Abstract

Due to the rapidly growing sensor-enabled connected world around us, with the continuously decreasing size of sensors from smaller to tiny, energy efficiency in wireless sensor networks has drawn ample consideration in both academia as well as in industries’ R&D. The literature of energy efficiency in wireless sensor networks (WSNs) is focused on the three layers of wireless communication, namely the physical, Medium Access Control (MAC) and network layers. Physical layer-centric energy efficiency techniques have limited capabilities due to hardware designs and size considerations. Network layer-centric energy efficiency approaches have been constrained, in view of network dynamics and available network infrastructures. However, energy efficiency at the MAC layer requires a traffic cooperative transmission control. In this context, this paper presents a one-dimensional discrete-time Markov chain analytical model of the Timeout Medium Access Control (T-MAC) protocol. Specifically, an analytical model is derived for T-MAC focusing on an analysis of service delay, throughput, energy consumption and power efficiency under unsaturated traffic conditions. The service delay model calculates the average service delay using the adaptive sleep wakeup schedules. The component models include a queuing theory-based throughput analysis model, a cycle probability-based analytical model for computing the probabilities of a successful transmission, collision, and the idle state of a sensor, as well as an energy consumption model for the sensor’s life cycle. A fair performance assessment of the proposed T-MAC analytical model attests to the energy efficiency of the model when compared to that of state-of-the-art techniques, in terms of better power saving, a higher throughput and a lower energy consumption under various traffic loads.

Highlights

  • Wireless sensor networks (WSNs) have numerous real-life applications in various fields, such as precision agriculture [1], patient healthcare [2], target tracking, homeland security, environmental monitoring, surveillance [3], vehicular traffic management [4,5], and electric vehicle charging recommendation [6,7]

  • Many Medium Access Control (MAC) protocols have been designed for wireless sensor networks (WSNs) in order to use the limited energy efficiently by placing the sensor nodes in sleep mode [17]

  • We derive an analytical model for Timeout Medium Access Control (T-MAC), applying a discrete-time Markov chain focussing on throughput, energy consumption, power efficiency and service energy under unsaturated traffic conditions

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Summary

Introduction

Wireless sensor networks (WSNs) have numerous real-life applications in various fields, such as precision agriculture [1], patient healthcare [2], target tracking, homeland security, environmental monitoring, surveillance [3], vehicular traffic management [4,5], and electric vehicle charging recommendation [6,7]. Many MAC protocols have been designed for WSNs in order to use the limited energy efficiently by placing the sensor nodes in sleep mode [17]. To the best of our knowledge, the performance analysis of the T-MAC protocol for energy efficiency, throughput and delay has not yet been done in view of unsaturated traffic conditions or environments. A new discrete-time Markov chain analytical model is developed that appropriately determines the performance of the T-MAC protocol under unsaturated traffic conditions for sensor-enabled wireless network environments. We derive an analytical model for T-MAC, applying a discrete-time Markov chain focussing on throughput, energy consumption, power efficiency and service energy under unsaturated traffic conditions.

MAC Orientated Green Communication
Routing Orientated Green Communication
Analytical
Node Behaviour Model
Cycle Probability Model
Throughput Analysis
Service Delay Analysis
Energy Consumption and Power Efficiency
Experimental Results and Analysis
The average service delay respect the packet arrival
Conclusions
Full Text
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