YANG Zhiyuan, LÜ Yaogang. PARAMETER IDENTIFICATION AND ADAPTIVE CONTROL FOR TIME-VARYING TIME SYSTEMS[J]. INFORMATION AND CONTROL, 1993, 22(2): 76-82.
Citation: YANG Zhiyuan, LÜ Yaogang. PARAMETER IDENTIFICATION AND ADAPTIVE CONTROL FOR TIME-VARYING TIME SYSTEMS[J]. INFORMATION AND CONTROL, 1993, 22(2): 76-82.

PARAMETER IDENTIFICATION AND ADAPTIVE CONTROL FOR TIME-VARYING TIME SYSTEMS

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  • Received Date: September 27, 1992
  • Published Date: April 19, 1993
  • The adaptive control based on a series of Least-Squares algorithms can only be suitable for the processes with known and constant time delay. In this paper, an identification algorithm which can estimate time-varying delay and other parameters of processes is proposed. It will make the method of Least-Square identification and adaptive control used in a larger realm. An application example of the proposed algorithm in adaptive control system design is given, and the further study on this topic is discussed as well.
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