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Model-free learning of wire winding control

机译:无线绕组控制无模型学习

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In this paper we introduce a reinforcement learning approach to optimize the wire profile generated by an automated wire winding machine. The wire winder spools wire onto large bobbins, while trying to maintain an even wire profile across the bobbin. Uneven profiles that contain bumps or gaps (i.e. areas with too much or too little wire) lead to snagged or breaking wires when the bobbin is unwound. By setting the turning points of the traversal system which distributes the wire over a spinning bobbin, a controller can influence the amount of wire spooled on the edges of the bobbin. The behavior of the wire, however, is highly non-deterministic and difficult to model with sufficient accuracy, making the application of a model based controller technique very difficult. This fact makes reinforcement learning a promising approach to apply here, as this technique can learn optimal policies relying only on interactions with the plant. We apply a learning algorithm called continuous reinforcement learning automata and empirically demonstrate that this technique can successfully optimize the wire profile, even on rounded bobbins that require continuous adaptation of the turning point.
机译:在本文中,我们介绍了一种加强学习方法来优化由自动绕线机产生的丝轮廓。电线卷绕器将线上卷绕到大型线轴上,同时试图在梭芯上保持均匀的丝轮廓。不均匀的档案,其包含颠簸或间隙(即带有太多或太少的电线的区域)导致梭芯展开时导致钩住或断裂线。通过设置在旋转线轴上分配电线的横向系统的转折点,控制器可以影响线轴上卷绕在梭芯的边缘上的线。然而,电线的行为是高度非确定性的,并且具有足够的精度,使得基于模型的控制器技术的应用非常困难。这一事实使加强学习在这里申请的有希望的方法,因为这种技术可以学习仅仅依赖于与工厂的相互作用的最佳政策。我们应用一种称为连续增强学习自动机的学习算法,并且经验证明该技术即使在需要连续适应转折点的圆形线轴上也可以成功优化电线型材。

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