George Thuruthel Thomas, Renda Federico, Iida Fumiya
Bio-Inspired Robotics Lab, Department of Engineering, University of Cambridge, Cambridge, United Kingdom.
Khalifa University Center for Autonomous Robotic Systems, Khalifa University of Science and Technology, Abu Dhabi, United Arab Emirates.
Front Robot AI. 2020 Jul 21;7:95. doi: 10.3389/frobt.2020.00095. eCollection 2020.
Modeling of soft robots is typically performed at the static level or at a second-order fully dynamic level. Controllers developed upon these models have several advantages and disadvantages. Static controllers, based on the kinematic relations tend to be the easiest to develop, but by sacrificing accuracy, efficiency and the natural dynamics. Controllers developed using second-order dynamic models tend to be computationally expensive, but allow optimal control. Here we propose that the dynamic model of a soft robot can be reduced to first-order dynamical equation owing to their high damping and low inertial properties, as typically observed in nature, with minimal loss in accuracy. This paper investigates the validity of this assumption and the advantages it provides to the modeling and control of soft robots. Our results demonstrate that this model approximation is a powerful tool for developing closed-loop task-space dynamic controllers for soft robots by simplifying the planning and sensory feedback process with minimal effects on the controller accuracy.
软机器人的建模通常在静态层面或二阶全动态层面进行。基于这些模型开发的控制器有若干优点和缺点。基于运动学关系的静态控制器往往最容易开发,但要牺牲准确性、效率和自然动力学特性。使用二阶动态模型开发的控制器计算成本往往较高,但能实现最优控制。在此我们提出,由于软机器人具有如在自然界中通常观察到的高阻尼和低惯性特性,其动态模型可简化为一阶动力学方程,且准确性损失极小。本文研究了这一假设的有效性及其为软机器人建模和控制带来的优势。我们的结果表明,这种模型近似是一种强大的工具,通过简化规划和传感反馈过程,对控制器准确性影响最小,从而为开发软机器人的闭环任务空间动态控制器提供支持。