5G standardization has envisioned mmWave communications as a promising direction to expand the capacity of current mobile radio networks. However, communications at high frequency are characterized by extremely harsh propagation conditions, thus requiring a high base station deployment density. To solve this issue, from both technical and economic perspective, 3GPP has proposed mmWave access networks based on an Integrated Access and Backhaul (IAB) multi-hop architecture.IAB networks require fine-tuning of the available resources in a complex setting, due to directional transmissions, device heterogeneity, and harsh propagation conditions. The latter, in particular, characterize the operations of such networks, resulting in links with very different levels of availability. For this reason, traditional optimization techniques do not provide the best performance in these conditions. We believe, instead, Reinforcement Learning (RL) techniques can implicitly consider the dynamics of the network links and learn the best resource allocation strategy in networks with intermittent links. In this paper, we propose an RL-based resource allocation approach that shows the advantages of these techniques in dynamic environmental conditions.
RL-based Resource Allocation in mmWave 5G IAB Networks
Zhang B.;Devoti F.;Filippini I.
2020-01-01
Abstract
5G standardization has envisioned mmWave communications as a promising direction to expand the capacity of current mobile radio networks. However, communications at high frequency are characterized by extremely harsh propagation conditions, thus requiring a high base station deployment density. To solve this issue, from both technical and economic perspective, 3GPP has proposed mmWave access networks based on an Integrated Access and Backhaul (IAB) multi-hop architecture.IAB networks require fine-tuning of the available resources in a complex setting, due to directional transmissions, device heterogeneity, and harsh propagation conditions. The latter, in particular, characterize the operations of such networks, resulting in links with very different levels of availability. For this reason, traditional optimization techniques do not provide the best performance in these conditions. We believe, instead, Reinforcement Learning (RL) techniques can implicitly consider the dynamics of the network links and learn the best resource allocation strategy in networks with intermittent links. In this paper, we propose an RL-based resource allocation approach that shows the advantages of these techniques in dynamic environmental conditions.File | Dimensione | Formato | |
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