首页> 外文OA文献 >Response threshold models, stochastic learning automata and ant colony optimization-based decentralized self-coordination algorithms for heterogeneous multi-tasks distribution in multi-robot systems
【2h】

Response threshold models, stochastic learning automata and ant colony optimization-based decentralized self-coordination algorithms for heterogeneous multi-tasks distribution in multi-robot systems

机译:基于响应阈值模型,随机学习自动机和基于蚁群优化的分散式自协调算法,用于多机器人系统中的异构多任务分配

代理获取
本网站仅为用户提供外文OA文献查询和代理获取服务,本网站没有原文。下单后我们将采用程序或人工为您竭诚获取高质量的原文,但由于OA文献来源多样且变更频繁,仍可能出现获取不到、文献不完整或与标题不符等情况,如果获取不到我们将提供退款服务。请知悉。

摘要

In recent decades, there has been an increasing interest in systems comprised of several autonomous mobile robots, and as a result, there has been a substantial amount of development in the eld of Articial Intelligence, especially in Robotics. There are several studies in the literature by some researchers from the scientic community that focus on the creation of intelligent machines and devices capableudto imitate the functions and movements of living beings. Multi-Robot Systems (MRS) can often deal with tasks that are dicult, if not impossible, to be accomplished by a single robot. In the context of MRS, one of the main challenges is the need to control, coordinate and synchronize the operation of multiple robots to perform a specic task. This requires the development of new strategies and methods which allow us to obtain the desired system behavior in a formal and concise way. This PhD thesis aims to study the coordination of multi-robot systems, in particular, addresses the problem of the distribution of heterogeneous multi-tasks. The main interest in these systems is to understand how from simple rules inspired by the division of labor in social insects, a group of robots can perform tasks in an organized and coordinated way. We are mainly interested on truly distributed or decentralized solutions in which the robots themselves, autonomously and in an individual manner, select a particular task so that all tasks are optimallyuddistributed. In general, to perform the multi-tasks distribution among a team of robots, they have to synchronize their actions and exchange information. Under this approach we can speak of multi-tasks selection instead of multi-tasks assignment, which means, that the agents or robots select the tasks instead of being assigned a task by a central controller. The key element in these algorithms is the estimation ix of the stimuli and the adaptive update of the thresholds. This means that each robot performs this estimate locally depending on the load or the number of pending tasks to be performed. In addition, it is very interesting the evaluation of the results in function in each approach, comparing the results obtained by the introducing noise in the number of pending loads, with the purpose of simulate the robot's error in estimating the real number of pending tasks. The main contribution of this thesis can be found in the approach based on self-organization and division of labor in social insects. An experimental scenario for the coordination problem among multiple robots, the robustness of the approaches and the generation of dynamic tasks have been presented and discussed. The particular issues studied are:ud Threshold models: It presents the experiments conducted to test the response threshold model with the objective to analyze the system performance index, for the problem of the distribution of heterogeneous multitasks in multi-robot systems; also has been introduced additive noise in the number of pending loads and has been generated dynamic tasks over time.ud Learning automata methods: It describes the experiments to test the learning automata-based probabilistic algorithms. The approach was tested to evaluate the system performance index with additive noise and with dynamic tasks generation for the same problem of the distribution of heterogeneousudmulti-tasks in multi-robot systems.ud Ant colony optimization: The goal of the experiments presented is to test the ant colony optimization-based deterministic algorithms, to achieve the distribution of heterogeneous multi-tasks in multi-robot systems. In theudexperiments performed, the system performance index is evaluated by introducing additive noise and dynamic tasks generation over time.
机译:在最近的几十年中,对由多个自主移动机器人组成的系统的兴趣日益增长,结果,人工智能技术领域,尤其是机器人技术领域有了长足的发展。科学界的一些研究人员在文献中进行了几项研究,重点研究了能够模仿生物的功能和运动的智能机器和设备。多机器人系统(MRS)通常可以处理很难甚至不可能由单个机器人完成的任务。在MRS的背景下,主要挑战之一是需要控制,协调和同步多个机器人的操作以执行特定任务。这就要求开发新的策略和方法,使我们能够以正式和简洁的方式获得所需的系统行为。本博士论文旨在研究多机器人系统的协调,特别是解决异构多任务分配问题。这些系统的主要兴趣在于了解如何从受社会昆虫分工启发的简单规则中,一群机器人以有组织和协调的方式执行任务。我们主要对真正的分布式或分散式解决方案感兴趣,在这些解决方案中,机器人本身以自主方式和个性化方式选择特定任务,从而使所有任务都达到最佳/非分布式。通常,要在一组机器人之间执行多任务分配,他们必须同步其动作并交换信息。在这种方法下,我们可以说是多任务选择而不是多任务分配,这意味着代理或机器人选择任务而不是由中央控制器分配任务。这些算法中的关键要素是刺激的估计ix和阈值的自适应更新。这意味着每个机器人都将根据负载或要执行的待处理任务的数量在本地执行此估计。此外,在每种方法中对功能结果进行评估非常有趣,将引入噪声的未完成负载数量进行比较,以模拟机器人在估计实际未完成任务时的错误,从而对结果进行评估。本文的主要贡献可以在基于社会昆虫的自组织和分工的方法中找到。提出并讨论了多机器人之间协调问题的实验场景,方法的鲁棒性和动态任务的生成。 ud阈值模型:提出了用于测试响应阈值模型的实验,目的是分析系统性能指标,以解决多机器人系统中异构多任务的分布问题; ud学习自动机方法:它描述了测试基于学习自动机的概率算法的实验。测试了该方法以评估具有附加噪声和动态任务生成的系统性能指标,以解决多机器人系统中异构 udmulti-task分布的同一问题。 ud蚁群优化:提出的实验目标是测试基于蚁群优化的确定性算法,以实现异构多任务在多机器人系统中的分布。在执行的实验中,通过引入附加噪声和随时间推移生成动态任务来评估系统性能指标。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号