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REINFORCEMENT LEARNING FOR CONTROL OF A SHAPE MEMORY ALLOY BASED SELF-FOLDING SHEET

机译:基于形状记忆合金自折叠板控制的强化学习

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摘要

Origami-inspired engineering provides engineers with new means for creating complicated three-dimensional structures through use of folding and fold-like operations. Motivated by the vision of origami engineering, we have created and modeled a reconfigurable self-folding sheet based on a laminate structure of shape memory alloy (SMA) surrounding a layer of elastomer. Folding behavior is achieved by activating an SMA layer through localized heating. In prior work, we demonstrated localized control of such a sheet using PID and On/Off type feedback controllers. The implementation of these control strategies requires several workarounds to deal with the highly nonlinear and hysteretic behavior of the SMA-based laminate sheet. In the current work, we use a reinforcement learning algorithm to learn control policies that better handle these aspects of the sheet behavior. We perform learning on a reduced order model of the sheet developed based on classical laminate plate theory. This significantly reduces computational costs compared to more complicated finite element modeling options. We demonstrate the effectiveness of the learned control policies in several folding scenarios on the reduced order model. Our results show that reinforcement learning can be a useful tool in feedback control of SMA-based structures.
机译:受折纸启发的工程技术为工程师提供了通过使用折叠和类似折叠操作来创建复杂的三维结构的新方法。出于折纸工程的愿景,我们基于形状记忆合金(SMA)围绕弹性体层的层压结构,创建了可重构的自折叠板并对其进行了建模。折叠行为是通过局部加热激活SMA层来实现的。在先前的工作中,我们演示了使用PID和On / Off类型的反馈控制器对这种纸进行局部控制的方法。这些控制策略的实施需要几种解决方法来应对SMA基层压板的高度非线性和滞后行为。在当前的工作中,我们使用强化学习算法来学习更好地处理工作表行为这些方面的控制策略。我们对基于经典层压板理论开发的板材的降阶模型进行学习。与更复杂的有限元建模选项相比,这大大降低了计算成本。我们在降阶模型上的几种折叠场景中证明了学习型控制策略的有效性。我们的结果表明,强化学习可以成为基于SMA的结构的反馈控制中的有用工具。

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