Jan. 31, 2024, 3:45 p.m. | Lal Verda Cakir Kubra Duran Craig Thomson Matthew Broadbent Berk Canberk

cs.LG updates on arXiv.org arxiv.org

Digital Twins (DT) have become crucial to achieve sustainable and effective smart urban solutions. However, current DT modelling techniques cannot support the dynamicity of these smart city environments. This is caused by the lack of right-time data capturing in traditional approaches, resulting in inaccurate modelling and high resource and energy consumption challenges. To fill this gap, we explore spatiotemporal graphs and propose the Reinforcement Learning-based Adaptive Twining (RL-AT) mechanism with Deep Q Networks (DQN). By doing so, our study contributes …

become cities city cs.lg current data digital digital twin digital twins energy environments green modelling reinforcement reinforcement learning smart smart city solutions support sustainable time data twins urban

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