基于无监督分类的机器人系统有效载荷估计

Luis Angel, J. Viola
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引用次数: 1

摘要

机器人系统可能受到外部扰动和参数不确定性的影响,从而改变其动力学行为。最常见的干扰之一是影响控制系统性能的有效载荷变化。如果载荷变化是已知的,则可以通过调整控制系统参数使其负面影响最小化。然而,当载荷变化未知时,控制系统的参数无法进行适当的调整。本文提出了一种利用无监督分类技术估计机器人系统载荷变化的方法。采用BSAS、MBSAS和Kmeans算法作为聚类技术。采用Silhouette指数和标准差作为性能指标对分类算法进行比较。结果表明,Kmeans算法在有效载荷变化分类方面具有较好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Payload estimation for a robotic system using unsupervised classification
A robotic system may be affected by external disturbances and parametric uncertainness, which change its dynamical behavior. One of the most common disturbances is the payload variation that affects the control system performance. If the payload variation is known, its negative effects can be minimized adjusting the control system parameters. However, when the payload variation is unknown, the control system parameters cannot be adjusted appropriately. This paper proposes a methodology for the payload variation estimation for a robotic system using unsupervised classification techniques. BSAS, MBSAS and Kmeans algorithms were employed as clustering techniques. The Silhouette index and the standard deviation were employed as performance indexes to compare the classification algorithms. Results showed that Kmeans algorithm has a better performance for the payload variation classification.
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