基于顺序二次规划的时间约束机器人任务能量最小化

M. Faroni, D. Gorni, A. Visioli
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引用次数: 1

摘要

在当今制造业中,降低自动化过程中的能耗是一个关键问题。在本文中,我们提出了一种基于顺序二次规划的机器人任务能量最小化的简单方法。该方法的目的是在不改变期望路径和给定周期时间的情况下,在节能意义上重新塑造给定的时序规律。由于非线性时间约束的迭代线性化,所得到的最小化问题只需使用普通的二次规划求解器即可求解,使得该方法适合在机器人工业控制器中直接实现。首先,该方法只考虑机械臂的运动学特性。然后直接包含动态模型,而不会显著增加方法的复杂性。在仿真环境下进行了验证,证明了该方法的有效性。
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Energy Minimization in Time-Constrained Robotic Tasks via Sequential Quadratic Programming
Reduction of the energy consumption in robotized processes is a key issue in nowadays manufacturing. In this paper, we propose a simple approach to energy minimization of robotic tasks with assigned cycle time based on sequential quadratic programming. The method aims at re-shaping a given timing law in the sense of energy saving, without modifying the desired path and the given cycle time. Thanks to the iterative linearization of the nonlinear time-constraint, the resulting minimization problem is solved by only using common quadratic programming solvers, making the method suitable for a direct implementation in robot industrial controllers. At first, the method is devised by only considering the kinematics of the manipulator. The dynamic model is then straightforwardly included, without significantly increasing the complexity of the method. Validation in simulation environment is provided in order to show the effectiveness of the methodology.
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