A networked transferable belief model approach for distributed data aggregation.

Andrea Gasparri, Flavio Fiorini, Maurizio Di Rocco, Stefano Panzieri
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引用次数: 17

Abstract

This paper focuses on the extension of the transferable belief model (TBM) to a multiagent-distributed context where no central aggregation unit is available and the information can be exchanged only locally among agents. In this framework, agents are assumed to be independent reliable sources which collect data and collaborate to reach a common knowledge about an event of interest. Two different scenarios are considered: In the first one, agents are supposed to provide observations which do not change over time (static scenario), while in the second one agents are assumed to dynamically gather data over time (dynamic scenario). A protocol for distributed data aggregation, which is proved to converge to the basic belief assignment given by an equivalent centralized aggregation schema based on the TBM, is provided. Since multiagent systems represent an ideal abstraction of actual networks of mobile robots or sensor nodes, which are envisioned to perform the most various kind of tasks, we believe that the proposed protocol paves the way to the application of the TBM in important engineering fields such as multirobot systems or sensor networks, where the distributed collaboration among players is a critical and yet crucial aspect.

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分布式数据聚合的网络可转移信念模型方法。
本文将可转移信念模型(TBM)扩展到多智能体分布环境,在这种环境中,没有中心聚合单元可用,信息只能在智能体之间局部交换。在这个框架中,代理被假定为独立可靠的来源,它们收集数据并协作以达成关于感兴趣事件的共同知识。考虑了两种不同的场景:在第一个场景中,代理应该提供不随时间变化的观察结果(静态场景),而在第二个场景中,假设代理随时间动态收集数据(动态场景)。给出了一种分布式数据聚合协议,该协议收敛于基于TBM的等价集中式聚合模式给出的基本信念分配。由于多智能体系统代表了移动机器人或传感器节点的实际网络的理想抽象,这些网络被设想用于执行各种各样的任务,我们相信所提出的协议为TBM在重要工程领域的应用铺平了道路,例如多机器人系统或传感器网络,其中参与者之间的分布式协作是一个关键的方面。
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