Automated Design of Simple and Robust Manipulators for Dexterous In-Hand Manipulation Tasks using Evolutionary Strategies

Andre Meixner, Christopher Hazard, N. Pollard
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引用次数: 5

Abstract

In spite of substantial progress, robust and dexterous in-hand manipulation remains a robotics grand challenge. Recent research has shown that optimization of robot hand morphology for specific tasks can result in custom hand designs that are low-cost, easy to maintain, and highly capable. However, the resulting manipulation strategies may not be very robust or generalizable in real-world situations. This paper shows that robustness can be improved dramatically by optimizing controls instead of contact force / trajectories and by considering uncertainty explicitly during the optimization process. We present a evolutionary algorithm based pipeline for co-optimizing hand morphology and control strategy over families of problems and initial states in order to achieve robust in-hand manipulation. We demonstrate that this approach produces robust results which utilize all surfaces of the hand and surprising dynamic motions. We showcase the advantage of optimizing joint limit values to create robust designs. Furthermore, we demonstrate that our approach is complementary to trajectory optimization based approaches and can be utilized to improve robustness of such results as well as to create custom hand designs from scratch. Results are shown for repositioning and reorienting diverse objects relative to the palm of the hand.
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基于进化策略的灵巧手操作任务简单鲁棒机械手的自动化设计
尽管取得了长足的进步,但强健而灵巧的手持操作仍然是机器人技术的一大挑战。最近的研究表明,针对特定任务优化机器人手形态可以实现低成本、易于维护和高性能的定制人手设计。然而,在实际情况下,生成的操作策略可能不是非常健壮或可推广的。本文表明,通过优化控制而不是优化接触力/轨迹,并在优化过程中明确考虑不确定性,可以显著提高鲁棒性。我们提出了一种基于进化算法的管道,用于对问题族和初始状态的手部形态和控制策略进行协同优化,以实现鲁棒的手部操作。我们证明,这种方法产生稳健的结果,利用手的所有表面和惊人的动态运动。我们展示了优化关节限值以创建稳健设计的优势。此外,我们证明了我们的方法是对基于轨迹优化的方法的补充,可以用来提高这些结果的鲁棒性,以及从头开始创建定制的手设计。结果显示,重新定位和重新定向不同的对象相对于手掌。
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