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首页> 外文期刊>International Journal of Advanced Robotic Systems >Metaheuristic techniques comparison to optimize robotic end-effector behavior and its workspace
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Metaheuristic techniques comparison to optimize robotic end-effector behavior and its workspace

机译:元启发式技术比较,以优化机器人末端执行器行为及其工作空间

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Many robots are dedicated to replicate trajectories recorded manually; the recorded trajectories may contain singularities, which occur when positions and/or orientations are not achievable by the robot. The optimization of those trajectories is a complex issue and classical optimization methods present a deficient performance when solving them. Metaheuristics are well-known methodologies for solving hard engineering problems. In this case, they are applied to obtain alternative trajectories that pass as closely as possible to the original one, reorienting the end-effector and displacing its position to avoid the singularities caused by limitations of inverse kinematics equations, the task, and the workspace. In this article, alternative solutions for an ill-posed problem concerning the behavior of the robotic end-effector position and orientation are proposed using metaheuristic algorithms such as cuckoo search, differential evolution, and modified artificial bee colony. The case study for this work considers a three-revolute robot (3R), whose trajectories can contain or not singularities, and an optimization problem is defined to minimize the objective function that represents the error of the alternative trajectories. A tournament in combination with a constant of proportionality allows the metaheuristics to modify the gradual orientation and position of the robot when a singularity is present. Consequently, the procedure selects from all the possible elbow-configurations the best that fits the trajectory. A classical numerical technique, Newtona??s method, is used to compare the results of the applied metaheuristics, to evaluate their quality. The results of this implementation indicate that metaheuristic algorithms are an efficient tool to solve the problem of optimizing the end-effector behavior, because of the quality of the alternative trajectory produced.
机译:许多机器人专用于复制手动记录的轨迹。记录的轨迹可能包含奇异点,当机器人无法获得位置和/或方向时会发生奇异点。这些轨迹的优化是一个复杂的问题,经典的优化方法在求解它们时表现出不足的性能。元启发法是解决硬工程问题的众所周知的方法。在这种情况下,将它们应用于获得尽可能接近原始轨迹的替代轨迹,重新调整末端执行器的方向并移动其位置,以避免因反运动学方程式,任务和工作空间的限制而引起的奇异性。在本文中,使用元启发式算法(例如布谷鸟搜索,差异进化和修饰的人工蜂群),提出了有关机器人末端执行器位置和方向行为的不适定问题的替代解决方案。这项工作的案例研究考虑了一个三转机器人(3R),其轨迹可以包含或不包含奇点,并且定义了一个优化问题以最小化表示替代轨迹误差的目标函数。结合比例常数的锦标赛允许元启发法在存在奇异性时修改机器人的渐变方向和位置。因此,该程序从所有可能的肘部配置中选择最适合该轨迹的方式。一种经典的数值技术,牛顿(Newtona)方法,用于比较所应用的元启发法的结果,以评估其质量。该实现的结果表明,由于产生的替代轨迹的质量,元启发式算法是解决优化末端执行器行为问题的有效工具。

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