4.7 Article

Flood Control Operation of Reservoir Group Using Yin-Yang Firefly Algorithm

期刊

WATER RESOURCES MANAGEMENT
卷 35, 期 15, 页码 5325-5345

出版社

SPRINGER
DOI: 10.1007/s11269-021-03005-z

关键词

Flood control operation; Reservoir group; Swarm intelligence; YYFA algorithm; epsilon constrained method

资金

  1. key science and technology of the Henan province [202102310259, 202102310588]
  2. Henan province university scientific and technological innovation team [18IRTSTHN009]

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The study focused on the complex optimization problem of flood control operation (FCO) of a reservoir, establishing a reservoir group FCO model and developing a flood forecast model. Results from a case study showed that optimal operation can efficiently reduce storage capacity and lower flood peaks.
Flood control operation (FCO) of a reservoir is a complex optimization problem with a large number of constraints. With the rapid development of optimization techniques in recent years, more and more research efforts have been devoted to optimizing FCO problems. However, for solving large-scale reservoir group optimization problem, this is still a challenging task. In this work, a reservoir group FCO model is established with minimum flood volume stored in each reservoir and minimum peak flow of downstream control point during the dispatch process. At the same time, a flood forecast model for FCO of a reservoir group is developed by coupling Yin-Yang firefly algorithm (YYFA) with e constrained method. As a case study, the proposed model is applied to a three-reservoir flood control system in Luanhe River Basin consisting of reservoirs, river channels, and downstream control points. Results show that optimal operation of three reservoirs systems can efficiently reduce the occupied storage capacity for flood control and flood peaks at downstream control point of the basin. The proposed method can be extended to FCO of other reservoir groups with similar conditions.

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