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首页> 外文期刊>Networking, IEEE/ACM Transactions on >Fusion of State Estimates Over Long-Haul Sensor Networks With Random Loss and Delay
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Fusion of State Estimates Over Long-Haul Sensor Networks With Random Loss and Delay

机译:具有随机损耗和延迟的长距离传感器网络上状态估计的融合

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摘要

In long-haul sensor networks, remote sensors are deployed to cover a large geographical area, such as a continent or the entire globe. Related applications can be found in military surveillance, air traffic control, greenhouse gas emission monitoring, and global cyber attack detection, among others. In this paper, we consider target monitoring and tracking using a long-haul sensor network, wherein the state and covariance estimates are sent from the sensors to a fusion center that generates a fused state estimate. Long-haul communications over submarine fibers and satellite links are subject to long latencies and/or high loss rates, which lead to lost or out-of-order messages. These in turn may significantly degrade the fusion performance: Fusing fewer state estimates may compromise the accuracy of the fused state, whereas waiting for all estimates to arrive may compromise its timeliness. We propose an online selective linear fusion method to fuse the state estimates based on projected information contribution from the pending data. Using both prediction and retrodiction techniques, our scheme enables the fusion center to opportunistically make decisions on when to fuse the estimates, thereby achieving a balance between accuracy and timeliness of the fused state. Simulation results of a target tracking application show that our scheme yields accurate and timely fused estimates under variable communications delay and loss conditions.
机译:在长距离传感器网络中,远程传感器被部署为覆盖较大的地理区域,例如大洲或整个地球。相关应用可以在军事监视,空中交通管制,温室气体排放监视和全球网络攻击检测等领域找到。在本文中,我们考虑使用远程传感器网络进行目标监视和跟踪,其中状态和协方差估计从传感器发送到生成融合状态估计的融合中心。通过海底光纤和卫星链路进行的远程通信会出现较长的等待时间和/或较高的丢失率,从而导致消息丢失或混乱。这些反过来可能会严重降低融合性能:融合较少的状态估计值可能会损害融合状态的准确性,而等待所有估计值到达可能会损害其及时性。我们提出了一种在线选择性线性融合方法,用于基于未决数据的预计信息贡献来融合状态估计。通过使用预测和追溯技术,我们的方案使融合中心可以机会地决定何时融合估计,从而在融合状态的准确性和及时性之间取得平衡。目标跟踪应用的仿真结果表明,在可变的通信延迟和丢失条件下,我们的方案可以产生准确,及时的融合估计。

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