlling and Flood Prevention Aided Software Development - Flood Control Early Warning Communication System and Flood Forecasting, and Controlling and Flood Prevention Aided Software Deve [0628-136006104242, JZ0205A432013, SLXMB200902]
  4. Study of distributed flood risk forecast model and technology based on multi-source data integration and hydrometeorological coupling system [2013CB036400]
  5. IWHR application project of multi-source precipitation fusion and soil moisture remote sensing assimilation
  6. NNSF of China
  7. Numerical Simulation Technology of Flash Flood based on Godunov Scheme and Its Mechanism Study by Experiment [51509263]
  8. China Postdoctoral Science Foundation [2016M591214]
  9. National Natural Science Foundation of China [41501415]
  10. Key Laboratory of Water Cycle and Related Land Surface Processes, Institute of Geographic Sciences and Natural Resources Research, Chinese Academy of Sciences [2015A006]
  11. NVIDIA Corporation

Ask authors/readers for more resources

With continuous population increase and economic growth, challenges on securing sufficient energy, water, and food supplies are amplifying. Water plays the most important role in the energy-water-food (E-W-F) nexus issue such as energy supply (clean hydropower energy generation), water supply (drinking water), and food supply (agricultural irrigation water). Therefore, water quantity simulation & forecasting become an important issue in E-W-F nexus problem. Water quantity simulation & forecasting model, such as rainfall-runoff (RR) hydrological model has become a useful tool which can significantly improve efficiency of the hydropower energy generation, water supply management, and agricultural irrigation water utilization. The accuracy and reliability of the water quantity simulation & forecasting model are significantly affected by the model parameters. Therefore, demand of effective and fast model parameter optimization tool for solving the E-W-F nexus problem increases significantly. The shuffled complex evolution developed at University of Arizona (SCE-UA) has been recognized as an effective global model parameter optimization method for more than 20 years and is highly suited to solve the E-W-F nexus problem. However, the computational efficiency of the SCE-UA dramatically deteriorates when applied to complex E-W-F nexus problem. For the purpose of solving this conundrum, a fast parallel SCE-UA was proposed in this paper. The parallel SCE-UA was implemented on the novel heterogeneous computing hardware and software systems which were constituted by the Intel multi-core CPU, NVIDIA many-core GPU, and PGI Accelerator Visual Fortran (with OpenMP and CUDA). Performance comparisons between the parallel and serial SCE-UA were carried out based on two case studies, the Griewank benchmark function optimization and a real world IHACRES RR hydrological model parameter optimization. Comparison results indicated that the parallel SCE-UA outperformed the serial one and has good application prospects for solving the water quantity simulation & forecasting model parameter calibration in the E-W-F nexus problem. (C) 2016 Elsevier Ltd. All rights reserved.

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