Chebyshev Lambda机构的多目标优化

Daniel Miler, Dominik Birt, Matija Hoić
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摘要

行走机构是一种解决方案,在这种情况下,车轮是不适用的,如不平整或台阶的表面和表面的障碍。此外,可以通过优化来定制机构路径以适应预期的工作条件。因此,本文提出了一种以单腿性能为核心的机构优化流程。通过Numerical Simulink计算确定目标函数值,然后将目标函数值输入非支配排序遗传算法(NSGA-II)进行优化。在接下来的每一代中,NSGA-II都提供了一套新的评估单元。该程序应用于切比雪夫lambda机制的单腿,以便更好地说明它,从而能够对候选对象进行全面分析。采用x方向长度、轨迹高度变化、足部最大加速度、足部速度波动4个目标函数进行多目标优化。计算时间约为2秒/单位。
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Multi-Objective Optimization of the Chebyshev Lambda Mechanism
Walking mechanisms are a solution for cases in which wheels are not applicable, such as uneven or stepped surfaces and surfaces withobstacles. Furthermore, it is possible to tailor mechanism footpaths to expected working conditions through optimization. Thus, in this paper, a mechanism optimization process was proposed, focusing on single-leg performance. Numerical Simulink calculations were used to determine objective function values, which were then input to a non-dominated sorting genetic algorithm (NSGA-II) for optimization. In each following generation, NSGA-II provided a new set of units for evaluation. The procedure was applied to the single leg of the Chebyshev lambda mechanism to better illustrate it, enabling a comprehensive analysis of candidates. Four objective functions (i.e., length in the x-direction, trajectory height variation, maximum foot acceleration, and foot speed fluctuation) were used to carry out a multi-objective optimization. The calculation time was approximately 2 s/unit.
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