基于目标运动模型的目标跟踪动态自主智能体布局

T. Hegazy, G. Vachtsevanos
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引用次数: 1

摘要

在有限区域内跟踪多个导航目标是在许多实际应用中出现的常见问题,例如救援行动,监视和侦察。最佳地放置一组代理来跟踪感兴趣的目标是与跟踪问题相关的另一个问题。本文介绍了一种分布式随机方法来解决一个定义良好的智能体放置问题,该问题可以被证明是np困难的。首先,引入随机目标运动模型,使智能体能够预测未来目标的位置。其次,提出了一种基于模型的分布式算法。给定运动模型,智能体预测目标位置的概率,并根据预测计算下一个最佳位置。所提出的方法涉及移动代理之间的协调,以达到接近最优的全局效用。通过一组仿真实验对该方法进行了验证。仿真结果表明,所提出的基于模型的智能体放置方法优于现有方法。
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Dynamic autonomous agent placement for target tracking based on target motion models
Tracking multiple navigating targets in a bounded region is a common problem that arises in many real-life applications, such as rescue operations, surveillance and reconnaissance. Placing a set of agents optimally to track targets, of interest is another problem associated with the tracking problem. This paper introduces a distributed stochastic approach to a well-defined agent placement problem, which can be shown to be NP-hard. First, a stochastic target motion model is introduced to enable agents to predict future target locations. Second, a model-based distributed algorithm is developed. Given the motion model, agents predict target location probabilities and compute their next best locations based on the predictions. The proposed approach involves coordination among mobile agents in order to achieve near-optimal global utilities. The approach has been evaluated through a set of simulation experiments. Simulation results reveal the superiority of the proposed model-based agent placement approach over existing approaches.
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