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Optimization-Based Dynamic Sensor Management for Distributed Multitarget Tracking

机译:基于优化的分布式多目标跟踪动态传感器管理

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In this paper, the general problem of dynamic assignment of sensors to local fusion centers (LFCs) in a distributed tracking framework is considered. With recent technological advances, a large number of sensors can be deployed for multitarget tracking purposes. However, due to physical limitations such as frequency, power, bandwidth, and fusion center capacity, only a limited number of them can be used by each LFC. The transmission power of future sensors is anticipated to be software controllable within certain lower and upper limits. Thus, the frequency reusability and the sensor reachability can be improved by controlling transmission powers. Then, the problem is to select the sensor subsets that should be used by each LFC and to find their transmission frequencies and powers in order to maximize the tracking accuracies and minimize the total power consumption. The frequency channel limitation and the advantage of variable transmitting power have not been discussed in the literature. In this paper, the optimal formulation for the aforementioned sensor management problem is provided based on the posterior CramÉr–Rao lower bound. Finding the optimal solution to the aforementioned NP-hard multiobjective mixed-integer optimization problem in real time is difficult in large-scale scenarios. An algorithm is presented to find a suboptimal solution in real time by decomposing the original problem into subproblems, which are easier to solve, without using simplistic clustering algorithms that are typically used. Simulation results illustrating the performance of sensor array manager are also presented.
机译:在本文中,考虑了在分布式跟踪框架中将传感器动态分配给本地融合中心(LFC)的一般问题。随着最新技术的进步,可以将大量传感器用于多目标跟踪目的。但是,由于诸如频率,功率,带宽和融合中心容量之类的物理限制,每个LFC只能使用有限数量的它们。未来的传感器的传输功率有望在一定的上下限内通过软件控制。因此,可以通过控制发送功率来提高频率可复用性和传感器可达性。然后,问题是要选择每个LFC应该使用的传感器子集,并找到它们的传输频率和功率,以便最大化跟踪精度并最小化总功耗。文献中尚未讨论频道限制和可变发射功率的优点。在本文中,基于后CramÉr–Rao下界提供了针对上述传感器管理问题的最佳公式。在大规模场景中,很难实时找到上述NP硬多目标混合整数优化问题的最优解。提出了一种算法,该算法通过将原始问题分解为更易于解决的子问题,从而实时找到次优解决方案,而无需使用通常使用的简单聚类算法。仿真结果也说明了传感器阵列管理器的性能。

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