基于强化学习的机械臂动载荷平滑稳定性粗糙度研究

Burak H. Kaygisiz, A. Erkmen, I. Erkmen
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引用次数: 5

摘要

本文介绍了一种新的分形/粗糙集建模方法来处理由单元映射得到的非线性系统的吸引域。将状态空间划分为单元,并使用单元到单元的映射找到稳定区域。我们的新方法给出了吸引力域的分形粗糙集恒等式,其中细胞根据它们的分形维数被识别为完全稳定,可能稳定和不稳定。在这里,稳定域是一个粗糙集,其中完全稳定的单元确定域的下近似,可能稳定的单元确定域的粗糙边界。因此,这些单元的总和形成了粗糙稳定域的上近似。该领域的边界是具有分形维数的粗糙单元集,作为粗糙度的属性被平滑,使用考虑到每个分形/粗糙单元的稳定性历史的强化学习技术,最大限度地减少了该区域固有的稳定性不确定性。这种新方法旨在增强控制器在稳定性不确定性下的性能,并应用于动态负载下的两轴机械臂。
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Smoothing stability roughness of a robot arm under dynamic load using reinforcement learning
We introduce in this paper a new fractal/rough set modeling approach to the domains of attraction of nonlinear systems obtained by cell mapping. The state space is partitioned into cells and the stability regions found using cell to cell mapping. Our new approach gives a fractal rough set identity to the domains of attraction where cells are identified according to their fractal dimension as fully stable, possibly stable and unstable. There the stability domain is a rough set where fully stable cells determine the lower approximation of the domain, and possibly stable cells its rough boundary. Consequently, the totality of these cells forms an upper approximation to the rough stability domain. The boundary of this domain which is a rough set of cells having a fractal dimension as an attribute of roughness is smoothed, minimising the inherent stability uncertainty of the region, using a reinforcement learning technique which takes into account the stability history of each fractal/rough cell. This new approach intended to reinforce the performance of a controller under stability uncertainty is applied for illustrative purposes to a two-axis robot arm under dynamic load.
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