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Recently, discontinuous reception mechanisms (DRX) and wake-up schemes (WuS) have been proposed to enhance the energy efficiency of 5G mobile devices and prolong the battery lifetime. The existing DRX and WuS use commonly pre-configured parameters that cannot be adjusted dynamically. In this paper, a novel wake-up scheduling (WuSched) concept is introduced to further improve the energy efficiency of WuS-enabled mobile devices while controlling the buffering delay in a dynamic manner. The main idea of WuSched is to use a fixed configuration of the wake-up scheme and adjust the scheduling of the wake-up signals dynamically based on actual traffic arrivals. For this purpose, two different optimization approaches of the wake-up scheduling concept are proposed, analyzed, and compared, namely offline and online wake-up schedulers (WuSched-Offline and WuSched-Online). First, the WuSched-Offline is analyzed analytically for Poisson traffic arrivals and optimized (offline) to balance the average delay and power consumption. Second, the WuSched-Online is proposed to take online decisions based on traffic prediction, which is able to deal with general and more complex traffic models. Towards this end, we develop a framework for the prediction of packet arrivals based on recurrent neural networks. Numerical results show that both wake-up schedulers outperform the ordinary WuS-based system where wake-up scheduler is not deployed. In particular, for predefined delay requirements of video streaming, audio streaming, and mixed traffic flow, the WuSched-Online reduces the power consumption of the baseline WuS by up to 36%, 28% and 9%, respectively. Results also show that the WuSched-Offline has slightly better energy efficiency than the WuSched-Online in the case of Poisson packet arrivals, as it is optimized for that, while its power consumption is slightly higher than that of the WuSched-Online scheduler for realistic traffic scenarios.
Traffic control, wake-up scheme, Discontinuous receptions, 213, On-line schedulers, 5G mobile communication systems, 537, Wake-up scheduling, Audio streaming, scheduling, energy efficiency, Realistic traffics, Wakes, Scheduling, 213 Electronic, automation and communications engineering, electronics, Optimization approach, Mixed traffic flow, 620, Traffic prediction, machine learning, Energy efficiency, Electric power utilization, Mobile telecommunication systems, Recurrent neural networks, Numerical results, LSTM, 5G
Traffic control, wake-up scheme, Discontinuous receptions, 213, On-line schedulers, 5G mobile communication systems, 537, Wake-up scheduling, Audio streaming, scheduling, energy efficiency, Realistic traffics, Wakes, Scheduling, 213 Electronic, automation and communications engineering, electronics, Optimization approach, Mixed traffic flow, 620, Traffic prediction, machine learning, Energy efficiency, Electric power utilization, Mobile telecommunication systems, Recurrent neural networks, Numerical results, LSTM, 5G
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