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引用次数: 6

摘要

线性模型的识别特别适合作为(鲁棒)基于模型的控制设计的基础,最近引起了相当大的关注。系统识别社区和控制社区都花费了相当多的努力来开发解决该问题的一致方法。必须处理的典型问题包括最优实验设计、与反馈有关的系统近似和与控制有关的模型不确定性规范等问题。对这些问题的研究为弥合识别理论和控制理论之间的差距提供了一些尝试。在本讲座中,重点介绍了这些发展,特别关注控制相关近似模型的识别,使用闭环实验数据进行识别,模型不确定性的量化,以及使用由控制性能成本函数驱动的识别标准。
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Identification of experimental models for control design
The identification of linear models that are particularly suitable for serving as a basis for (robust) model-based control design has recently attracted considerable attention. Both the system identification community and the control community have spent considerable efforts in developing a coherent approach to the problem. Typical problems that have to be dealt with consider questions of optimal experiment design, feedback-relevant system approximations and control-relevant model uncertainty specifications. Research into these problems has delivered several attempts for bridging the gap between identification and control theory. In this lecture these developments are highlighted, directing particular attention to the identification of control-relevant approximate models, the use of closed-loop experimental data for identification, the quantification of model uncertainty, and the use of identification criteria that are motivated by control performance cost functions.
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