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Optimising Robustness of Consensus to Noise on Directed Networks.

机译:优化定向网络上的噪声共识的鲁棒性。

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摘要

A major area of study in recent years has been the development of robotic groups that are capable of carrying out complicated and useful tasks and yet are comprised of relatively simple individuals following relatively simple rules. Despite the evidence from natural groups of animals, birds, fish and insects that such behaviour is possible, many challenges remain in the attempt to translate it into engineered systems. One important aspect of understanding and designing group behaviour is the analysis of the communication structure within a group and its effect on overall group performance.;In this dissertation, we focus on understanding the role played by a directed communication graph in the ability of a group to maintain consensus in noisy environments. To this end, we relate a H2 norm that can be computed from a directed graph to the robustness of the group to noise. Using this relationship, we are able to compute bounds on the group robustness and analyse the capabilities of several families of graphs.;The robustness of consensus to noise on undirected graphs is intimately related to the concept of effective resistance. We present a generalisation of this concept to directed networks and confirm that our new notion of effective resistance is a graphical property that depends on the connections between nodes in the graph. Furthermore, in certain circumstances effective resistance in directed graphs behaves in a similar fashion to effective resistance in undirected graphs, while in other situations it behaves in unexpected ways.;We use effective resistance as a tool to analyse tree graphs, and derive rules by which local changes can be made that will guarantee that the robustness of the entire system will improve. These rules lead to the possibility of decentralised algorithms that allow individuals interacting over a tree graph to rearrange their connections and improve robustness without requiring knowledge of the entire group.;Finally, we use our measure of robustness to analyse a family of interaction strategies within flocks of starlings. This analysis demonstrates that the observed interactions between the starlings optimise the tradeoff between robust performance of the group and individual sensing cost.
机译:近年来,研究的一个主要领域是机器人小组的发展,这些小组能够执行复杂而有用的任务,但仍由遵循相对简单规则的相对简单个体组成。尽管有自然界的动物,鸟类,鱼类和昆虫的证据表明这种行为是可能的,但在将其转化为工程系统的尝试中仍然存在许多挑战。理解和设计小组行为的一个重要方面是分析小组内的沟通结构及其对小组整体绩效的影响。本文主要研究了解有向沟通图在小组能力中的作用。在嘈杂的环境中保持共识。为此,我们将可以根据有向图计算出的H2范数与该组对噪声的鲁棒性相关。使用这种关系,我们能够计算组鲁棒性的界限并分析几个图系列的功能。;无向图上的噪声共识的鲁棒性与有效抵抗性的概念密切相关。我们对该定向网络的概念进行了概括,并确认我们新的有效电阻概念是一种图形属性,它取决于图中节点之间的连接。此外,在某些情况下,有向图的有效抵抗行为与无向图的有效抵抗行为类似,而在其他情况下,它以意想不到的方式表现。;我们使用有效抵抗作为分析树状图的工具,并得出规则可以进行本地更改,以保证整个系统的健壮性。这些规则导致分散算法的可能性,该算法允许个体在树图上进行交互以重新排列连接并提高鲁棒性,而无需了解整个团队。最后,我们使用鲁棒性的度量来分析群体中的一系列交互策略八哥。这项分析表明,观察到的八哥之间的相互作用优化了群体健壮表现和个人感知成本之间的权衡。

著录项

  • 作者

    Young, George Forrest.;

  • 作者单位

    Princeton University.;

  • 授予单位 Princeton University.;
  • 学科 Engineering Mechanical.;Applied Mathematics.;Engineering Robotics.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 266 p.
  • 总页数 266
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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