An Intelligent Path Loss Prediction Approach Based on Integrated Sensing and Communications for Future Vehicular Networks

Zixiang Wei;Bomin Mao;Hongzhi Guo;Yijie Xun;Jiajia Liu;Nei Kato
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Abstract

The developments of communication technologies, Internet of Things (IoT), and Artificial Intelligence (AI) have significantly accelerated the advancement of Intelligent Transportation Systems (ITS) and Autonomous Driving (AD) in recent years. The exchange of sensed information by widely deployed radars, cameras, and other sensors on vehicles and roadside infrastructure can improve the traffic awareness of drivers and pedestrians. However, wireless data transmission in vehicular networks is challenged by highly dynamic path loss due to utilized frequency bands, weather conditions, traffic overheads, and geographical conditions. In this paper, we propose an Integrated Sensing and Communication System (ISAC) based path loss prediction approach to improve the knowledge of wireless data transmissions in vehicular networks, which utilizes multi-modal data collected by millimeter-wave (mmWave) radars, laser radars, and cameras to forecast the end-to-end path loss distribution. By leveraging a generative adversarial network for parameter initialization coupled with fine-tuning through supervised learning, the model's accuracy can be significantly improved. To increase the model's scalability, the effects of weather conditions, geographical conditions, traffic overheads, and frequency bands are all analyzed. According to the simulation results, our model achieves excellent accuracy with Mean Squared Error (MSE) of the predicted path loss distribution below $3e^{-3}$ across five different scenarios.
基于未来车载网络综合传感与通信的智能路径损耗预测方法
近年来,通信技术、物联网(IoT)和人工智能(AI)的发展大大加速了智能交通系统(ITS)和自动驾驶(AD)的进步。通过广泛部署在车辆和路边基础设施上的雷达、摄像头和其他传感器交换传感信息,可以提高驾驶员和行人的交通意识。然而,由于使用的频段、天气条件、交通开销和地理条件等原因,车辆网络中的无线数据传输面临着高度动态路径损耗的挑战。在本文中,我们提出了一种基于综合传感与通信系统(ISAC)的路径损耗预测方法,利用毫米波(mmWave)雷达、激光雷达和摄像头收集的多模式数据来预测端到端的路径损耗分布,从而提高对车载网络中无线数据传输的了解。利用生成式对抗网络进行参数初始化,并通过监督学习进行微调,可以显著提高模型的准确性。为了提高模型的可扩展性,我们分析了天气条件、地理条件、流量开销和频段的影响。根据仿真结果,我们的模型达到了极高的精度,在五种不同场景下,预测路径损耗分布的平均平方误差(MSE)低于 3e^{-3}$。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
12.60
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