Otonom mobil robotların Voronoi diyagramı ve karınca kolonisi optimizasyonuna dayalı yol planlaması

A. Tuncer
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Abstract

Path planning aims to enable autonomous robots to navigate safely and efficiently from a starting point to a target point in challenging and dynamic environments. Path planning in robotics is highly significant and still an ongoing subject of research. The increasing use of robots in various applications such as industrial automation, service robotics, and autonomous vehicles has brought forth the need for reliable and efficient path planning algorithms. The inherent capability of Voronoi diagrams to partition space based on proximity makes them an effective framework for research in path planning. Ant colony optimization, a bio-inspired optimization technique, is based on the foraging behavior of ants and is commonly employed to address the traveling salesman problem and various other combinatorial optimization problems. A hybrid method was adopted in this study by combining a Voronoi diagram and an ant colony algorithm. To create paths for the robot where it can stay as far away from obstacles as possible, a Voronoi diagram was utilized. Additionally, to find the shortest path from the starting point to the destination among these paths, ant colony optimization was employed. The main contribution of the study lies in the combination of the Voronoi diagram for obstacle avoidance and ant colony optimization for finding the optimal path. The combination of these techniques makes an effective contribution to robotic path planning by focusing on ensuring safety by avoiding obstacles while optimizing the shortest path. Experimental studies show that the hybrid method produces successful results for the desired purpose.
基于 Voronoi 图和蚁群优化的自主移动机器人路径规划
路径规划旨在使自主机器人能够在充满挑战和动态的环境中安全高效地从起点导航到目标点。机器人学中的路径规划意义重大,目前仍是一个研究课题。随着机器人在工业自动化、服务机器人和自动驾驶汽车等各种应用中的使用日益增多,人们需要可靠而高效的路径规划算法。Voronoi 图具有根据邻近度划分空间的固有能力,这使其成为路径规划研究的有效框架。蚁群优化是一种受生物启发的优化技术,它以蚂蚁的觅食行为为基础,通常用于解决旅行推销员问题和其他各种组合优化问题。本研究采用了一种混合方法,将 Voronoi 图和蚁群算法结合起来。为了给机器人创建尽可能远离障碍物的路径,我们使用了 Voronoi 图。此外,为了在这些路径中找到从起点到终点的最短路径,还采用了蚁群优化算法。这项研究的主要贡献在于将用于避开障碍物的 Voronoi 图和用于寻找最优路径的蚁群优化技术相结合。这两项技术的结合为机器人路径规划做出了有效贡献,在优化最短路径的同时,通过避开障碍物来确保安全。实验研究表明,混合方法能成功实现预期目的。
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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