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首页> 外文期刊>Cybernetics, IEEE Transactions on >Maneuvering Target Tracking With Event-Based Mixture Kalman Filter in Mobile Sensor Networks
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Maneuvering Target Tracking With Event-Based Mixture Kalman Filter in Mobile Sensor Networks

机译:在移动传感器网络中使用基于事件的混合物卡尔曼滤波器进行机动目标跟踪

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摘要

In this paper, the distributed remote state estimation problem for conditional dynamic linear systems in mobile sensor networks with an event-triggered mechanism is investigated. The distributed mixture Kalman filtering method is proposed to track the state of the maneuvering target, which uses particle filtering to estimate the nonlinear variables and apply Kalman filtering to estimate the linear variables. An event-based distributed filtering scheme is designed, which is an energy-efficient way to transmit data between sensors and estimators. In addition, by using the mutual information theory, an optimal control problem is formed to control the position of sensors so that the target tracking process can be achieved quickly. Finally, a simulation example about the maneuvering target tracking is provided to corroborate the effectiveness of the filtering method and the control performance for sensors.
机译:在本文中,研究了具有事件触发机制的移动传感器网络中条件动态线性系统的分布式远程状态估计问题。提出了分布式混合卡尔曼滤波方法以跟踪机动目标的状态,它使用粒子滤波来估计非线性变量并应用卡尔曼滤波来估计线性变量。设计了基于事件的分布式过滤方案,这是一种能够在传感器和估计之间传输数据的节能方法。另外,通过使用互信息理论,形成最佳控制问题以控制传感器的位置,从而可以快速实现目标跟踪过程。最后,提供了关于机动目标跟踪的模拟示例以证实过滤方法的有效性和传感器的控制性能。

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