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Graph Sequence Attention Network-Enabled Reinforcement Learning for Time-Aware Robust Routing in OSU-Based OTN

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Abstract

We propose a time-aware robust routing in OSU-based OTN through the newly designed graph sequence attention network-enabled reinforcement learning. Simulation results show > 28% OSU frame loss reduction compared to the baselines.

© 2022 The Author(s)

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Poster Presentation

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