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Theoretical Insights on Contraction-type Iterative Learning Control for Biorobotic Systems with Preisach Hysteresis

机译:Preisach滞后的生物宿主系统收缩型迭代学习控制的理论见解

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This article offers new insights on the learning control approach developed by [Hu et al. IEEE/ASME Trans. Mechatronics, 19(1): 191-200, 2014]. Theoretical insights are further proposed to unveil why the contraction-type iterative learning control (ILC) schemes are suitable and effective in compensating for hysteresis, widely existing in biorobotic locomotion. Under such circumstances, iteration-based second-order dynamics is adopted to describe the biorobotic systems acted upon by one unknown Preisach hysteresis term. The memory clearing operator is mathematically proven to enable feasibility of contraction-type ILC methods, regardless of whether the initial state is accurately set or not. The simulation examples confirm that the developed iteration-based controller combined with a preceded operator effectively reduce tracking errors caused by the hysteresis nonlinearity. Furthermore, the new insights on theoretical feasibility are definitively corroborated in accordance with the previously published experimental results.
机译:本文提供了[HU等人开发的学习控制方法的新见解。 IEEE / ASME Trans。 Mechatronics,19(1):191-200,2014]。进一步提出了理论洞察,以推出为什么收缩型迭代学习控制(ILC)方案适合和有效补偿滞后,广泛存在于生物毒性运动中。在这种情况下,采用基于迭代的二阶动态来描述由一个未知的预震颤滞后项作出的生物毒理系统。内存清除操作员在数学上被证明,以实现收缩型ILC方法的可行性,无论初始状态是否准确设置。仿真示例确认,基于开发的基于迭代的控制器与前面的操作员组合的基于迭代器有效地减少了由滞后非线性引起的跟踪误差。此外,根据先前公布的实验结果明确地证实了理论可行性的新见解。

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