基于强化学习的指纹无线电定位简化训练

Nicola Novello, A. Tonello
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摘要

本文研究了基于指纹识别的无线电定位问题。虽然指纹识别技术可以在复杂的传播环境中提供精确的定位,但其缺点是指纹图谱的构建过于复杂。该地图将一个区域内的每个位置与接收信号强度(RSS)观测向量联系起来。本文旨在回答这样一个问题:我们能否减少测量次数来构建用于无线电定位的指纹图?为了回答这个问题,我们提出了一种基于环境智能采样的新方法。该方法结合了深度学习(DL)和深度强化学习(DRL)技术。强化学习允许我们在给定路径长度的约束下,在相关区域找到最优路径来执行测量。用测量的rss沿着这条路径训练神经网络可以提供较高的定位精度。在实际数据集上的数值结果表明,该方法降低了获取数据训练指纹图谱的距离,但具有较高的定位精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reinforcement Learning for Simplified Training in Fingerprinting Radio Localization
In this paper, we assess the problem of radio localization based on fingerprinting. Although fingerprinting can provide precise localization in complex propagation environments, its drawback is the complexity of building the fingerprinting map. This map associates each location inside an area to a vector of Received Signal Strength (RSS) observations. This paper aims to answer the question: can we reduce the number of measurements to build a fingerprinting map for radio localization? To answer this question, we propose a new method based on sampling the environment intelligently. The method combines Deep Learning (DL) and Deep Reinforcement Learning (DRL) techniques. Reinforcement learning allows us to find an optimal path to perform measurements in relevant areas under the constraint of a given route length the agent can walk. Training a neural network with the measured RSSs along that path provides high localization accuracy. Numerical results on a real data set show that the approach offers high localization accuracy despite lowering the distance covered to acquire data to train the neural network-based fingerprinting map.
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