Simultaneous Localisation and Optimisation for Swarm Robotics

Sebastian Mai, Christoph Steup, Sanaz Mostaghim
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引用次数: 2

Abstract

Collective search mechanisms usually assume that the positions of all particles are known. In robotic applications information on the environment, such as the position of the robots, is not known, but needs to be measured. We present the Simultaneous Localisation and optimisation method that combines a localisation scheme based on the decentralised GPS-free Directed Localisation algorithm with Particle Swarm Optimisation to perform a simulated robotic search. Our experiments show that our algorithm is capable of finding a goal in a fitness landscape, that higher measurement errors lead to more exploration and less exploitation and that there is a minimal particle to particle distance below which the algorithm shows no further convergence. We hope that our algorithm can serve as a blueprint that enables the use of swarm intelligence algorithms in more robotic applications than before.
群体机器人的同步定位和优化
集体搜索机制通常假设所有粒子的位置都是已知的。在机器人应用中,环境信息,如机器人的位置,是未知的,但需要测量。我们提出了同步定位和优化方法,该方法结合了基于分散的无gps定向定位算法和粒子群优化的定位方案来执行模拟机器人搜索。我们的实验表明,我们的算法能够在适应度景观中找到目标,较高的测量误差导致更多的探索和更少的开发,并且存在最小的粒子到粒子距离,低于该距离,算法不会进一步收敛。我们希望我们的算法可以作为一个蓝图,使群体智能算法能够在更多的机器人应用中使用。
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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