2019
DOI: 10.1109/access.2018.2888813
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Towards Optimizing WLANs Power Saving: Novel Context-Aware Network Traffic Classification Based on a Machine Learning Approach

Abstract: Energy is a vital resource in wireless computing systems. Despite the increasing popularity of wireless local area networks (WLANs), one of the most important outstanding issues remains the power consumption caused by wireless network interface controller. To save this energy and reduce the overall power consumption of wireless devices, most approaches proposed to-date are focused on static and adaptive power saving modes. Existing literature has highlighted several issues and limitations in regards to their p… Show more

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Cited by 23 publications
(7 citation statements)
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References 48 publications
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“…Smart Adaptive PSM proposed in [15] labels each application with a priority with the assistance of a machine learning classifier, which permits only high priority applications affect the client's behavior to switch to active mode, while low priority traffic is optimized for EE. In [16], Saeed and Kolberg presented a novel context-aware network traffic classification approach based on machine learning classifiers, and the classified output traffic is used to optimize the proposed contextaware LI. Gan and Lin [17] proposed a power conservation scheme to optimally schedule the awake time to minimize the number of active STAs in a beacon slot.…”
Section: A Conventional Psm In Ieee 80211 Wlansmentioning
confidence: 99%
“…Smart Adaptive PSM proposed in [15] labels each application with a priority with the assistance of a machine learning classifier, which permits only high priority applications affect the client's behavior to switch to active mode, while low priority traffic is optimized for EE. In [16], Saeed and Kolberg presented a novel context-aware network traffic classification approach based on machine learning classifiers, and the classified output traffic is used to optimize the proposed contextaware LI. Gan and Lin [17] proposed a power conservation scheme to optimally schedule the awake time to minimize the number of active STAs in a beacon slot.…”
Section: A Conventional Psm In Ieee 80211 Wlansmentioning
confidence: 99%
“…As an extension of the SAPSM approach, the authors in ref. [ 41 ] have proposed a new classification method of network traffic using ML classifiers to optimize WLAN power saving. The approach utilizes the contextual degrees of traffic interaction in the background for ML classifier applications.…”
Section: Energy Efficiency Analyses Of Radio-and-fiber Networkmentioning
confidence: 99%
“…Hybrid beamforming can help balance flexibility and cost trade-offs while still fielding a system that meets the required performance parameters. To achieve hybrid beamforming in future wireless communications systems, the main issue to be considered are the system models of transceivers' structures and the matrices with the possible antenna configuration scenarios [121]. And, a system-level model of hybrid beamforming and modeling algorithms should be explored and assessed over a collection of parameters (e.g., RF, antenna, and signal processing components), steering, and channel combinations.…”
Section: E Hybrid Beamformingmentioning
confidence: 99%