基于深度迁移学习的室内无线通信无线地图估计

R. Jaiswal, M. Elnourani, Siddharth Deshmukh, B. Beferull-Lozano
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引用次数: 1

摘要

本文研究了室内无线通信中无线地图估计中的迁移学习问题,该问题可用于不同的应用,如信道建模、资源分配、网络规划和减少必要的功率测量次数。由于无线通信的性质,在特定环境下开发的无线电地图模型,由于传播特性的变化,不能直接用于新的环境,因此为每种环境创建新的模型通常需要大量的数据,并且计算量很高。为了解决这些问题,我们设计了一种有效的新颖数据驱动迁移学习过程,该过程将基于深度神经网络(DNN)的无线电地图模型从原始室内无线环境中迁移并微调到其他不同的室内无线环境。我们的方法允许在执行迁移学习操作时使用我们的相似性度量来预测新的室内无线环境中所需的训练数据量。仿真结果表明,该方法可以节省60-70%的传感器测量数据,并且可以在少量附加数据的情况下适应新的无线环境。
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Deep Transfer Learning Based Radio Map Estimation for Indoor Wireless Communications
This paper investigates the problem of transfer learning in radio map estimation for indoor wireless communications, which can be exploited for different applications, such as channel modelling, resource allocation, network planning, and reducing the number of necessary power measurements. Due to the nature of wireless communications, a radio map model developed under a particular environment can not be directly used in a new environment because of the changes in the propagation characteristics, thus creating a new model for every environment requires in general a large amount of data and is computationally demanding. To address these issues, we design an effective novel data-driven transfer learning procedure that transfers and fine-tunes a deep neural network (DNN)-based model for a radio map learned from an original indoor wireless environment to other different indoor wireless environments. Our method allows to predict the amount of training data needed in new indoor wireless environments when performing the operation of transfer learning using our similarity measure. Our simulation results illustrate that the proposed method achieves a saving of 60-70% in sensor measurement data and is able to adapt to a new wireless environment with a small amount of additional data.
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