计算机科学
无线电传播模型
无线电传播
路径损耗
编码器
解码方法
无线
可扩展性
自编码
编码(内存)
数据建模
电子工程
实时计算
人工智能
算法
深度学习
电信
操作系统
数据库
工程类
作者
Stefanos Bakirtzis,Jiming Chen,Kehai Qiu,Jie Zhang,Ian Wassell
标识
DOI:10.1109/tap.2022.3172221
摘要
Efficient and realistic indoor radio propagation modeling tools are inextricably intertwined with the design and operation of next-generation wireless networks. Machine-learning (ML)-based radio propagation models can be trained with simulated or real-world data to provide accurate estimates of wireless channel characteristics in a computationally efficient way. However, most of the existing research works on the ML-based propagation models focus on outdoor propagation modeling, while indoor data-driven propagation models remain site-specific with limited scalability. In this article, we present an efficient and credible ML-based radio propagation modeling framework for indoor environments. Specifically, we demonstrate how a convolutional encoder–decoder can be trained to replicate the results of a ray tracer, by encoding physics-based information of an indoor environment, such as the permittivity of the walls, and decoding it as the path loss (PL) heatmap for an environment of interest. Our model is trained over multiple indoor geometries and frequency bands, and it can eventually predict the PL for unknown indoor geometries and frequency bands within a few milliseconds. In addition, we illustrate how the concept of transfer learning can be leveraged to calibrate our model by adjusting its preestimate weights, allowing it to make predictions that are consistent with measurement data.
科研通智能强力驱动
Strongly Powered by AbleSci AI