2019
DOI: 10.3390/en12152883
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Impact of Tail Water Fluctuation on Turbine Start-Up and Optimized Regulation

Abstract: Small hydropower plants are usually run-of-river with a poor adjustment capacity, and, therefore, large tail water fluctuation may be induced during flood discharge. Meanwhile, the turbine units need to be quickly started-up due to the regulation requirements of the power grid. However, failures of the start-up and grid connection are often encountered because of severe tail water fluctuation. In order to achieve the rapid and stable start-up under tail water fluctuations and to reduce the negative effect of s… Show more

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Cited by 5 publications
(1 citation statement)
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“…Researchers have focused on the parameter tuning and optimization of PID controller and made considerable progress. Many evolutionary algorithms have been proposed to solve the parameter identification problem in turbine regulation system, such as genetic algorithm (GA) (Tapia et al, 2020), gravitational search algorithm (GSA) (Chen et al, 2014), particle swarm optimization (PSO) (Chen et al, 2019), and other improved algorithms (Lei et al, 2021; Rezghi et al, 2020). While the start-up scheme is optimized, the dynamic response indices related to the rotational speed such as the overshoot, the settling time, and the oscillation count are often considered in the objective functions.…”
Section: Introductionmentioning
confidence: 99%
“…Researchers have focused on the parameter tuning and optimization of PID controller and made considerable progress. Many evolutionary algorithms have been proposed to solve the parameter identification problem in turbine regulation system, such as genetic algorithm (GA) (Tapia et al, 2020), gravitational search algorithm (GSA) (Chen et al, 2014), particle swarm optimization (PSO) (Chen et al, 2019), and other improved algorithms (Lei et al, 2021; Rezghi et al, 2020). While the start-up scheme is optimized, the dynamic response indices related to the rotational speed such as the overshoot, the settling time, and the oscillation count are often considered in the objective functions.…”
Section: Introductionmentioning
confidence: 99%