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A Kind of Learning Gain Design Method for Energy-Punction-Based Iterative Learning Control Approaches

机译:一种学习获取设计方法,用于能量征收的迭代学习控制方法

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A new approach of Energy-Function-based Iterative Learning Control (EF-based ILC) with auto-tuning learning gains is proposed in this paper. In the proposed algorithm, the learning gain of the EF-based ILC scheme is iteration-dependent, i.e. the learning gain is adjusted after every iteration based on a Fuzzy Logic Controller (FLC). The incorporation of FLC into ILC provides the learning gain with the capability of changing itself by evaluating the previous learning results. As a consequence, both efficient learning process and learning convergence can be guaranteed with less system information. Moreover, the proposed fuzzy-rule-based tuning methodology offers a systematic way of learning gain design and greatly facilitates real-time implementations of EF-based ILC algorithms.
机译:本文提出了一种具有自动调整学习获取的能量函数的迭代学习控制(基于EF的ILC)的新方法。在所提出的算法中,基于EF的ILC方案的学习增益是迭代所依赖的,即基于模糊逻辑控制器(FLC)的每一次迭代后调整学习增益。 FLC进入ILC的内容提供了学习增益,通过评估先前的学习结果来改变自己的能力。因此,可以使用较少的系统信息保证有效的学习过程和学习融合。此外,所提出的基于模糊规则的调谐方法提供了一种系统的学习增益设计方式,并大大促进了基于EF的ILC算法的实时实现。

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