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Iterative learning control — An optimization paradigm

机译:迭代学习控制-优化范例

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The area if iterative learning control (ILC) has emerged from robotics to form a new and exciting challenge for control theorists and practitioners. There is great potential for applications to systems with a naturally repetitive action where the transfer of data from repetition (trial or iteration) can lead to substantial improvements in tracking performance. Although many of the challenges met in control systems design are familiar, there are several serious issues arising from the "2D" structure of ILC and a number of new problems requiring new ways of thinking and design. This paper introduces some of these issues from the point of view of the research group at Sheffield University and concentrates on linear systems and the potential for the use of optimization methods to achieve effective control.
机译:迭代学习控制(ILC)的领域已经从机器人技术中脱颖而出,这对控制理论家和从业者构成了新的,令人兴奋的挑战。应用到具有自然重复动作的系统中具有很大的潜力,其中重复(尝试或迭代)中的数据传输可以显着提高跟踪性能。尽管熟悉控制系统设计中遇到的许多挑战,但是ILC的“ 2D”结构和一些新问题都需要使用新的思维和设计方法来解决一些严重的问题。本文从谢菲尔德大学研究小组的角度介绍了其中一些问题,并着重介绍了线性系统以及使用优化方法实现有效控制的潜力。

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