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基于GMFAC的核电站稳压器压力优化控制 被引量:1

Optimal Control of Regulator Pressure in Nuclear Power Plant Based on GMFAC
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摘要 针对核电站稳压器压力控制系统的非线性、时变性等问题,本文在无模型自适应控制(MFAC)理论的基础上提出高"泛模型"无模型自适应控制(GMFAC)方法并设计控制器用于稳压器压力优化控制。对无模型自适应控制参数优化问题,采用一种基于动物行为的群体智能优化算法——人工鱼群算法(AFSA)。为了避免局部最优,提高收敛速度,同时采用一种改进的AFSA算法(PSO-AFSA),参考粒子群(PSO)算法的自身认知与群体认知行为,定义鱼群的生活行为,以提高算法的精度,达到快速获得全局最优的目的。仿真结果表明:人工鱼群算法优化后的GMFAC具有更加优良的性能指标和抗扰能力。 Aiming at the problems of nonlinear and time variability of pressure regulator control system in nuclear power plant,based on the model free adaptive control(MFAC) theory,an improved model free adaptive control(GMFAC) theory which is based on high "universal model" is proposed,and the relevant controller is designed to control the pressure of stabilizer.For the model free adaptive control parameter optimization problem,A swarm intelligence optimization algorithm based on animal behavior—artificial fish swarm algorithm(AFSA) is proposed.In order to avoid the local optimum and improve the convergence rate,an improved AFSA algorithm(PSO-AFSA) is proposed.In order to improve the accuracy of the algorithm and to improve the accuracy of the algorithm,a reference particle swarm optimization(PSO) algorithm is defined to improve the accuracy of the algorithm.The simulation results show that the GMFAC has better performance and disturbance rejection ability after optimization of the artificial fish swarm algorithm.
作者 唐瑶 TANG Yao(guiyang vocational and technical college meiwent,Guiyang of Guizhou Prov. 55008)
出处 《核科学与工程》 CAS CSCD 北大核心 2018年第3期487-493,共7页 Nuclear Science and Engineering
关键词 稳压器 无模型自适应控制 人工鱼群算法 粒子群算法 Pressure regulator Model-free adaptive control Artificial fish swarm algorithm Particle swarm optimization algorithm
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