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Modelling and optimisation of adaptive foraging in swarm robotic systems

机译:群机器人系统中自适应觅食的建模与优化

摘要

Understanding the effect of individual parameters on the collective performance of swarm robotic systems in order to design and optimize individual robot behaviors is a significant challenge. In this paper we present a macroscopic probabilistic model of adaptive collective foraging in a swarm of robots, where each robot in the swarm is capable of adjusting its time threshold parameters following the rules described by Liu et al. 2007. The swarm adapts the ratio of foragers to resters (division of labor) in order to maximize the net swarm energy for a given food density. A probabilistic finite state machine (PFSM) and a number of difference equations are developed to describe collective foraging at a macroscopic level. To model adaptation we introduce the new concepts of the sub-PFSM and private/public time thresholds. The model has been validated extensively with simulation trials, and results show that the model achieves very good accuracy in predicting the group performance of the swarm. Finally, a real-coded genetic algorithm is used to explore the parameter spaces and optimize the parameters of the adaptation algorithm. Although this paper presents a macroscopic probabilistic model for adaptive foraging, we argue that the approach could be applied to any adaptive swarm system in which the heterogeneity of the system is coupled with its time parameters.
机译:为了设计和优化单个机器人的行为,了解各个参数对群体机器人系统总体性能的影响是一项重大挑战。在本文中,我们提出了一个机器人群体中的自适应集体觅食的宏观概率模型,其中,群体中的每个机器人都能够按照Liu等人描述的规则来调整其时间阈值参数。 2007年。该群体调整了觅食者与休息者的比例(劳动分工),以便在给定的食物密度下最大化群体的净能量。概率有限状态机(PFSM)和许多差分方程被开发来描述宏观水平上的集体觅食。为了对适应进行建模,我们引入了子PFSM和私有/公共时间阈值的新概念。该模型已通过仿真试验进行了广泛验证,结果表明该模型在预测群体性能方面具有很高的准确性。最后,使用实编码遗传算法探索参数空间并优化自适应算法的参数。尽管本文提出了一种用于自适应觅食的宏观概率模型,但我们认为该方法可以应用于系统异质性与其时间参数耦合的任何自适应群系统。

著录项

  • 作者

    Liu W.; Winfield A. F.;

  • 作者单位
  • 年度 2010
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  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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