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Dynamic Path Determination of Mobile Beacons Employing Reinforcement Learning for Wireless Sensor Localization

机译:使用增强学习的无线信标本地化移动信标的动态路径确定

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Wireless sensor networks (WSN) are extensively applied in civil and military areas. Localization is an essential prerequisite for many WSN applications, and is often based on beacons that provide geographical information in real time. Mobile Beacons (MB) can be used to replace many static beacons with paths that can be controlled in real-time. Robotic and/or flight vehicles can work as MBs. In this paper we consider the use of reinforcement learning (RL) (a significant branch of machine learning) to control MBs. Usually, RL needs an infinite series of episodes to determine an optimal policy. We propose however a method of localization employing mobile beacon whose behavior will be controlled by an adapted RL algorithm. A MB learns and makes decisions based on weighted information collected from unknown sensors. Simulation results show that the adapted RL algorithm provides sufficient information to the MB to localise unknown sensors in a lightweight but effective way.
机译:无线传感器网络(WSN)广泛应用于民用和军事领域。本地化是许多WSN应用程序的必要先决条件,并且通常基于可实时提供地理信息的信标。移动信标(MB)可以用可以实时控制的路径替换许多静态信标。机器人和/或飞行器可以充当MB。在本文中,我们考虑使用强化学习(RL)(机器学习的重要分支)来控制MB。通常,RL需要无数次情节来确定最佳策略。但是,我们提出了一种使用移动信标进行定位的方法,其行为将由适应的RL算法控制。 MB根据从未知传感器收集的加权信息来学习并做出决策。仿真结果表明,改进的RL算法可以为MB提供足够的信息,从而以一种轻巧有效的方式对未知传感器进行定位。

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