应用多目标遗传算法进行二自由度微型并联机器人的优化设计

S. Stan, V. Maties, R. Balan
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引用次数: 1

摘要

本文主要研究了由两自由度固定杆和变杆微型并联机器人组成的Biglide和Bipod微型并联机器人的优化问题。对机器人的工作空间进行了表征,得到了机器人的反运动学方程。本文采用遗传算法(GA)进行优化,考虑传输质量指标、设计空间和工作空间。为了展示遗传算法的优势,我们将其应用于一个2自由度微型并联机器人的多准则优化问题。遗传算法(GA)是迄今为止最好、最健壮的一种进化算法。GA有很多优点。它可以快速扫描大量的解集。糟糕的建议不会对最终解决方案产生负面影响,因为它们只是被丢弃。研究结果表明,将遗传算法应用于此类优化问题,提高了优化结果的质量,为决策者提供了更好、更现实的支持。
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Multi-objective genetic algorithms applied for optimal design of 2 DOF micro parallel robots
This paper is aimed at presenting a study on the optimization of the Biglide and Bipod mini parallel robots, which comprises two-degree-of-freedom (DOF) mini parallel robots with constant and variable struts. The robot workspace is characterized and the inverse kinematics equation is obtained. In the paper, design optimization is implemented with genetic algorithms (GA) for optimization considering transmission quality index, design space and workspace. Here, intended to show the advantages of using the GA, we applied it to a multicriteria optimization problem of 2 DOF mini parallel robots. Genetic algorithms (GA) are so far generally the best and most robust kind of evolutionary algorithms. A GA has a number of advantages. It can quickly scan a vast solution set. Bad proposals do not affect the end solution negatively as they are simply discarded. The obtained results have shown that the use of GA in such kind of optimization problem enhances the quality of the optimization outcome, providing a better and more realistic support for the decision maker.
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