摘要
针对阳离子聚合反应器的温度分布建模与控制问题,提出了一种基于B样条神经网络的广义PI控制方法.首先采用B样条复合网络建立分布函数的动态和静态模型,并基于该模型,将分布函数的跟踪问题等效为动态权值向量的时间域跟踪问题.最后给出一种新型的广义PI控制方法,实现对给定温度分布的跟踪控制.同时,为了更好地抑制未知干扰、参数摄动以及模型不匹配等问题,模型权值状态、模型输出与实测温度分布所对应的权值误差都被引入到反馈控制回路,因此能够大大增强系统的鲁棒性与抗干扰能力.仿真结果表明该方法的可行性.
Model of temperature distribution in a tubular polymerization reaction is developed using a B-spline neural network,in which both dynamic and static network are applied to resolve the modeling of distribution function from a high dimensional data set.Based on this dynamic network model,a new-type generalized PI control algorithm has been studied.Then a control problem for distributed system is reduced to a tracking problem of nonlinear dynamic weights,which separates the time and the space effectively.In order to restrain unknown disturbances and parameter perturbation,not only the weights state of the network model are turn into feedback,but also the output error vector between the model and the real process is introduced at a certain percentage.This provides a feedback channel for the control,and therefore the robustness and anti-disturbance performance is largely enhanced.Simulation results demonstrate the effectiveness of the proposed method.
出处
《控制理论与应用》
EI
CAS
CSCD
北大核心
2012年第8期1043-1050,共8页
Control Theory & Applications
基金
supported by the National Natural Science Foundation of China under Grant(Nos.60974031,61174128)
the Fundamental Research Funds for the Central Universities,China(No.ZZ1223)
关键词
B样条网络
分布参数系统
阳离子聚合反应器
广义PI控制
B-spline network
distributed parameter system
the cationic polymerization reactor
generalized PI control