Fluidically actuated soft robots have promising capabilities such as inherent compliance and user safety. The control of soft robots needs to properly handle nonlinear actuation dynamics, motion constraints, workspace limitations, and variable shape stiffness, so having a unique algorithm for all these issues would be extremely beneficial. In this work, we adapt Model Predictive Control (MPC), popular for rigid robots, to a soft robotic arm called SoPrA. We address the challenges that current control methods are facing, by proposing a framework that handles these in a modular manner. While previous work focused on Joint-Space formulations, we show through simulation and experimental results that Task-Space MPC can be successfully implemented for dynamic soft robotic control. We provide a way to couple the Piece-wise Constant Curvature and Augmented Rigid Body Model assumptions with internal and external constraints and actuation dynamics, delivering an algorithm that unites these aspects and optimizes over them. We believe that a MPC implementation based on our approach could be the way to address most of model-based soft robotics control issues within a unified and modular framework, while allowing to include improvements that usually belong to other control domains such as machine learning techniques.
翻译:在这项工作中,我们把最受僵硬机器人欢迎的模型预测控制(MPC)改造成一个软机器人臂,称为SoPrA。我们通过提议一个以模块化方式处理这些控制方法的框架来解决当前控制方法所面临的挑战。虽然以前的工作侧重于联合空间配制,但我们通过模拟和实验结果显示,在动态软机器人控制方面,任务空间磁盘可以成功实施,因此,对所有这些问题都有一个独特的算法。我们提供了一种方法,将小巧常态曲线和增强的硬体模型假设与内部和外部制约和动作动态相结合,提供一种将这些方面结合在一起并优化这些方面的算法。我们认为,基于我们的方法实施MPC可能是在统一和模块化框架内解决大多数基于模型的软机器人控制问题的方法,同时允许将通常属于其他控制领域的改进方法作为学习工具。