The Biorobotics Institute, Scuola Superiore Sant'Anna, Pisa, Italy.
Bioinspir Biomim. 2017 Oct 16;12(6):066003. doi: 10.1088/1748-3190/aa839f.
The soft capabilities of biological appendages like the arms of Octopus vulgaris and elephants' trunks have inspired roboticists to develop their robotic equivalents. Although there have been considerable efforts to replicate their morphology and behavior patterns, we are still lagging behind in replicating the dexterity and efficiency of these biological systems. This is mostly due to the lack of development and application of dynamic controllers on these robots which could exploit the morphological properties that a soft-bodied manipulator possesses. The complexity of these high-dimensional nonlinear systems has deterred the application of traditional model-based approaches. This paper provides a machine learning-based approach for the development of dynamic models for a soft robotic manipulator and a trajectory optimization method for predictive control of the manipulator in task space. To the best of our knowledge this is the first demonstration of a learned dynamic model and a derived task space controller for a soft robotic manipulator. The validation of the controller is carried out on an octopus-inspired soft manipulator simulation derived from a piecewise constant strain approximation and then experimentally on a pneumatically actuated soft manipulator. The results indicate that such an approach is promising for developing fast and accurate dynamic models for soft robotic manipulators while being applicable on a wide range of soft manipulators.
生物附肢(如章鱼的腕足和大象的鼻子)的软性能力启发了机器人专家开发出它们的机器人对应物。尽管已经有相当大的努力来复制它们的形态和行为模式,但我们在复制这些生物系统的灵巧性和效率方面仍落后。这主要是由于缺乏对这些机器人的动态控制器的开发和应用,这些控制器可以利用软体操纵器所具有的形态特征。这些高维非线性系统的复杂性阻碍了传统基于模型的方法的应用。本文提供了一种基于机器学习的方法,用于开发软体机器人的动态模型和用于操纵器在任务空间中的预测控制的轨迹优化方法。据我们所知,这是首次对软体机器人的学习动态模型和派生任务空间控制器进行演示。该控制器在从分段常数应变逼近得出的章鱼启发式软体操纵器模拟中进行了验证,然后在气动驱动的软体操纵器上进行了实验验证。结果表明,这种方法在开发软体机器人的快速准确动态模型方面具有广阔的前景,同时也适用于广泛的软体机器人。