基于a星算法的移动机器人进化适应度函数研究

Shanker G. R. Prabhu, P. Kyberd, Jodie Wetherall
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引用次数: 6

摘要

影响进化机器人(ER)成功的因素之一是设计适应度函数的操作方式。虽然已经开发了基于需求的自定义适应度函数,但大多数情况下,为了减少计算时间,它们被定义为更简单的数学函数。在本文中,我们假设基于机器人特定任务域的既定技术的增量适应度函数将有助于进化过程。设计并实现了一种基于A-star算法的路径规划适应度函数,用于进化机器人的导航和避障任务的身体规划和控制器。研究表明,使用这一概念,在大多数情况下,与简单的仅基于距离的适应度函数相比,适应度机器人得到了进化。然而,由于具有a星适应度函数的进化器的性能变化,结果不确定。我们还发现了与适应度函数相关的问题,并根据实验的观察结果提出了设计未来适应度函数的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating an A-star Algorithm-based Fitness Function for Mobile Robot Evolution
One of the factors that affect the success of Evolutionary Robotics (ER) is the way fitness functions are designed to operate. While needs-based custom fitness functions have been developed, most of the time they have been defined in simpler mathematical functions to reduce the computation time. In this paper, we hypothesize that an incremental fitness function based on established techniques in specific task domains in robotics will aid the evolution process. An A-star algorithm-based fitness function for path planning is designed and implemented for evolving the body plans and controllers of robots for navigation and obstacle avoidance tasks. It has been shown that using this concept, fitter robots have evolved in most cases when compared to simple distance-only based fitness functions. However, due to variable performance of the evolver with the A-star fitness function, the results are inconclusive. We also identify problems associated with the fitness function and make recommendations for designing future fitness functions based on observations of the experiments.
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