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Design Controller Blade Pitch Angle Wind Turbine Using Hybrid Differential Evolution Algorithm-Particle Swarm Optimization

机译:使用混合差分演进算法粒子群优化设计控制器刀片桨距角风力涡轮机

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摘要

This paper investigates the application of blade pitch angle controller to stabilize the frequency and protection again disaster of wind turbine power system. The blade pitch angle controller optimized by one of the metaheuristic algorithm called Hybrid Differential Evolution Algorithm-ParticleSwarm Optimization (HDEAPSO). HDEAPSO is a hybrid algorithm between Differential Evolution Algorithm and Particle Swarm Optimization. To investigate and design the application of blade pitch angle can be done by performing the simulation using MATLAB. Simulation if performed by comparing thestability response of frequency and pitch angle at the wind turbine using conventional controller, optimized by PSO and using Hybrid Differential Evolution Algorithm-Particle Swarm Optimization (HDEAPSO). The simulation result represent that by optimizing blade pitch angle controller usingHybrid Differential Evolution-Particle Swarm Optimization can damp the frequency of wind turbine from ?0.01363 pu to ?0.1304 pu and reduce settling time from 46.86 second to 33.48 second when there are wind with speed 2 m/s.
机译:本文研究了叶片桨距角控制器的应用,稳定频率和防护再次风力涡轮机动力系统。由称为混合差分演进算法 - PlastLeswarm优化(HDeapso)的叶片俯仰角度控制器优化。 HDEAPSO是差分演进算法与粒子群优化之间的混合算法。为了研究和设计叶片俯仰角的应用可以通过使用MATLAB进行模拟来完成。通过使用传统控制器比较风力涡轮机在风力涡轮机的频率和俯仰角的测量性响应,通过PSO优化来进行模拟,并使用混合差分演进算法 - 粒子群(HDEAPSO)。仿真结果表示,通过使用混合差分进化粒子群优化优化刀片俯仰角度控制器,可以将风力涡轮机的频率从Δ01363PU抑制到Δ0.1304PU,减少46.86秒到33.48秒的稳定时间,当有速度2时有风。多发性硬化症。

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