Switching Control Method for Optimal State Feedback Controller of Nuclear Reactor Power System

Airan Dang, Bowen Tu, Xiuchun Luan
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Abstract

Due to the nonlinearity of the reactor power system, the load tracking situation is closely related to the initial steady-state power and the final steady-state power after the introduction of the state feedback controller. Therefore, when the initial power and the final stable power are determined, the particle swarm optimization algorithm is used to find the optimal controller parameters to minimize the load tracking error. Since there are many combinations of initial stable power and final stable power, it is not possible to find the optimal controller parameters for all combinations, so the neural network is used to take the final stable power and the initial stable power as input, and the optimal controller parameters as the output. This method obtains the optimal state feedback controller switching control method can achieve a very excellent load tracking effect in the case of continuous power change, in the power change time point, the response is fast, in the controller parameter switching time point, the actual power does not fluctuate due to the change of controller parameters.
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核反应堆动力系统最优状态反馈控制器的切换控制方法
由于电抗器电力系统的非线性,引入状态反馈控制器后,负荷跟踪情况与初始稳态功率和最终稳态功率密切相关。因此,当初始功率和最终稳定功率确定后,采用粒子群优化算法寻找最优控制器参数,使负荷跟踪误差最小。由于初始稳定功率和最终稳定功率有多种组合,不可能找到所有组合的最优控制器参数,因此采用神经网络将最终稳定功率和初始稳定功率作为输入,将最优控制器参数作为输出。该方法获得的最优状态反馈控制器切换控制方法可以在功率连续变化的情况下达到非常优异的负载跟踪效果,在功率变化时间点上,响应速度快,在控制器参数切换时间点上,实际功率不因控制器参数的变化而波动。
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