基于似然的异步传感器网络分布式粒子滤波

Ming Li, Wei Yi, L. Kong
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引用次数: 1

摘要

研究了采用分布粒子滤波(DPF)解决异步传感器网络中的数据融合问题。通常,传感器间通信的局部信息类型和局部信息的时间同步是DPF算法的两个主要问题,对融合精度和通信要求有重要影响。针对这些问题,本文提出了一种基于似然的异步批估计(ABE)方案,该方案以局部似然函数作为局部信息,以保证较高的融合精度,融合多个传感器在预定更新周期内的异步似然函数,共同估计目标状态。在此基础上,提出了一种基于似然的ABE DPF (LB-ABE-DPF)算法。此外,为了实现低通信要求,似然函数采用多项式近似和最小二乘近似策略参数化表示。数值结果表明了该算法的有效性。
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A likelihood-based distributed particle filter for asynchronous sensor networks
This paper focuses on addressing the data fusion problems in asynchronous sensor networks using distribute particle filter (DPF). Generally, the type of the local information communicated between sensors and the time synchronization of the local information are two major issues for DPF algorithms, which have significant influence on fusion accuracy and communication requirements. To address these issues, in this paper, a likelihood-based asynchronous batch estimation (ABE) scheme is developed, wherein local likelihood function is regarded as the local information to ensure a high fusion accuracy, and the asynchronous likelihood functions of the multiple sensors during a predefined update period are fused to jointly estimate the target states. Then, to implement this framework distributively using particle filter, a likelihood-based ABE DPF (LB-ABE-DPF) algorithm is proposed. In addition, to achieve low communication requirements, the likelihood function is parametrically represented by polynomial approximation and least square (LS) approximation strategies. Numerical results show the efficiency of the proposed algorithm.
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