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Multi-UAV target search using decentralized gradient-based negotiation with expected observation

机译:使用具有预期观察力的基于分散梯度的协商进行多无人机目标搜索

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摘要

This paper presents a novel approach for the coordination of a team of autonomous sensor platforms searching for lost targets under uncertainty. A real-time receding horizon controller in continuous action space is developed based on a decentralized gradient-based optimization algorithm and by using the expected observation as an estimate of future rewards. The expected observation is a cost-to-go heuristic that estimates the goodness of the states that the platforms could reach. It permits the decision making algorithm to take into account the information on the whole environment, reducing the time needed to detect the target. The heuristic, modeled as a sensor, allows us to develop a new team utility function with low computational cost and high performance. It can be applied to challenging scenarios such as multi-target search with complex and non-uniform target probability distributions. Through simulation and statistical analysis, we show the advantages of using the expected observation heuristic in multi-vehicle coordination for search applications.
机译:本文提出了一种新颖的方法来协调一组自主传感器平台,以在不确定性下搜索丢失的目标。基于分散的基于梯度的优化算法,并使用预期的观测值作为对未来奖励的估计,开发了连续动作空间中的实时后退水平控制器。预期的观察是一种成本估算法,用于估计平台可能达到的状态的优劣。它允许决策算法考虑整个环境的信息,从而减少了检测目标所需的时间。启发式模型(作为传感器建模)使我们能够以较低的计算成本和高性能开发新的团队效用函数。它可以应用于具有挑战性的场景,例如具有复杂和不均匀目标概率分布的多目标搜索。通过仿真和统计分析,我们展示了在多车位协调中为搜索应用程序使用预期的观察启发式的优势。

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