利用非线性模型预测控制提高基于ds的避碰可行性

S. Farsoni, Alessio Sozzi, M. Minelli, C. Secchi, M. Bonfè
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引用次数: 0

摘要

本文提出了一种新的机器人无碰撞可行运动规划策略,用于机器人在充满移动障碍物的环境中工作。该策略将基于动态系统的避障算法嵌入到模型预测控制(MPC)方法的约束非线性优化问题中。该问题的解决方案使机器人能够避免与移动障碍物的意外碰撞,同时保证其运动是可行的,并且不克服设计的速度和加速度约束。仿真结果表明,MPC预测范围的引入有助于优化求解器在非预测实现基于ds的方法会失败的情况下找到导致避障的解。最后,提出的策略已在实验工作单元中使用Franka-Emika Panda机器人进行验证。
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Improving the Feasibility of DS-based Collision Avoidance Using Non-Linear Model Predictive Control
In this paper we present a novel strategy for reactive collision-free feasible motion planning for robotic manipulators operating inside an environment populated by moving obstacles. The proposed strategy embeds the Dynamical System (DS) based obstacle avoidance algorithm into a constrained non-linear optimization problem following the Model Predictive Control (MPC) approach. The solution of the problem allows the robot to avoid undesired collision with moving obstacles ensuring at the same time that its motion is feasible and does not overcome the designed constraints on velocity and acceleration. Simulations demonstrate that the introduction of the MPC prediction horizon helps the optimization solver in finding the solution leading to obstacle avoidance in situations where a non predictive implementation of the DS-based method would fail. Finally, the proposed strategy has been validated in an experimental work-cell using a Franka-Emika Panda robot.
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