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Architectures and application of data fusion system based on nervous system evolution

机译:基于神经系统演化的数据融合系统建筑与应用

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摘要

An evolution model of data fusion system based on evolution procedure of nervous system is proposed. There are lots of similar characteristics between the evolution of nervous system and the development of data fusion system. It is reasonable to try to find guidelines in the theory of nervous system. For example, the function and structure of data fusion nodes almost take a same role as neurons in nervous system do, so we name the data fusion nodes as data fusion units. Just as the nervous system, the basic evolution architectures of data fusion system include four phases: Chaos (Autonomous), Fully Distributed, Centralized, and Internal Model Based Hierarchical. In the last phase of evolution, interface among unites becomes independent intelligent parts step by step. It provides a more flexible hierarchical data fusion architecture, which makes it be possible to simulate the regulation and adaptation mechanism of nervous system. The application analyses of these mechanisms to the data fusion systems proved that this dynamic hierarchy architecture is capable of deciding not only what to fuse and how to fuse but also when to fuse.
机译:提出了一种基于神经系统演化过程的数据融合系统的演化模型。神经系统的演变与数据融合系统的发展之间存在许多相似的特征。试图在神经系统理论中找到指导方面是合理的。例如,数据融合节点的函数和结构几乎在神经系统中的神经元占神经元的作用,因此我们将数据融合节点命名为数据融合单元。就像神经系统一样,数据融合系统的基本演化架构包括四个阶段:混沌(自主),完全分布式,集中化和基于内部模型的层次结构。在进化的最后一个阶段,单位之间的界面逐步成为独立的智能零件。它提供了更灵活的层次数据融合架构,可以模拟神经系统的调节和适应机制。这些机制对数据融合系统的应用分析证明,这种动态层次结构的架构不仅能够融合和熔断器的熔断器,而且何时融合。

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