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The Application of an Adaptive Genetic Algorithm Based on Collision Detection in Path Planning of Mobile Robots

机译:自适应遗传算法在移动机器人路径规划中的碰撞检测中的应用

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An adaptive genetic algorithm based on collision detection (AGACD) is proposed to solve the problems of the basic genetic algorithm in the field of path planning, such as low convergence path quality, many iterations required for convergence, and easily falling into the local optimal solution. First, this paper introduces the Delphi weight method to evaluate the weight of path length, path smoothness, and path safety in the fitness function, and a collision detection method is proposed to detect whether the planned path collides with obstacles. Then, the population initialization process is improved to reduce the program running time. After comprehensively considering the population diversity and the number of algorithm iterations, the traditional crossover operator and mutation operator are improved, and the adaptive crossover operator and adaptive mutation operator are proposed to avoid the local optimal solution. Finally, an optimization operator is proposed to improve the quality of convergent individuals through the second optimization of convergent individuals. The simulation results show that the adaptive genetic algorithm based on collision detection is not only suitable for simulation maps with various sizes and obstacle distributions but also has excellent performance, such as greatly reducing the running time of the algorithm program, and the adaptive genetic algorithm based on collision detection can effectively solve the problems of the basic genetic algorithm.
机译:提出了一种基于碰撞检测(AGACD)的自适应遗传算法,以解决路径规划领域的基本遗传算法的问题,例如低收敛路径质量,收敛所需的许多迭代,并且容易落入本地最佳解决方案。首先,本文介绍了Delphi权重方法,以评估适合功能中的路径长度,路径平滑度和路径安全的重量,以及碰撞检测方法检测计划路径是否与障碍物碰撞。然后,改进了人口初始化过程以减少程序运行时间。在全面考虑人口多样性和算法迭代的数量之后,改进了传统的交叉操作员和突变操作员,并提出了自适应交叉操作员和自适应突变算子以避免局部最佳解决方案。最后,提出了一种优化运营商通过第二次优化来改善收敛个体的质量。仿真结果表明,基于碰撞检测的自适应遗传算法不仅适用于具有各种尺寸和障碍物分布的仿真图,还具有出色的性能,例如大大减少算法程序的运行时间,以及基于自适应遗传算法碰撞检测可以有效解决基本遗传算法的问题。

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