IEEE Trans Cybern. 2013 Dec;43(6):1963-76. doi: 10.1109/TSMCB.2012.2236647.
This paper is concerned with the problem of filter design for target tracking over sensor networks. Different from most existing works on sensor networks, we consider the heterogeneous sensor networks with two types of sensors different on processing abilities (denoted as type-I and type-II sensors, respectively). However, questions of how to deal with the heterogeneity of sensors and how to design a filter for target tracking over such kind of networks remain largely unexplored.We propose in this paper a novel distributed consensus filter to solve the target tracking problem. Two criteria, namely, unbiasedness and optimality, are imposed for the filter design. The so-called sequential design scheme is then presented to tackle the heterogeneity of sensors. The minimum principle of Pontryagin is adopted for type-I sensors to optimize the estimation errors. As for type-II sensors, the Lagrange multiplier method coupled with the generalized inverse of matrices is then used for filter optimization. Furthermore, it is proven that convergence property is guaranteed for the proposed consensus filter in the presence of process and measurement noise. Simulation results have validated the performance of the proposed filter. It is also demonstrated that the heterogeneous sensor networks with the proposed filter outperform the homogenous counterparts in light of reduction in the network cost, with slight degradation of estimation performance.
这篇论文研究了传感器网络中目标跟踪的滤波器设计问题。与大多数现有的传感器网络研究不同,我们考虑了具有两种处理能力不同的传感器的异构传感器网络(分别表示为 I 型和 II 型传感器)。然而,如何处理传感器的异构性以及如何为这种网络设计目标跟踪滤波器的问题仍然在很大程度上未得到探索。
在本文中,我们提出了一种新的分布式一致性滤波器来解决目标跟踪问题。设计滤波器时施加了两个标准,即无偏性和最优性。然后提出了顺序设计方案来解决传感器的异构性问题。对于 I 型传感器,采用庞特里亚金最小原理来优化估计误差。对于 II 型传感器,然后使用拉格朗日乘子法和矩阵的广义逆来进行滤波器优化。此外,证明了在存在过程和测量噪声的情况下,所提出的共识滤波器保证了收敛性。仿真结果验证了所提出滤波器的性能。还证明了,与同构传感器网络相比,具有所提出滤波器的异构传感器网络在降低网络成本的同时,略微降低了估计性能。