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Optimization of swarm robotic constellation communication for object detection and event recognition.

机译:用于对象检测和事件识别的群体机器人星座通信的优化。

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摘要

Swarm robotics research describes the study of how a group of relatively simple physically embodied agents can, through their interaction collectively accomplish tasks which are far beyond the capabilities of a single agent. This self organizing but decentralized form of intelligence requires that all members are autonomous and act upon their available information. From this information they are able to decide their behavior and take the appropriate action. A global behavior can then be witnessed that is derived from the local behaviors of each agent. The presented research introduces the novel method for optimizing the communication and the processing of communicated data for the purpose of detecting large scale meta object or event, denoted as meta event, which are unquantifiable through a single robotic agent.;The ability of a swarm of robotic agents to cover a relatively large physical environment and their ability to detect changes or anomalies within the environment is especially advantageous for the detection of objects and the recognition of events such as oil spills, hurricanes, and large scale security monitoring. In contrast a single robot, even with much greater capabilities, could not explore or cover multiple areas of the same environment simultaneously. Many previous swarm behaviors have been developed focusing on the rules governing the local agent to agent behaviors of separation, alignment, and cohesion. By effectively optimizing these simple behaviors in coordination, through cooperative and competitive actions based on a chosen local behavior, it is possible to achieve an optimized global emergent behavior of locating a meta object or event. From the local to global relationship an optimized control algorithm was developed following the basic rules of swarm behavior for the purpose of meta event detection and recognition. Results of this optimized control algorithm are presented and compared with other work in the field of swarm robotics.
机译:群机器人研究描述了一组相对简单的物理实现的代理如何通过它们的交互共同完成远远超出单个代理能力的任务的研究。这种自组织但分散的情报形式要求所有成员具有自主权,并根据其可用信息采取行动。他们可以根据这些信息来决定其行为并采取适当的措施。然后可以看到全局行为,该行为是从每个代理的本地行为派生的。提出的研究介绍了一种用于优化通信和通信数据处理以检测大规模元对象或事件(称为元事件)的新颖方法,这些事件或事件只能通过单个机器人代理进行量化。覆盖相对较大物理环境的机器人代理及其检测环境中变化或异常的能力对于检测对象和识别事件(例如溢油,飓风和大规模安全监控)特别有利。相反,即使具有更大的功能,单个机器人也无法同时探索或覆盖同一环境的多个区域。已经开发了许多以前的群体行为,其重点是管理局部代理与代理的分离,对齐和内聚行为的规则。通过基于所选局部行为的合作和竞争行为,通过有效地优化这些简单行为的协调,可以实现定位元对象或事件的优化的全局紧急行为。从局部到全局的关系,根据群体行为的基本规则,开发了一种优化的控制算法,以进行元事件检测和识别。提出了这种优化控制算法的结果,并将其与群体机器人技术领域的其他工作进行了比较。

著录项

  • 作者

    Proffitt, Matthew R.;

  • 作者单位

    Western Carolina University.;

  • 授予单位 Western Carolina University.;
  • 学科 Engineering Computer.;Engineering Robotics.;Engineering Electronics and Electrical.
  • 学位 M.S.
  • 年度 2011
  • 页码 90 p.
  • 总页数 90
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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