基于模型估计的多速率采样数据控制系统的稳定性

Shu-qing Peng, Xinling Shi, Junhua Zhang, Ai-min Miao, En-yong Wang
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引用次数: 0

摘要

研究了基于模型估计的多速率采样数据状态反馈控制系统的稳定性问题。为了在保证系统稳定的前提下扩大采样周期,提出了一种与实际系统结构相似的植物模型。基于模型状态生成状态反馈控制信号,该模型状态近似于被控对象的动态状态。利用概率渐近稳定性理论,提出了一种新的稳定性判据。所提出的准则给出了长采样周期的容忍界。由于考虑了采样周期的发生频率,所提出的准则比现有准则的结果更一般。数值算例和仿真结果表明,模型估计方法是有效的,新的稳定性准则具有较小的保守性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stability of multirate sampled-data control systems based on model estimation
This paper deals with the problem of the stability of multirate sampled-data state feedback control systems based on model estimation. In order to enlarge sampling periods while keep the system stable, a plant model was proposed, which had a similar structure to the actual plant. The state feedback control signal was generated based on the model state that approximated the plant dynamic state. Utilizing probability asymptotic stability theory, a new stability criterion was proposed. The proposed criterion gave a tolerance bound for long sampling periods. Since the occurrence frequency of sampling periods was taken into consideration, the proposed criterion gave a more general result than the existing ones. Numerical example and simulation results indicated that the method of model estimation was effective and the new stability criterion was less conservative.
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