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首页> 外文期刊>IEEE Transactions on Signal Processing >Distributed Auxiliary Particle Filtering With Diffusion Strategy for Target Tracking: A Dynamic Event-Triggered Approach
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Distributed Auxiliary Particle Filtering With Diffusion Strategy for Target Tracking: A Dynamic Event-Triggered Approach

机译:具有目标跟踪的扩散策略分布式辅助颗粒滤波:动态事件触发的方法

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摘要

This paper investigates the particle filtering problem for a class of nonlinear/non-Gaussian systems under the dynamic event-triggered protocol. In order to avert frequent data transmission and reduce the communication overhead, a dynamic event-triggered transmission mechanism is adopted to decide whether the data should be transmitted or not. We first consider a scenario where all sensor nodes selectively transmit their newly obtained measurements to a central node, and a full likelihood function at the central node is derived by fusing the transmitted measurements and the information embodied in the non-triggered measurements. Based on the derived full likelihood function, a centralized auxiliary particle filtering algorithm is proposed to select those particles that are more likely to match the current measurement information. Next, based on the diffusion strategy, a distributed auxiliary particle filtering algorithm is further developed, where the local measurements and the local posteriors (approximated by the Gaussian mixture models) are exchanged among neighboring nodes under the dynamic event-triggered communication strategy. Finally, the effectiveness of the proposed filtering schemes is demonstrated via Monte Carlo simulations in a target tracking problem with received-signal-strength sensors.
机译:本文研究了动态事件触发协议下一类非线性/非高斯系统的粒子过滤问题。为了避免频繁的数据传输并降低通信开销,采用动态事件触发的传输机制来确定是否应该发送数据。我们首先考虑一个场景,其中所有传感器节点选择性地将其新获得的测量结果发送到中心节点,并且通过融合发送的测量和在非触发测量中体现的信息来导出中心节点处的完整似然函数。基于导出的完全似然函数,提出了一种集中式辅助粒子滤波算法以选择更可能匹配当前测量信息的那些粒子。接下来,基于扩散策略,进一步开发了一种分布式辅助粒子滤波算法,其中在动态事件触发的通信策略下,局部测量和局部后海报(通过高斯混合模型近似)在相邻的节点中交换。最后,通过接收信号 - 强度传感器的目标跟踪问题中的蒙特卡罗模拟证明了所提出的过滤方案的有效性。

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