基于遗传算法的射击定位传感器优化配置

Luisa Still, M. Oispuu, W. Koch
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引用次数: 1

摘要

本文提出了一种寻找射手定位任务中最优传感器位置集的方法。这里,最优性是根据cram - rao界给出的最佳可能状态估计精度来定义的。我们推导了一个最优性准则,提出了一个特定应用的遗传算法来解决优化问题,并研究了具有完整和不完整测量数据集和不同数量传感器的不同场景。作为中间步骤,我们假设射击状态是已知的。结果表明,根据现有的测量数据集,推荐的最佳传感器位置往往是意想不到的。对于所有考虑的场景,应用的优化方法可靠地确定了最优位置。
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Optimal Sensor Placement for Shooter Localization Using a Genetic Algorithm
This paper proposes a method to find an optimal set of sensor positions for the shooter localization task. Here, optimality is defined in terms of best possible state estimation accuracy given by the Cramér-Rao bound. We derive an optimality criterion, present an application specific genetic algorithm to solve the optimization problem and investigate different scenarios with complete and incomplete measurement data sets and varying number of sensors. As an intermediate step we assume that the shooter state is exactly known. The results show that depending on the available measurement data set, the recommended optimal sensor positions are often unexpected. For all considered scenarios, the applied optimization approach determines the optimal positions reliably.
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