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Energy Efficiency in a Base Station of 5G Cellular Networks using M/G/1 Queue with Multiple Sleeps and N-Policy

Deena Merit C.K. (), Haridass M. (), Dharmaraja Selvamuthu () and Priyanka Kalita ()
Additional contact information
Deena Merit C.K.: PSG College of Technology
Haridass M.: PSG College of Technology
Dharmaraja Selvamuthu: Bhattadev University
Priyanka Kalita: Bhattadev University

Methodology and Computing in Applied Probability, 2023, vol. 25, issue 2, 1-28

Abstract: Abstract Reducing energy consumption is the vital goal of green communication. Base station (BS) is a radio receiver/transmitter that serves as the hub of the local wireless network. It is a gateway between a wired network and the wireless network. BS consumes high energy to receive and transfer the signals. Power consumption in base station can be minimized by using effective sleep and wake-up/setup operations with a tolerable delay. In this research work, the service process of the BS is considered as an M/G/1 queue with close down, sleep and setup. The strategy N-Policy is introduced to awake the BS from multiple sleeps (MS) after a predefined number N of user requests (URs) accumulated in the system. The supplementary variable technique is used to obtain the probability-generating functions and the steady-state probabilities for different states of the BS. The mean delay of the UR and mean power consumption of the BS are also derived. Also, the comparative analysis of the proposed model with the existing model has been presented. Computational results show that multiple sleeps with N-policy consumes less power than multiple sleeps without N-policy.

Keywords: Mobile Network; Wireless Network; Energy Consumption; Multiple Sleeps; N- Policy; 60K25; 90B22; 68M20 (search for similar items in EconPapers)
Date: 2023
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Citations: View citations in EconPapers (1)

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DOI: 10.1007/s11009-023-10026-1

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