论文标题
实时可变形 - 感知模型的模型预测控制力控制
Real-Time Deformable-Contact-Aware Model Predictive Control for Force-Modulated Manipulation
论文作者
论文摘要
数十年来,对机器人操纵器的力调制已经进行了广泛的研究。但是,由于缺乏准确的相互作用接触模型和弱性能保证,它尚未在安全至关重要的应用中使用 - 其中很大一部分与调节相互作用力的调节有关。这项研究提出了一个高级框架,用于同时进行轨迹优化和对操纵器和软环境之间相互作用的力控制,这很容易受到外部干扰。应考虑滑动摩擦和正常接触力。软接触模型和操纵器的动力学同时融合到轨迹优化器中,以生成所需的运动和力轮廓。基于乘数的替代方向方法(ADMM)的受限优化框架已采用模型预测控制方式有效地生成实时最佳控制输入和高维状态轨迹。模型性能的实验验证是在使用笛卡尔太空力控制模式的已知材料特性的软基板上进行的。结果显示了在有效摩擦模型的有效范围内的多个笛卡尔动作的地面真相和基于实时模型的接触力和运动跟踪的比较。结果表明,基于接触模型的运动计划者可以补偿摩擦力和运动干扰,并提高整体运动和力跟踪精度。拟议的高级规划师有可能促进涉及操纵,精致和可变形组织的医疗任务的自动化。
Force modulation of robotic manipulators has been extensively studied for several decades. However, it is not yet commonly used in safety-critical applications due to a lack of accurate interaction contact modeling and weak performance guarantees - a large proportion of them concerning the modulation of interaction forces. This study presents a high-level framework for simultaneous trajectory optimization and force control of the interaction between a manipulator and soft environments, which is prone to external disturbances. Sliding friction and normal contact force are taken into account. The dynamics of the soft contact model and the manipulator are simultaneously incorporated in a trajectory optimizer to generate desired motion and force profiles. A constrained optimization framework based on Alternative Direction Method of Multipliers (ADMM) has been employed to efficiently generate real-time optimal control inputs and high-dimensional state trajectories in a Model Predictive Control fashion. Experimental validation of the model performance is conducted on a soft substrate with known material properties using a Cartesian space force control mode. Results show a comparison of ground truth and real-time model-based contact force and motion tracking for multiple Cartesian motions in the valid range of the friction model. It is shown that a contact model-based motion planner can compensate for frictional forces and motion disturbances and improve the overall motion and force tracking accuracy. The proposed high-level planner has the potential to facilitate the automation of medical tasks involving the manipulation of compliant, delicate, and deformable tissues.