机械臂时间-冲击最优轨迹规划方法

    Time-impact optimal trajectory planning method for robotic arms

    • 摘要: 针对采用四足机器人加装机械臂进行机场异物检测清理时,机械臂运动过快会导致冲击增大影响四足机器人稳定性,而运动过慢则导致清理效率低下的问题,文章中提出了一种基于改进多目标粒子群优化算法的机械臂轨迹规划方法来平衡时间与冲击的关系。首先构造了3-5-3多项式以描述关节运动轨迹,随后将运动的总时间和平均冲击作为目标函数建立优化模型,借助经改进的多目标粒子群优化算法对其实施优化,最终利用归一化权重函数将多目标优化转化为单目标优化,进而获取实际工程所需的最优解。通过测试函数的代际距离和分布指标验证了所提算法的性能优于传统多目标粒子群算法和多目标遗传算法。通过对机械臂进行仿真得到了收敛性良好的Pareto前沿面,证明了所提方法的可行性。

       

      Abstract: To address the trade-off between stability and efficiency in airport foreign object debris cleaning tasks using a quadruped robot integrated with a robotic arm—where excessive arm motion speed amplifies joint impacts, destabilizing the quadruped platform, while overly slow motion compromises cleaning efficiency—this study proposed a robotic arm trajectory planning method based on an enhanced multi-objective particle swarm optimization algorithm. A 3-5-3 piecewise polynomial was first employed to formulate smooth joint trajectories. An optimization model was subsequently established with motion time and total joint impact as dual objectives, constrained by position, velocity, and acceleration limits. The IMOPSO algorithm resolved the multi-objective optimization problem, and a normalized weighting function converted the results into a single-objective solution for practical implementation. Benchmark tests using generational distance and spacing metric demonstrated the superior performance of the proposed algorithm over conventional multi-objective PSO and NSGA-II. Numerical simulations of the robotic arm further validate the method’s feasibility, yielding a well-converged Pareto front that effectively balances time-impact tradeoffs. The results demonstrated a computationally efficient framework for stability-critical trajectory planning in quadruped mobile manipulators.