Path Planning of Mobile Robot Based on an Improved Genetic Algorithm

Zenghua Chen, Gang Xiong, Sheng Liu, Zhen Shen, Yue Li
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Abstract

In order to solve the problem of premature convergence of the basic genetic algorithm when planning the robot running path, the basic genetic algorithm is improved and optimized. Different population initialization methods are used to initialize multiple populations randomly, so as to improve the diversity of populations; Improve the adaptive strategy and elite strategy of crossover and mutation operators to improve the convergence speed of the algorithm; Add the path tortuosity as the planning index in the fitness function to make the planned path smoother, and add constraints to the model to avoid obstacles; Finally, through the transformation of the coding paradigm of the above improved genetic algorithm, it can run on Flink distributed cluster to obtain faster solution speed, so as to meet the efficiency requirements of path planning in large-scale robot cluster system. The optimized algorithm is compared with the basic genetic algorithm. The simulation results show that the improved algorithm is efficient in robot path planning.
基于改进遗传算法的移动机器人路径规划
为了解决基本遗传算法在规划机器人运行路径时过早收敛的问题,对基本遗传算法进行了改进和优化。采用不同的种群初始化方法对多个种群进行随机初始化,提高种群的多样性;改进了交叉和变异算子的自适应策略和精英策略,提高了算法的收敛速度;在适应度函数中加入路径弯曲度作为规划指标,使规划的路径更加平滑,并在模型中加入约束条件以避免障碍物;最后,通过对上述改进遗传算法编码范式的转换,使其能够在Flink分布式集群上运行,获得更快的求解速度,从而满足大规模机器人集群系统中路径规划的效率要求。将优化算法与基本遗传算法进行了比较。仿真结果表明,改进算法在机器人路径规划中是有效的。
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