Open Access
Subscription Access
Open Access
Subscription Access
Differential Evolution Framework to Improve the Network Lifetime of IOT-MANETS
Subscribe/Renew Journal
In the dynamic landscape of Internet of Things Mobile Ad Hoc Networks (IOT-MANETs), optimizing the network lifetime is paramount for sustained and efficient operation. The research begins by recognizing the inherent complexities of IOT-MANETs and the inadequacies of current methodologies. The identified research gap revolves around the lack of a comprehensive framework specifically tailored to optimize network lifetime in these dynamic environments. To bridge this gap, the proposed methodology leverages the powerful optimization capabilities of Differential Evolution—a nature-inspired algorithm that mimics the process of natural selection. This research endeavors to address the pressing challenge of enhancing the longevity of IOT-MANETs by proposing a novel framework based on Differential Evolution (DE). The DE-based framework employs a systematic approach to adaptively optimize network parameters, considering factors such as energy consumption, routing efficiency, and communication reliability. The methodology integrates seamlessly with the inherent characteristics of IOT-MANETs, ensuring adaptability to changing network dynamics. Rigorous simulations and experiments validate the effectiveness of the proposed framework, demonstrating substantial improvements in network lifetime compared to existing methods. The results underscore the significance of the DE-based framework in substantially extending the operational lifespan of IOT-MANETs. This research contributes a valuable tool to the arsenal of solutions for enhancing the sustainability and efficiency of IoT-based mobile ad hoc networks, paving the way for more resilient and long-lasting deployments.
Keywords
Internet of Things, Mobile Adhoc Networks, Network Lifetime Optimization, Differential Evolution, IoT-MANETs.
Subscription
Login to verify subscription
User
Font Size
Information
- H. Yetgin, K.T.K. Cheung, M. El-Hajjar and L.H. Hanzo, “A Survey of Network Lifetime Maximization Techniques in Wireless Sensor Networks”, IEEE Communications Surveys and Tutorials, Vol. 19, No. 2, pp. 828-854, 2017.
- B.A. Alyoubi and I.M. El Emary, “The Zigbee Wireless Sensor Network in Medical Applications: A Critical Analysis Study”, Journal of Current Research in Science, Vol. 4, No. 1, pp. 1-7, 2016.
- Kazem Sohraby, Daniel Minoli and Taieb Znati, “Wireless Sensor Networks: Technology, Protocols, and Applications”, John Wiley and Sons, 2007.
- I. F. Akyildiz, W. Su, Y. Sankarasubramaniam and E. Cayirci, “Wireless sensor networks: A survey”, Computer Networks, Vol. 38, No. 4, pp. 393-422, 2002.
- Wei Wang, Vikram Srinivasan and Kee-Chaing Chua, “Extending the Lifetime of Wireless Sensor Networks Through Mobile Relays”, IEEE/ACM Transactions on Networking, Vol. 16, No. 5, pp. 1108-1120, 2008.
- A. Ghazi and A. Ahiod, “Impact of Random Waypoint Mobility Model on Ant-based Routing Protocol for Wireless Sensor Networks”, Proceedings of International Conference on Big Data and Advanced Wireless Technologies, pp. 1-7, 2016.
- F. Kiani, “Designing New Routing Algorithms Optimized for Wireless Sensor Network”, Academic Publishing, 2014.
- Giuseppe Anastasi, Marco Conti, Mario Di Francesco and Andrea Passarella, “Energy Conservation in Wireless Sensor Networks: a Survey”, Ad Hoc Networks, Vol. 7, No. 3, pp. 537-568, 2009.
- M. McGill and P. Perona, “Deciding How to Decide: Dynamic Routing in Artificial Neural Networks”, Proceedings of International Conference on Machine Learning, Vol. 70, pp. 2363-2372, 2017.
- W.A. Jabbar, M. Ismail, R. Nordin and S. Arif, “Power-Efficient Routing Schemes for MANETs: A Survey”, Wireless Networks, Vol. 23, No. 6, pp. 1917-1952, 2017.
- M.A. Khan and K. Salah, “IoT Security: Review, Blockchain Solutions, and Open Challenges”, Future Gener Computer Systems, Vol. 82, pp.395-411, 2018.
- H. Li and M. Dong, “Learning IoT in Edge: Deep Learning for the Internet of Things with Edge Computing”, IEEE Networks, Vol. 32, No. 1, pp. 96-101, 2018.
Abstract Views: 123
PDF Views: 1