4.5 Article

Fast hydrological model calibration based on the heterogeneous parallel computing accelerated shuffled complex evolution method

Journal

ENGINEERING OPTIMIZATION
Volume 50, Issue 1, Pages 106-119

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/0305215X.2017.1303053

Keywords

Model calibration; Xinanjiang model; heterogeneous parallel computing; OpenMP; CUDA

Funding

  1. Research on Key Technologies of Real Time Dynamic Control of Water Level in Flood Season of Cascade Reservoirs
  2. Natural Science Foundation of China [51509263, 41601569]
  3. China Postdoctoral Science Foundation on Grant [2016M600096, 2016M591214]
  4. IWHR Research & Development Support Program [JZ0145B052016]
  5. Major International (Regional) Joint Research Project - China's Water and Food Security under Extreme Climate Change Impact: Risk Assessment and Resilience [G0305, 7141101024]
  6. International Project [71461010701]
  7. hydro meteorological coupling system [2013CB036406]
  8. China National Flash Flood Disaster Prevention and Control Project [126301001000150068]
  9. Construction project of Shaanxi province medium and small river hydrological monitoring and forecast system - construction of Guanzhong and north of Shaanxi flood forecast scheme [JZ0205A112015]
  10. Third Sub-Project: Flood Forecasting, Controlling and Flood Prevention Aided Software Development - Flood Control Early Warning Communication System and Flood Forecasting, Controlling and Flood [0628136006104242, JZ0205A432013, SLXMB200902]
  11. National Key Research and Development Plan [2016YFC0803107]

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Hydrological model calibration has been a hot issue for decades. The shuffled complex evolution method developed at the University of Arizona (SCE-UA) has been proved to be an effective and robust optimization approach. However, its computational efficiency deteriorates significantly when the amount of hydrometeorological data increases. In recent years, the rise of heterogeneous parallel computing has brought hope for the acceleration of hydrological model calibration. This study proposed a parallel SCE-UA method and applied it to the calibration of a watershed rainfall-runoff model, the Xinanjiang model. The parallel method was implemented on heterogeneous computing systems using OpenMP and CUDA. Performance testing and sensitivity analysis were carried out to verify its correctness and efficiency. Comparison results indicated that heterogeneous parallel computing-accelerated SCE-UA converged much more quickly than the original serial version and possessed satisfactory accuracy and stability for the task of fast hydrological model calibration.

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