Mixed-integer programming for optimal path planning of robotic manipulators

Hao Ding, G. Reissig, Dominic Gross, O. Stursberg
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引用次数: 18

Abstract

One of the fundamental problems in the field of robotic motion planning is to safely and efficiently drive the end effector of a robotic manipulator to a specified goal position. Here, safety refers to the requirement that the robotic manipulator must have no collision with surrounding obstacles, and efficiency requires that some predefined cost function is minimized. In addition, kinematic and dynamic constraints have to be satisfied. These requirements lead to non-convex optimization problems, which may be approximated by mixed-integer linear programs (MILPs). The solution of the latter, however, is often intolerably complex due to a huge number of binary decision variables. In the present paper, we consider motion planning scenarios with polyhedral obstacles and velocity constraints for the joint positions of the robotic manipulator. We provide a geometric result whose application leads to MILPs with drastically reduced numbers of binary decision variables. Computational efficiency is demonstrated for two- and three-link manipulators interacting with obstacles, where the number of simplex steps during the MILP solution is reduced by a factor of roughly 200 over previous methods. We also demonstrate the application of the proposed method to an industrial robot.
机械臂最优路径规划的混合整数规划
机器人运动规划领域的基本问题之一是如何安全、高效地将机器人末端执行器驱动到指定的目标位置。在这里,安全性是指机器人机械臂必须不与周围障碍物发生碰撞的要求,而效率则是要求某个预定义的成本函数最小化。此外,还必须满足运动学和动力学约束。这些要求导致非凸优化问题,这可能是近似的混合整数线性规划(milp)。然而,后者的解决方案往往是难以忍受的复杂,由于大量的二进制决策变量。本文研究了具有多面体障碍物和速度约束的机器人关节位置运动规划问题。我们提供了一个几何结果,该结果的应用导致了二进制决策变量数量急剧减少的milp。对于与障碍物相互作用的两连杆和三连杆机械臂,计算效率得到了证明,其中MILP解决过程中的单纯形步骤数比以前的方法减少了大约200倍。我们还演示了该方法在工业机器人上的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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