Optimizing hydropower reservoir operation using hybrid genetic algorithm and chaos

  title={Optimizing hydropower reservoir operation using hybrid genetic algorithm and chaos},
  author={Chun-tian Cheng},
Genetic algorithms (GA) have been widely used to solve water resources system optimization. However, when applying GAs to solve large-scale and complex water reservoir system problems, premature convergence is one of the most frequently encountered difficulties and takes a large number of iterations to reach the global optimal solution and the optimization may get stuck at a local optimum. Therefore, a novel chaos genetic algorithm (CGA) based on the chaos optimization algorithm (COA) and… CONTINUE READING
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