Machine Learning to Improve Multi-Hop Searching and Extended Wireless Reachability in V2X
Manuel Eugenio Morocho-Cayamcela, Haeyoung Lee, Wansu Lim
Abstract
Multi-hop relay selection is a critical issue in vehicle-to-everything networks. In previous works, the optimal hopping strategy is assumed to be based on the shortest distance. This study proposes a hopping strategy based on the lowest propagation loss, considering the effect of the environment. We use a two-step machine learning routine: improved deep encoder-decoder architecture to generate environmental maps and Q-learning to search for the multi-hopping path with the lowest propagation loss. Simulation results show that our proposed method can improve environmental recognition and extend the reachability of multi-hop communications by up to 66.7%, compared with a shortest-distance selection.