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基于学习的自校正控制算法
引用本文:袁向阳,施颂椒,Masao Ikeda.基于学习的自校正控制算法[J].上海交通大学学报,2000,34(5):638-641.
作者姓名:袁向阳  施颂椒  Masao Ikeda
作者单位:1. 上海交通大学,自动化系,上海,200030
2. 日本大阪大学工学部,大阪,565-0834
摘    要:提出了一种基于学习的自校正控制算法,算法中包含一个自适应模型和多个固定模型,每一个模型都有一个相对应的控制器,在每一采样时刻,将当前时段内具有最小预测误差的模型对应的控制器的输出作为控制输入。在该算法中,自适应模型和自适应控制器的作用是确保闭环系统的稳定性和输出跟踪误差的渐近收敛性,而固定模型和固定控制器的作用是当被控对象的参数发生稳定性和输出跟踪误差的渐近收敛性,而固定模型和固定控制器的作用是当

关 键 词:自校正控制  自学习  暂态响应  算法  工业过程控制

Design of Learning-Based Self-Tuning Controller
YUAN Xiang-yang,SHI Song-jiao,Masao Ikeda.Design of Learning-Based Self-Tuning Controller[J].Journal of Shanghai Jiaotong University,2000,34(5):638-641.
Authors:YUAN Xiang-yang  SHI Song-jiao  Masao Ikeda
Abstract:A learning- based self- tuning control algorithm was proposed to improve the transient response when the variation of the unknown parameters of the plant is large during the operation.One adaptive model and several fixed models were included in the proposed algorithm.At every sampling instant,the controller corresponding to the model with least prediction error was selected as the final controller to the plant.The adaptive model and corresponding controllerwere used to ensure the closed- loop stability and to achieve zero tracking error,while the fixed models and corresponding controllers were used to improve the transient response when the unknown parameters of the plantvary.The closed- loop stability and the prop- erty ofzero tracking errorwere demonstrated.The two simulations reveal the effectiveness ofthe proposed scheme.
Keywords:self- tuning control  self- learning  transient response  stability  zero tracking error
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