基于数据驱动的积分二次约束的控制分配性能分析

Manuel Pusch, Daniel Ossmann, Harald Pfifer
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引用次数: 0

摘要

提出了一种在线性控制环内评价非线性控制分配系统性能的新方法。为此,制定了一个最坏情况增益分析问题,该问题可以很容易地通过使用积分二次约束(iqc)的鲁棒性分析的成熟方法来解决。它利用了这样一个事实,即控制分配系统通常是由iqc限定的无内存映射。采用数据驱动的方法寻找控制分配的输入/输出映射的最优边界。此外,引入了一个基于局部iqc的迭代过程,以确定有意义的采样限制,以获得不太保守但准确的结果。以风洞主动控制柔性机翼为例,验证了数据驱动性能分析方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Performance analysis of control allocation using data-driven integral quadratic constraints

A new method is presented for evaluating the performance of a nonlinear control allocation system within a linear control loop. To that end, a worst-case gain analysis problem is formulated that can be readily solved by means of well-established methods from robustness analysis using integral quadratic constraints (IQCs). It exploits the fact that control allocation systems are in general memoryless mappings that can be bounded by IQCs. A data-driven approach is used to find an optimal bound of the input/output mapping of the control allocation. Additionally, an iterative procedure based on local IQCs is introduced to determine meaningful sampling limits for less conservative yet accurate results. The effectiveness of the proposed data-driven performance analysis is shown at the example of an actively controlled flexible wing in a wind tunnel.

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