Location-aware networks will introduce new services and applications for modern convenience, surveillance, and public safety. In this paper, we consider the problem of cooperative localization in a wireless network where the position of certain anchor nodes can be controlled. We introduce an active planning method that aims at moving the anchors such that the information gain of future measurements is maximized. In the control layer of the proposed method, control inputs are calculated by minimizing the traces of approximate inverse Bayesian Fisher information matrixes (FIMs). The estimation layer computes estimates of the agent states and provides Gaussian representations of marginal posteriors of agent positions to the control layer for approximate Bayesian FIM computations. Based on a cost function that accumulates Bayesian FIM contributions over a sliding window of discrete future timesteps, a receding horizon (RH) control is performed. Approximations that make it possible to solve the resulting tree-search problem efficiently are also discussed. A numerical case study demonstrates the intelligent behavior of a single controlled anchor in a 3-D scenario and the resulting significantly improved localization accuracy.
翻译:定位网络将引入新的服务和应用,促进现代便利、监视和公共安全。在本文件中,我们考虑了在无线网络中合作定位的问题,可以控制某些锚点节点的位置。我们引入了一种积极的规划方法,旨在移动锚点,从而最大限度地增加未来测量获得的信息。在拟议方法的控制层中,控制投入的计算方法是将贝叶西亚渔业信息矩阵的近似痕量最小化,从而尽可能减少贝叶西亚渔业信息矩阵(FIM)的痕量。估计层计算了代理国家的估计数,并向控制层提供了代理人位置边缘后方的Gaussian表示,以近似Bayesian FIM计算。基于一种成本功能,即将Bayesian FIM贡献积累到一个离散未来时间段的滑动窗口上,进行了递减地平线控制。还讨论了能够有效解决由此引起的树木研究问题的方法。数字案例研究表明3D情景中单一受控锚点的智能行为,并由此大大提高了本地化的准确性。