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A Generalized 3-D Path Planning Method for Robots Using Genetic Algorithm with An Adaptive Evolution Process

机译:遗传算法的自适应进化通用3D机器人路径规划方法

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Traditionally, path planning for robots is modeled as optimization problems. One of the most commonly used optimization strategies is Genetic Algorithm (GA) since it always guarantees a nearly shortest path even a global path can not be obtained within a reasonable time. In fact, the performance enhancement of GA is still an open topic for researchers by designing different genetic operators. In addition to this, we propose a new criterion for the selection of genetic operators during evolution in order to further facilitate the searching efficiency. In this paper, we propose a generalized 3-D path planning method for robots using GA with an adaptive evolution process. Based on the framework of traditional GA, we first introduce a new genetic operator, called Bind-NN which randomly divides and recombines an elitist chromosome based on nearest neighbor. We also show that by choosing the fitness variance of the shortest path in last generations as a guidance in selecting genetic operators during evolution, the search efficiency can be significantly improved, thus proposing a genetic operators selection scheme. In the latter part of this paper, we present the algorithm evaluation by stimulating a sample path planning problem on a structural frame. With the use of the proposed genetic operator and selection scheme, experimental results show a significant improvement in terms of search effectiveness and efficiency.
机译:传统上,机器人的路径规划被建模为优化问题。遗传算法(GA)是最常用的优化策略之一,因为即使在合理的时间内无法获得全局路径,它也始终保证几乎最短的路径。实际上,通过设计不同的遗传算子,遗传算法的性能增强仍然是研究人员的公开课题。除此之外,我们提出了一种在进化过程中选择遗传算子的新标准,以进一步提高搜索效率。在本文中,我们提出了一种采用自适应进化过程的GA广义3D路径规划方法。在传统遗传算法的基础上,我们首先引入了一种新的遗传算子,称为Bind-NN,该算子基于最近邻随机地划分和重组了一个精英染色体。我们还表明,通过选择最后几代中最短路径的适应度方差作为进化过程中选择遗传算子的指导,可以显着提高搜索效率,从而提出遗传算子选择方案。在本文的后半部分,我们通过刺激结构框架上的样本路径规划问题来介绍算法评估。通过使用拟议的遗传算子和选择方案,实验结果显示了搜索效率和效率的显着提高。

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