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Main Authors: Peng, Hongsen, Kallehauge, Tobias, Tao, Meixia, Popovski, Petar
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2502.10777
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author Peng, Hongsen
Kallehauge, Tobias
Tao, Meixia
Popovski, Petar
author_facet Peng, Hongsen
Kallehauge, Tobias
Tao, Meixia
Popovski, Petar
contents This paper considers methods for delivering ultra reliable low latency communication (URLLC) to enable mission-critical Internet of Things (IoT) services in wireless environments with unknown channel distribution. The methods rely upon the historical channel gain samples of a few locations in a target area. We formulate a non-trivial transmission control adaptation problem across the target area under the URLLC constraints. Then we propose two solutions to solve this problem. The first is a power scaling scheme in conjunction with the deep reinforcement learning (DRL) algorithm with the help of the channel knowledge map (CKM) without retraining, where the CKM employs the spatial correlation of the channel characteristics from the historical channel gain samples. The second solution is model agnostic meta-learning (MAML) based metareinforcement learning algorithm that is trained from the known channel gain samples following distinct channel distributions and can quickly adapt to the new environment within a few steps of gradient update. Simulation results indicate that the DRL-based algorithm can effectively meet the reliability requirement of URLLC under various quality-of-service (QoS) constraints. Then the adaptation capabilities of the power scaling scheme and meta-reinforcement learning algorithm are also validated.
format Preprint
id arxiv_https___arxiv_org_abs_2502_10777
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Fast Transmission Control Adaptation for URLLC via Channel Knowledge Map and Meta-Learning
Peng, Hongsen
Kallehauge, Tobias
Tao, Meixia
Popovski, Petar
Information Theory
This paper considers methods for delivering ultra reliable low latency communication (URLLC) to enable mission-critical Internet of Things (IoT) services in wireless environments with unknown channel distribution. The methods rely upon the historical channel gain samples of a few locations in a target area. We formulate a non-trivial transmission control adaptation problem across the target area under the URLLC constraints. Then we propose two solutions to solve this problem. The first is a power scaling scheme in conjunction with the deep reinforcement learning (DRL) algorithm with the help of the channel knowledge map (CKM) without retraining, where the CKM employs the spatial correlation of the channel characteristics from the historical channel gain samples. The second solution is model agnostic meta-learning (MAML) based metareinforcement learning algorithm that is trained from the known channel gain samples following distinct channel distributions and can quickly adapt to the new environment within a few steps of gradient update. Simulation results indicate that the DRL-based algorithm can effectively meet the reliability requirement of URLLC under various quality-of-service (QoS) constraints. Then the adaptation capabilities of the power scaling scheme and meta-reinforcement learning algorithm are also validated.
title Fast Transmission Control Adaptation for URLLC via Channel Knowledge Map and Meta-Learning
topic Information Theory
url https://arxiv.org/abs/2502.10777