Digital twins have been emerging as a hybrid approach that combines the benefits of simulators with the realism of experimental testbeds. The accurate and repeatable set-ups replicating the dynamic conditions of physical environments, enable digital twins of wireless networks to be used to evaluate the performance of next-generation networks. In this paper, we propose the Position-based Machine Learning Propagation Loss Model (P-MLPL), enabling the creation of fast and more precise digital twins of wireless networks in ns-3. Based on network traces collected in an experimental testbed, the P-MLPL model estimates the propagation loss suffered by packets exchanged between a transmitter and a receiver, considering the absolute node's positions and the traffic direction. The P-MLPL model is validated with a test suite. The results show that the P-MLPL model can predict the propagation loss with a median error of 2.5 dB, which corresponds to 0.5x the error of existing models in ns-3. Moreover, ns-3 simulations with the P-MLPL model estimated the throughput with an error up to 2.5 Mbit/s, when compared to the real values measured in the testbed.
翻译:数字双胞胎作为一种混合方法,将模拟器的好处与实验试验床的现实主义结合起来。精确和可重复的设置,复制物理环境的动态条件,使无线网络的数字双胞胎能够用来评价下一代网络的性能。在本文中,我们提议采用基于定位的机器学习促进损失模型(P-MLPL),以便能够在 ns-3 中创建无线网络的快速和更加精确的数字双胞胎。根据实验试验床收集的网络痕迹,P-MLPL模型估计了发射机和接收机之间交换的包所蒙受的传播损失,考虑到绝对节点的位置和交通方向。P-MLPLP模型用测试套件验证。结果显示,P-MLP模型可以预测传播损失,中位误2.5 dB,相当于ns-3中现有模型的0.5x错误。此外,与P-MLP模型相比,N-3 模拟估计通过输出的错误最高为2.5 Mbit/s。与测试台中测得的实际值相比,P-MLPL模型可以预测传播损失。