变长染色体自适应pareto排序的多目标混合进化路径规划

L. Ferariu, Corina Cimpanu
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引用次数: 10

摘要

提出了一种新的多目标进化机器人路径规划方法。这些路径是为具有不相交的非凸障碍物的二维连续工作场景而设计的。新的排名程序确保了决策和搜索之间的自适应渐进衔接,与客观空间的景观有关。通过优势度分析,利用个体的自适应分组和多样性的自适应控制来分配等级。该算法还接受可变长度的染色体,并使用一种新的兼容交叉,从而避免产生比父母更长的后代。采用一种新的纠偏算法对不可行路径进行修复和缩短。这种校正只在一个特定的染色体上起一次作用,其主要作用是引导遗传搜索到搜索空间的可行区域。实验证明了该方法在不同障碍物地图的工作场景下的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiobjective hybrid evolutionary path planning with adaptive pareto ranking of variable-length chromosomes
This paper presents a novel approach to multiobjective evolutionary robot path planning. The paths are designed for bi-dimensional continuous working scenes with disjoint, nonconvex obstacles. A new ranking procedure ensures a self-adapted progressive articulation between decision and search, performed in relation to the landscape of the objective space. The ranks are assigned by means of dominance analysis, while making use of adaptive grouping of individuals and adaptive control of diversity. The algorithm also accepts variable-length chromosomes and uses a new compatible crossover, which avoids the production of offspring longer than their parents. The unfeasible paths are repaired and shortened by means of a new corrective algorithm. This correction works only once on a specific chromosome and its main role is to guide the genetic search towards the feasible regions of the search space. The experiments demonstrate the effectiveness of the suggested techniques on several working scenes with different maps of obstacles.
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