5G applications have become increasingly popular in recent years as the spread of fifth-generation (5G) network deployment has grown. For vehicular networks, mmWave band signals have been well studied and used for communication and sensing. In this work, we propose a new dynamic ray tracing algorithm that exploits spatial and temporal coherence. We evaluate the performance by comparing the results on typical vehicular communication scenarios with GEMV^2, which uses a combination of deterministic and stochastic models, and WinProp, which utilizes the deterministic model for simulations with given environment information. We also compare the performance of our algorithm on complex, urban models and observe a reduction in computation time by 36% compared to GEMV^2 and by 30% compared to WinProp, while maintaining similar prediction accuracy.
翻译:随着第五代(5G)网络部署的扩大,近年来5G应用越来越受欢迎。关于车辆网络,对毫米Wave波段信号进行了仔细研究,并用于通信和感测。在这项工作中,我们提出了利用空间和时间一致性的新的动态射线追踪算法。我们通过将典型车辆通信情景的结果与使用确定性和随机模型相结合的GMV2和WinProp(利用确定性模型和随机模型进行模拟的确定性模型和特定环境信息的WinProp(WinProp)比较来评估业绩。我们还比较了我们复杂的城市模型算法的性能,并观察到计算时间比GMV2减少36%,比WinProp减少30%,同时保持类似的预测准确性。