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Autores principales: Chen, Xianfu, Wu, Celimuge, Shen, Yi, Ji, Yusheng, Yoshinaga, Tsutomu, Ni, Qiang, Zarakovitis, Charilaos C., Zhang, Honggang
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2407.06227
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author Chen, Xianfu
Wu, Celimuge
Shen, Yi
Ji, Yusheng
Yoshinaga, Tsutomu
Ni, Qiang
Zarakovitis, Charilaos C.
Zhang, Honggang
author_facet Chen, Xianfu
Wu, Celimuge
Shen, Yi
Ji, Yusheng
Yoshinaga, Tsutomu
Ni, Qiang
Zarakovitis, Charilaos C.
Zhang, Honggang
contents This article investigates a control system within the context of six-generation wireless networks. The control performance optimization confronts the technical challenges that arise from the intricate interactions between communication and control sub-systems, asking for a co-design. Accounting for the system dynamics, we formulate the sequential co-design decision-makings of communication and control over the discrete time horizon as a Markov decision process, for which a practical offline learning framework is proposed. Our proposed framework integrates large language models into the elements of reinforcement learning. We present a case study on the age of semantics-aware communication and control co-design to showcase the potentials from our proposed learning framework. Furthermore, we discuss the open issues remaining to make our proposed offline learning framework feasible for real-world implementations, and highlight the research directions for future explorations.
format Preprint
id arxiv_https___arxiv_org_abs_2407_06227
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Communication and Control Co-Design in 6G: Sequential Decision-Making with LLMs
Chen, Xianfu
Wu, Celimuge
Shen, Yi
Ji, Yusheng
Yoshinaga, Tsutomu
Ni, Qiang
Zarakovitis, Charilaos C.
Zhang, Honggang
Systems and Control
Artificial Intelligence
This article investigates a control system within the context of six-generation wireless networks. The control performance optimization confronts the technical challenges that arise from the intricate interactions between communication and control sub-systems, asking for a co-design. Accounting for the system dynamics, we formulate the sequential co-design decision-makings of communication and control over the discrete time horizon as a Markov decision process, for which a practical offline learning framework is proposed. Our proposed framework integrates large language models into the elements of reinforcement learning. We present a case study on the age of semantics-aware communication and control co-design to showcase the potentials from our proposed learning framework. Furthermore, we discuss the open issues remaining to make our proposed offline learning framework feasible for real-world implementations, and highlight the research directions for future explorations.
title Communication and Control Co-Design in 6G: Sequential Decision-Making with LLMs
topic Systems and Control
Artificial Intelligence
url https://arxiv.org/abs/2407.06227