基于RBF神经网络的连续搅拌槽式反应器非线性PID控制器参数优化

Xingxi Shi, Honghao Zhao, Zheng Fan
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引用次数: 0

摘要

连续搅拌槽式反应器(CSTR)温度系统具有强非线性和参数不确定的特点。线性PID控制器难以满足CSTR的控制要求。非线性PID (NPID)可以提高非线性被控对象的控制效果,但由于非线性功能选择和人工参数整定的影响,当参数不确定或受到外界干扰时,系统的控制性能会下降。为了提高NPID控制器的自适应能力,提出了RBF-NPID控制算法。利用RBF神经网络的学习能力在线调整NPID参数,提高系统的控制性能。为了验证所提算法的有效性,在MATLAB中建立了CSTR模型,并进行了算法对比研究。仿真结果表明了该算法的有效性和优越性。
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Parameter optimization of nonlinear PID controller using RBF neural network for continuous stirred tank reactor
The temperature system of the Continuous Stirred Tank Reactor (CSTR) has the characteristics of strong nonlinearity and uncertain parameters. The linear PID controller makes it difficult to meet CSTR’s control requirements. Nonlinear PID (NPID) can improve the control effect of nonlinear controlled objects, but due to the influence of nonlinear function selection and manual parameter setting, when parameters are uncertain or subject to external interference, the control performance of the system will decrease. To improve the adaptive capability of the NPID controller, the RBF-NPID control algorithm is proposed. The learning ability of RBF neural network is used to adjust NPID parameters online to improve the control performance of the system. In order to verify the effectiveness of the proposed algorithm, a CSTR model was established in MATLAB and algorithm comparison research was carried out. Simulation results show the effectiveness and superiority of the proposed algorithm.
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