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On the Similarity and Challenges of Multiresonant and Iterative Learning Current Controllers for Grid Converters Under Frequency Fluctuations and Load Transients

机译:电网频率波动和负载瞬变下多谐振迭代学习电流控制器的相似性和挑战。

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There is an ongoing discussion among repetitive process control engineers whether to use multiresonant controllers or iterative learning ones. Power electronics engineers are often in favour of multiresonant controllers whereas motion control designers more often incorporate iterative learning controllers (ILC) into their systems. Both camps of researchers seem to be entrenched and rarely willing to admit that both techniques are capable of introducing exactly the same generating polynomial to the system. Moreover, both techniques in their basic forms suffer from a lack of robustness to a persevering non-zero control error, e.g. due to the physical limitations on the plant side. To render the techniques practical, several tweaks have to be made. Neither of them is also innately immune to the reference and/or disturbance signal frequency fluctuations. Even small frequency variations at the level of 1% can render the basic ILC impractical in the case of the grid-tied converter discussed in this paper. The paper is supposed to serve as the second chapter of the conversational guide on the similarity and challenges of multiresonant and iterative learning controllers. Alongside sparking the discussion, our main contribution here is a novel conditional learning concept within the ILC, inspired by the variable damping proposed for multiresonant controllers. An improvement gained by augmenting the basic ILC with the conditional learning is illustrated based on numerical simulations. Further possibilities of introducing an adaptation algorithm into the modified controller are suggested.
机译:重复性过程控制工程师之间正在讨论是使用多谐振控制器还是迭代学习控制器。电力电子工程师通常偏爱多谐振控制器,而运动控制设计人员通常将迭代学习控制器(ILC)集成到他们的系统中。这两个阵营的研究者似乎都根深蒂固,很少愿意承认这两种技术都能够向系统引入完全相同的生成多项式。而且,这两种技术的基本形式都缺乏对持久的非零控制误差(例如,零点误差)的鲁棒性。由于工厂方面的物理限制。为了使该技术实用,必须进行一些调整。它们中的任何一个都不固有地也不受参考和/或干扰信号频率波动的影响。在本文讨论的并网转换器的情况下,即使很小的频率变化(在1%的水平)也可能使基本的ILC变得不切实际。本文应该作为关于多共振和迭代学习控制器的相似性和挑战的会话指南的第二章。除了引发讨论之外,我们的主要贡献是在ILC中提出了一种新颖的条件学习概念,其灵感来自为多谐振控制器提出的可变阻尼。基于数值模拟,说明了通过使用条件学习扩展基本ILC所获得的改进。建议将自适应算法引入修改后的控制器的其他可能性。

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