2020 IEEE 5th International Symposium on Telecommunication Technologies (ISTT) 2020
DOI: 10.1109/istt50966.2020.9279391
|View full text |Cite
|
Sign up to set email alerts
|

Fair and Dynamic Channel Grouping Scheme for IEEE 802.11ah Networks

Help me understand this report

Search citation statements

Order By: Relevance

Paper Sections

Select...
2

Citation Types

0
2
0

Year Published

2022
2022
2024
2024

Publication Types

Select...
1
1
1

Relationship

0
3

Authors

Journals

citations
Cited by 3 publications
(2 citation statements)
references
References 8 publications
0
2
0
Order By: Relevance
“…In [10], the authors used ANNs to find the optimal number of RAW groups given the network size, data rate, and RAW duration. Using ML methods such as Kmeans, the authors implemented traffic classification and grouping schemes that can dynamically adapt to various network conditions (e.g., received signal strength, multiple rates, traffic load, and traffic arrival interval) [11,[30][31][32]. In a recent study [33], the authors employed a recurrent neural network based on gated recurrent units to estimate the optimal number of RAW slots, enhancing the performance in dense IEEE 802.11ah IoT network.…”
Section: Ai-based Methods For Raw Mechanismmentioning
confidence: 99%
“…In [10], the authors used ANNs to find the optimal number of RAW groups given the network size, data rate, and RAW duration. Using ML methods such as Kmeans, the authors implemented traffic classification and grouping schemes that can dynamically adapt to various network conditions (e.g., received signal strength, multiple rates, traffic load, and traffic arrival interval) [11,[30][31][32]. In a recent study [33], the authors employed a recurrent neural network based on gated recurrent units to estimate the optimal number of RAW slots, enhancing the performance in dense IEEE 802.11ah IoT network.…”
Section: Ai-based Methods For Raw Mechanismmentioning
confidence: 99%
“…In [10], authors used ANNs to find the optimal number of RAW groups given the network size, data rate, and RAW duration. Using ML methods such as K-means, the authors implemented traffic classification and grouping schemes that can dynamically adapt to various network conditions (e.g., received signal strength, multiple rates, traffic load, and traffic arrival interval) [11,[30][31][32]. In the recent study [33], the authors employed recurrent neural network based on gated recurrent units to estimate the optimal number of RAW slots, enhancing the performance in dense IEEE 802.11ah IoT network.…”
Section: Ai-based Methods For Raw Mechanismmentioning
confidence: 99%