论文标题
有效的本地和全球搜索策略,用于优化具有关节限制和碰撞约束的平行运动学机制
An efficient combined local and global search strategy for optimization of parallel kinematic mechanisms with joint limits and collision constraints
论文作者
论文摘要
平行运动学操纵器(PKM)的优化涉及难以形式化的几个约束,从而使最佳合成问题高度挑战。被动关节限制以及奇异性和自我收集的存在导致输入和输出参数之间存在复杂的关系。在本文中,通过将局部搜索Nelder-Mead算法与诸如低差异分布之类的全局搜索方法相结合来提出一种新颖的优化方法,以更快,更有效地探索优化空间。讨论了优化问题维度和不同约束的影响,以突出闭环运动链优化的复杂性。这项工作还介绍了用于考虑被动关节边界和奇异性的限制的方法,以避免这种机制内部碰撞。所提出的算法还可以优化棱镜执行器的长度,并且可以以模块化的方式添加约束,从而可以理解给定标准对最终结果的影响。提出的方法的应用用于优化两个不同程度的自由度的PKM。
The optimization of parallel kinematic manipulators (PKM) involve several constraints that are difficult to formalize, thus making optimal synthesis problem highly challenging. The presence of passive joint limits as well as the singularities and self-collisions lead to a complicated relation between the input and output parameters. In this article, a novel optimization methodology is proposed by combining a local search, Nelder-Mead algorithm, with global search methodologies such as low discrepancy distribution for faster and more efficient exploration of the optimization space. The effect of the dimension of the optimization problem and the different constraints are discussed to highlight the complexities of closed-loop kinematic chain optimization. The work also presents the approaches used to consider constraints for passive joint boundaries as well as singularities to avoid internal collisions in such mechanisms. The proposed algorithm can also optimize the length of the prismatic actuators and the constraints can be added in modular fashion, allowing to understand the impact of given criteria on the final result. The application of the presented approach is used to optimize two PKMs of different degrees of freedom.