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A Particle Filter-Based Reinforcement Learning Approach for Reliable Wireless Indoor Positioning

机译:基于粒子滤波器的强化学习方法,可实现可靠的室内无线定位

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摘要

Positioning is envisioned as an essential enabler of future fifth generation (5G) mobile networks due to the massive number of use cases that would benefit from knowing users' positions. In this work, we propose a particle filter-based reinforcement learning (PFRL) approach for the robust wireless indoor positioning system. Our algorithm integrates information of indoor zone prediction, inertial measurement units, wireless radio-based ranging, and floor plan into an particle filter. The zone prediction method is designed with an ensemble learning algorithm by integrating individual discriminative learning methods and Hidden Markov Models. Further, we integrate the particle filter approach with a reinforcement learning-based resampling method to provide robustness against localization failure problems such as the kidnapping robot problem. The PFRL approach is validated on a two-tier architecture, in which distributed machine learning tasks are hosted at client and edge layer. Experiment results show that our system outperforms traditional terminal-based approaches in both stability and accuracy.
机译:由于可以从了解用户位置中受益的大量用例,可以预见到定位将成为未来第五代(5G)移动网络的基本推动者。在这项工作中,我们为健壮的无线室内定位系统提出了一种基于粒子过滤器的强化学习(PFRL)方法。我们的算法将室内区域预测,惯性测量单位,基于无线电的测距和平面图的信息集成到粒子过滤器中。通过整合个体判别学习方法和隐马尔可夫模型,采用集成学习算法设计区域预测方法。此外,我们将粒子过滤器方法与基于增强学习的重采样方法相结合,以提供针对定位失败问题(如绑架机器人问题)的鲁棒性。 PFRL方法在两层体系结构上得到了验证,其中分布式机器学习任务托管在客户端和边缘层。实验结果表明,我们的系统在稳定性和准确性方面均优于传统的基于终端的方法。

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