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首页> 外文期刊>Energies >Design and Study on Sliding Mode Extremum Seeking Control of the Chaos Embedded Particle Swarm Optimization for Maximum Power Point Tracking in Wind Power Systems
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Design and Study on Sliding Mode Extremum Seeking Control of the Chaos Embedded Particle Swarm Optimization for Maximum Power Point Tracking in Wind Power Systems

机译:风力发电系统最大功率点跟踪的混沌嵌入式粒子群优化滑模极值搜索控制设计与研究

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This paper proposes a sliding mode extremum seeking control (SMESC) of chaos embedded particle swarm optimization (CEPSO) Algorithm, applied to the design of maximum power point tracking in wind power systems. Its features are that the control parameters in SMESC are optimized by CEPSO, making it unnecessary to change the output power of different wind turbines, the designed in-repetition rate is reduced, and the system control efficiency is increased. The wind power system control is designed by simulation, in comparison with the traditional wind power control method, and the simulated dynamic response obtained by the SMESC algorithm proposed in this paper is better than the traditional hill-climbing search (HCS) and extremum seeking control (ESC) algorithms in the transient or steady states, validating the advantages and practicability of the method proposed in this paper.
机译:提出了一种混沌嵌入粒子群优化(CEPSO)算法的滑模极值搜索控制(SMESC),应用于风电系统最大功率点跟踪设计。它的特点是通过CEPSO对SMESC中的控制参数进行了优化,从而不必更改不同风力涡轮机的输出功率,降低了设计的重复频率,并提高了系统控制效率。通过仿真设计风电系统控制,与传统的风电控制方法相比,本文提出的SMESC算法获得的仿真动态响应优于传统的爬山搜索(HCS)和极值搜索控制(ESC)算法在瞬态或稳态下,验证了本文提出的方法的优点和实用性。

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