Path Planning of Mobile Robots Based on Improved Genetic Algoritm

Zhang Ke-qi
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Abstract

With the development of intelligent manufacturing, whether from the consideration of capacity, efficiency, or convenience, the requirements for mobile robots are increasing, reasonable regional path planning is one of the most critical needs, and a genetic algorithm is the best way to solve this problem, but in some complex working environments, traditional genetic algorithms will cause some problems, such as the path is not smooth, the steering angle is too large, the number of turns is large, etc. In this paper, an improved genetic algorithm is utilized to optimize the path-planning problem of mobile robots to circumvent the common issues arising from other approaches. The Improved Genetic Algorithm (IGA) has emerged as a significant advancement in the field of optimization techniques. By incorporating adaptive features, this refined approach yields enhanced performance and accuracy when compared to traditional genetic algorithms. Building on the foundational principles of evolutionary computation, the IGA employs innovative strategies, such as adaptive crossover and mutation operators, to navigate complex solution spaces effectively. It can also reduce computation time and increase efficiency by considering various considerations, such as environmental constraints and avoiding obstacle.
基于改进遗传算法的移动机器人路径规划
随着智能制造的发展,无论是从容量、效率还是便利性的考虑,对移动机器人的要求越来越高,合理的区域路径规划是最关键的需求之一,而遗传算法是解决这一问题的最佳途径,但在一些复杂的工作环境中,传统的遗传算法会造成一些问题,如路径不光滑、转向角过大、转弯数大、等。本文采用一种改进的遗传算法对移动机器人的路径规划问题进行优化,以避免其他方法所产生的常见问题。改进遗传算法(IGA)是优化技术领域的一项重大进展。通过结合自适应特征,与传统的遗传算法相比,这种改进的方法可以提高性能和准确性。基于进化计算的基本原理,IGA采用创新策略,如自适应交叉和突变算子,有效地导航复杂的解决方案空间。通过考虑环境约束、避障等因素,减少了计算时间,提高了计算效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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