VRFT与集隶属度数据驱动控制器设计技术的比较研究:主动悬架调校案例

F. Valderrama, F. Ruiz
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引用次数: 2

摘要

在本章中,我们比较了数据驱动控制(DDC)设计问题的两种方法。在该框架中,控制器直接从数据中识别,避免了工厂识别步骤。所分析的方法是虚拟参考反馈调谐(VRFT)和集成员调谐(SMT)控制器。它们在噪声影响实验数据的假设和选择最优控制器的准则上存在差异。前一种策略假设未知信号的随机描述,而后者施加未知但有界(UBB)噪声结构。描述了这两种方法,并报告了它们的主要理论结果。这两种方法在一个实验案例研究中进行了评估,包括主动悬架(AS)系统的控制器调谐。进行了3次蒙特卡罗实验,其中使用两种方法从受测量噪声影响的数据中导出100个控制器,并在实验试验台上对其性能进行了评估。结果表明,当数据集的大小远远大于控制器参数向量的维数时,两种方法都提供了相似的性能。然而,对于简化的数据集,SMT方法给出了一致的结果,而VRFT方法无法提取有用的信息。当这两种方法应用于受过程干扰影响的数据集时,观察到相同的行为。可以观察到,对于简化的数据集,使用集隶属度方法得到的循环的均方根误差可以降低30倍。
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A comparative study of VRFT and set-membership data-driven controller design techniques: active suspension tuning case
In this chapter, we compare two approaches to the data-driven control (DDC) design problem. In this framework, the controllers are directly identified from data avoiding the plant identification step. The analyzed approaches are virtual reference feedback tuning (VRFT) and set-membership tuning (SMT) controller. They differ in the assumptions about the noise affecting the experimental data and the criteria to select an optimal controller. The former strategy assumes an stochastic description of the unknown signals, while the latter imposes an unknown but bounded (UBB) noise structure. Both methodologies are described and their main theoretical results are reported. The two approaches are evaluated on an experimental case study, consisting of the controller tuning for an active suspension (AS) system. Three Monte Carlo experiments are performed, where 100 controllers are derived from data affected by measurement noise using both methods, and their performance is evaluated on the experimental test-bench. Results show that both approaches offer a similar performance when the size of the dataset is much larger than the dimension of the controller parameters vector. However, for reduced datasets, the SMT approach gives consistent results while the VRFT method is not able to extract useful information. The same behavior is observed when the two approaches are applied to datasets affected by process disturbances. It is observed that the root mean squared error of the resulting loops can be up to 30 times lower using the set membership method for reduced datasets.
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