分布式航迹融合中的联邦卡尔曼一致性滤波

Jiahong Li, Jing Chen, Chen Chen, Fang Deng
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引用次数: 0

摘要

多传感器跟踪融合在网络化信息系统,特别是火控系统中起着重要的作用。针对现代信息系统多样性、网络化和灵活重组的特点,研究了一种自下而上的网络化信息系统架构和航迹融合方法。讨论了有限通信条件下的分布式航迹融合问题,提出了联邦卡尔曼一致滤波算法。与传统的联邦滤波器相比,FKCF算法考虑移动传感器模型,采用卡尔曼共识滤波器设计子滤波器,并设计信息驱动方法改善信息分配。该算法不仅实现了自动重组,提高了生存能力,而且提高了通信能力有限的移动传感器网络的融合跟踪精度。实验结果表明,FKCF算法在通信受限的航迹融合中优于传统的联邦滤波算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Federated Kalman consensus filter in distributed track fusion
Multi-sensor tracking fusion plays a fundamental role in networked information system, especially in the field of fire control systems. According to the diversity, networked and flexible recombined characteristics of the modern information system, a bottom-up architecture of networked information system and the method of track fusion are investigated. Distributed track fusion problem under limited communication is discussed, and federated Kalman consensus filtering(FKCF) algorithm is proposed. Compared to conventional federated filter, FKCF algorithm considers the mobile sensor model, applies Kalman consensus filter to design the sub-filter and designs information-driven method to improve information allocation. The algorithm not only achieves auto recombination and improves survivability, but increases fused tracking accuracy of mobile sensor network with limited communication capability. The experimental results show that FKCF algorithm is better than conventional federated filtering algorithm in track fusion with limited communication.
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