Journal of Hydroinformatics (Nov 2021)

Improved wind-driven optimization algorithm for the optimization of hydropower generation from a reservoir

  • Yin Liu,
  • Shuanghu Zhang,
  • Yunzhong Jiang,
  • Dan Wang,
  • Qihao Gu,
  • Zhongbo Zhang

DOI
https://doi.org/10.2166/hydro.2021.174
Journal volume & issue
Vol. 23, no. 6
pp. 1197 – 1213

Abstract

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The improvement of reservoir operation optimization (ROO) can lead to comprehensive economic benefits as well as sustainable development of water resources. To achieve this goal, an algorithm named wind-driven optimization (WDO) is first employed for ROO in this paper. An improved WDO(IWDO) is developed by using a dynamic adaptive random mutation mechanism, which can avoid the algorithm stagnation at local optima. Moreover, an adaptive search space reduction (ASSR) strategy that aims at improving the search efficiency of all evolutionary algorithms is proposed. The application results of the Goupitan hydropower station show that IWDO is an effective and viable algorithm for ROO and is capable of obtaining greater power generation compared to the classic WDO. Moreover, it is shown that the ASSR strategy can improve the search efficiency and the quality of scheduling results when coupled with various optimization algorithms such as IWDO, WDO and particle swarm optimization. HIGHLIGHTS A new algorithm named wind-driven optimization algorithm (WDO) is first introduced to reservoir operation optimization.; WDO is improved by two novel strategies.; One of the strategies mentioned in point 2 is also suitable for other algorithms to improve the efficiency of algorithms.;

Keywords