具有非线性畸变系统的鲁棒数据驱动控制

Achille Nicoletti, Christoph Kammer, A. Karimi
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引用次数: 0

摘要

用于研究线性系统行为的频域方法已经成为控制系统工程师的基本工具。然而,由于对当今工业系统的性能要求越来越高,在现代控制应用中,某些非线性的影响不能再被忽视;对于这样的系统,直接应用这些频域工具是不可能的。然而,在目前的文献中,存在频域方法,其中非线性系统的潜在线性动力学可以在识别实验中捕获;以这种方式,非线性系统被一个带噪声源的线性模型所取代,在噪声源中,非线性系统的最佳线性逼近得到了与频率相关的不确定性。利用从识别实验中获得的频域数据和不确定性,鲁棒控制算法可以用来确保底层线性系统的性能。本章提出了一种数据驱动的鲁棒控制策略,该策略实现了一种凸优化算法,以确保非线性扭曲线性系统的性能和闭环稳定性(通过考虑模型参考目标)。通过设计具有非线性扭转动力学的惯性定位系统的控制器,说明了数据驱动方法的有效性。
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Robust data-driven control of systems with nonlinear distortions
The frequency-domain methods that exist for investigating the behaviour of linear systems have become fundamental tools for the control systems engineer. However, due to the increasedperformance demands on today's industrial systems, the effects of certain nonlinearities can no longer be neglected in modern control applications; for such systems, direct application of these frequency-domain tools is not possible. In the current literature, however, frequency-domain methods exist where the underlying linear dynamics of a nonlinear system can be captured in an identification experiment; in this manner, the nonlinear system is replaced by a linear model with a noise source where a best linear approximation of the nonlinear system is obtained with an associated frequency-dependent uncertainty. With the frequency-domain data and uncertainty obtained from an identification experiment, robust control algorithms can then be used to ensure performance for the underlying linear system. This chapter presents a data-driven robust control strategy which implements a convex optimization algorithm to ensure the performance and closed-loop stability of a linear system that is subject to nonlinear distortions (by considering a model-reference objective). The effectiveness of the proposed data-driven method is illustrated by designing a controller for an inertial positioning system that possesses nonlinear torsional dynamics.
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