Multiple Waypoint Mobile Robot Path Planning Using Neighborhood Search Genetic Algorithms

D. Maddi, A. Sheta, A. Mahdy, H. Turabieh
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引用次数: 1

Abstract

In this paper, we present a Neighborhood Search Genetic Algorithms (NSGAs) for mobile robot path planning. GAs have been used successfully in a variety of path planning problem because they can search the space of all possible paths and provide the optimal one. The convergence process of GAs might be lengthy compared to traditional search techniques that depend on local search methods. We propose a hybrid approach that allows GAs to combine both the advantages of GAs and local search algorithms. GAs will create a multiple waypoint path allowing a mobile robot to navigate through static obstacles and finding the optimal path in order to approach the target location without collision. The proposed NSGAs has been examined over four different path planning case studies with varying complexity. The performance of the enhanced GA has been compared with A-star algorithm (A*) standard GA, particle swarm optimization (PSO) algorithm. The obtained results show that the proposed approach is able to get good results compared to other algorithms.
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基于邻域搜索遗传算法的多路点移动机器人路径规划
提出了一种用于移动机器人路径规划的邻域搜索遗传算法(NSGAs)。由于遗传算法能够搜索所有可能路径的空间并给出最优路径,因此在各种路径规划问题中得到了成功的应用。与依赖局部搜索方法的传统搜索技术相比,遗传算法的收敛过程可能会比较长。我们提出了一种混合方法,允许GAs结合GAs和局部搜索算法的优点。GAs将创建一个多路点路径,允许移动机器人通过静态障碍物导航,并找到最佳路径,以便在不发生碰撞的情况下接近目标位置。拟议的nsga已在四个不同复杂程度的路径规划案例研究中进行了审查。将改进遗传算法的性能与A星算法(A*)、标准遗传算法、粒子群优化算法(PSO)进行了比较。实验结果表明,与其他算法相比,该方法能够获得较好的效果。
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