TY - GEN
T1 - Reinforcement Learning for Channel and Radio Allocations to Wireless Backhaul Links
AU - Liman, Juliana
AU - Yen, Li Hsing
N1 - Publisher Copyright:
© 2022 IEICE.
PY - 2022
Y1 - 2022
N2 - WMN's mesh access points (MAPs) are linked through a wireless backhaul network that consist of mesh points (MPs) that is equipped with multiple radios that use multiple non-overlapping channels in parallel. MPs will establish designated links that should satisfy both common channel constraint and interference constraint which are conflicting in nature. Yen and Dai proposed game-theoretic radio resources allocation in WMN which is better than centralized and greedy approach if only two radios are available at each node, but when there are more than two radios per node, centralized and greedy approach perform better. So, this study would like to utilize reinforcement learning to improve previous research so the approach is also effective if there are more than two radios available per node. This study attempts to maximize the number of operative designated links in the backhaul networks subject to common channel constraint and interference constraint. We use multi-agent deep Q-learning to tackle this problem. We conduct simulations to compare the proposed approach with game based approach. The results of our experiments show that the proposed deep Q-learning algorithm performs better than game-theoretic approach in dense network where there are more than two in each MP, while the game-theoretic approach performs better than our proposed DQL algorithm in sparse network.
AB - WMN's mesh access points (MAPs) are linked through a wireless backhaul network that consist of mesh points (MPs) that is equipped with multiple radios that use multiple non-overlapping channels in parallel. MPs will establish designated links that should satisfy both common channel constraint and interference constraint which are conflicting in nature. Yen and Dai proposed game-theoretic radio resources allocation in WMN which is better than centralized and greedy approach if only two radios are available at each node, but when there are more than two radios per node, centralized and greedy approach perform better. So, this study would like to utilize reinforcement learning to improve previous research so the approach is also effective if there are more than two radios available per node. This study attempts to maximize the number of operative designated links in the backhaul networks subject to common channel constraint and interference constraint. We use multi-agent deep Q-learning to tackle this problem. We conduct simulations to compare the proposed approach with game based approach. The results of our experiments show that the proposed deep Q-learning algorithm performs better than game-theoretic approach in dense network where there are more than two in each MP, while the game-theoretic approach performs better than our proposed DQL algorithm in sparse network.
KW - deep Q-learning
KW - multi agent reinforcement learning
KW - radio resource
KW - reinforcement learning
KW - wireless mesh network
UR - http://www.scopus.com/inward/record.url?scp=85142055034&partnerID=8YFLogxK
U2 - 10.23919/APNOMS56106.2022.9919909
DO - 10.23919/APNOMS56106.2022.9919909
M3 - Conference contribution
AN - SCOPUS:85142055034
T3 - APNOMS 2022 - 23rd Asia-Pacific Network Operations and Management Symposium: Data-Driven Intelligent Management in the Era of beyond 5G
BT - APNOMS 2022 - 23rd Asia-Pacific Network Operations and Management Symposium
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 23rd Asia-Pacific Network Operations and Management Symposium, APNOMS 2022
Y2 - 28 September 2022 through 30 September 2022
ER -