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Autores principales: Pi, Yue, Zhang, Wang, Zhang, Yong, Huang, Hairong, Rao, Baoquan, Ding, Yulong, Yang, Shuanghua
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2407.17030
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author Pi, Yue
Zhang, Wang
Zhang, Yong
Huang, Hairong
Rao, Baoquan
Ding, Yulong
Yang, Shuanghua
author_facet Pi, Yue
Zhang, Wang
Zhang, Yong
Huang, Hairong
Rao, Baoquan
Ding, Yulong
Yang, Shuanghua
contents With the advancement of artificial intelligence technology, the automation of network management, also known as Autonomous Driving Networks (ADN), is gaining widespread attention. The network management has shifted from traditional homogeneity and centralization to heterogeneity and decentralization. Multi-agent deep reinforcement learning (MADRL) allows agents to make decisions based on local observations independently. This approach is in line with the needs of automation and has garnered significant attention from academia and industry. In a distributed environment, information interaction between agents can effectively address the non-stationarity problem of multiple agents and promote cooperation. Therefore, in this survey, we first examined the application of MADRL in network management, including specific application fields such as traffic engineering, wireless network access, power control, and network security. Then, we conducted a detailed analysis of communication behavior between agents, including communication schemes, communication content construction, communication object selection, message processing, and communication constraints. Finally, we discussed the open issues and future research directions of agent communication in MADRL for future network management and ADN applications.
format Preprint
id arxiv_https___arxiv_org_abs_2407_17030
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publishDate 2024
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spellingShingle Applications of Multi-Agent Deep Reinforcement Learning Communication in Network Management: A Survey
Pi, Yue
Zhang, Wang
Zhang, Yong
Huang, Hairong
Rao, Baoquan
Ding, Yulong
Yang, Shuanghua
Networking and Internet Architecture
With the advancement of artificial intelligence technology, the automation of network management, also known as Autonomous Driving Networks (ADN), is gaining widespread attention. The network management has shifted from traditional homogeneity and centralization to heterogeneity and decentralization. Multi-agent deep reinforcement learning (MADRL) allows agents to make decisions based on local observations independently. This approach is in line with the needs of automation and has garnered significant attention from academia and industry. In a distributed environment, information interaction between agents can effectively address the non-stationarity problem of multiple agents and promote cooperation. Therefore, in this survey, we first examined the application of MADRL in network management, including specific application fields such as traffic engineering, wireless network access, power control, and network security. Then, we conducted a detailed analysis of communication behavior between agents, including communication schemes, communication content construction, communication object selection, message processing, and communication constraints. Finally, we discussed the open issues and future research directions of agent communication in MADRL for future network management and ADN applications.
title Applications of Multi-Agent Deep Reinforcement Learning Communication in Network Management: A Survey
topic Networking and Internet Architecture
url https://arxiv.org/abs/2407.17030