Open Access
Subscription Access
Open Access
Subscription Access
Enhancing Energy Efficiency in Sensor/Ad-Hoc Networks Through Dynamic Sleep Scheduling
Subscribe/Renew Journal
Enhancing energy efficiency is a pivotal concern in sensor/ad-hoc networks, where devices are often constrained by limited power sources. Dynamic sleep scheduling emerges as a promising strategy to mitigate energy wastage and prolong network longevity. This approach involves orchestrating nodes to periodically transition between active and low-power sleep modes, aligning with data transmission requirements. Dynamic sleep scheduling optimizes energy usage, curbing the power-hungry nature of constant operation. This abstract explores the core concepts and applications of dynamic sleep scheduling, emphasizing its role in addressing the unique energy challenges encountered in sensor/ad-hoc networks. The benefits of dynamic sleep scheduling include extending network lifespan, minimizing interference, and promoting energy balance among nodes. Nevertheless, it also presents challenges like adapting to network dynamics, striking the right balance between energy savings and latency, and ensuring effective coordination among nodes. Various algorithms, including TDMA and LEACH, underpin dynamic sleep scheduling, with ongoing research driving advancements. These networks find application in environmental monitoring, disaster management, and industrial automation, among others.
Keywords
Dynamic Sleep Scheduling, Sensor Networks, Ad-Hoc Networks, Energy Efficiency, Network Longevity.
Subscription
Login to verify subscription
User
Font Size
Information
- Y. Wang and L. Shu, “An Energy-Efficient SDN Based Sleep Scheduling Algorithm for WSNs”, Journal of Network and Computer Applications, Vol. 59, pp. 39-45, 2016.
- G. Lu and A. Goel, “Delay Efficient Sleep Scheduling in Wireless Sensor Networks”, Proceedings of IEEE Annual Joint Conference of the IEEE Computer and Communications Societies, pp. 2470-2481, 2005.
- J. Deng and P.K. Varshney, “Balanced-Energy Sleep Scheduling Scheme for High-Density Cluster-Based Sensor Networks”, Computer communications, Vol. 28, No. 14, pp. 1631-1642, 2005.
- M. Kandasamy and A.S. Kumar, “QoS Design using Mmwave Backhaul Solution for Utilising Underutilised 5G Bandwidth in GHz Transmission”, Proceedings of International Conference on Artificial Intelligence and Smart Energy, pp. 1615-1620, 2023.
- Y.H. Robinson, V. Saravanan and P.E. Darney, “Enhanced Energy Proficient Encoding Algorithm for Reducing Medium Time in Wireless Networks”, Wireless Personal Communications, Vol. 119, pp. 3569-3588, 2021.
- P. Sreelatha and H.P. Sultana, “Design of Deep Learning Model for Radio Resource Allocation in 5G for Massive IoT Device”, Sustainable Energy Technologies and Assessments, Vol. 56, pp. 103054-103063, 2023.
- F. Liu and Y.J. Zhang, “Joint Routing and Sleep Scheduling for Lifetime Maximization of Wireless Sensor Networks”, IEEE Transactions on Wireless Communications, Vol. 9, No. 7, pp. 2258-2267, 2010.
- R. Sabitha, S. Gopikrishnan and V. Anusuya, “Network Based Detection of IoT Attack using AIS-IDS Model”, Wireless Personal Communications, Vol. 128, No. 3, pp. 1543-1566, 2023.
- H. Mostafaei and A. Pescape, “A Sleep Scheduling Approach based on Learning Automata for WSN Partial Coverage”, Journal of Network and Computer Applications, Vol. 80, pp. 67-78, 2017.
- Z. Zhang and M. Mukherjee, “A Short Review on Sleep Scheduling Mechanism in Wireless Sensor Networks”, Proceedings of International Conference on Quality, Reliability, Security and Robustness in Heterogeneous Systems, pp. 66-70, 2018.
- F. Dabaghi and R. Langar, “A Survey on Green Routing Protocols using Sleep-Scheduling in Wired Networks”, Journal of Network and Computer Applications, Vol. 77, pp. 106-122, 2017.
- B. Jiang, B. Ravindran and H. Cho, “Probability-Based Prediction and Sleep Scheduling for Energy-Efficient Target Tracking in Sensor Networks”, IEEE Transactions on Mobile Computing, Vol. 12, No. 4, pp. 735-747, 2012.
- E. Bulut and I. Korpeoglu, “Sleep Scheduling with Expected Common Coverage in Wireless Sensor Networks”, Wireless Networks, Vol. 17, No. 1, pp. 19-40, 2011.
- E.M. Harrison and G.L. Glickman, “Sleep-Scheduling Strategies in Hospital Shift Workers”, Nature and Science of Sleep, Vol. 56, No. 1, pp. 1593-1609, 2021.
- S. Sengupta, S. Das and W. Pedrycz, “An Evolutionary Multi-Objective Sleep-Scheduling Scheme for Differentiated Coverage in Wireless Sensor Networks”, IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews), Vol. 42, No. 6, pp. 1093-1102, 2012.
Abstract Views: 132
PDF Views: 1