A Secure Optimization Algorithm for Quality-of-Service Improvement in Hybrid Wireless Networks
PDF
PDF

How to Cite

Smys, S., and Wang Haoxiang. 2021. “A Secure Optimization Algorithm for Quality-of-Service Improvement in Hybrid Wireless Networks”. IRO Journal on Sustainable Wireless Systems 3 (1): 1-10. https://doi.org/10.36548/jsws.2021.1.001.

Keywords

— Hybrid wireless networks
— Optimization
— Quality of Service
— Network Security
— Overcrowding
Published: 04-03-2021

Abstract

Various industrial, scientific and commercial processes involve wireless mesh networks in the recent days. These technologies improve communication technology to a large extent which has led to an increase in utilization of these systems in various fields. In application with intense and complex data flow, improving the quality of service (QoS) has been a challenge and a focus of research leading to more advanced wireless communication systems. This paper provides a novel optimization algorithm for improving the QoS in hybrid wireless networks while preventing malware and routing attacks. The concept of QoS and hybrid wireless networks are examined at the initial stage. Further, the algorithm for optimizing the service quality in the network is proposed accordingly. The ability of data transfer is benefited by data packets in this algorithm. Load distribution is performed such that overcrowding is prevented and information routing is done efficiently though the nodes. Delay or routing is created and control messages are sent for withholding data when certain nodes are overcrowded. This reduces the delay created by overcrowding by 50% while maintaining the permittivity.

References

  1. Hassan, M. H., & Muniyandi, R. C. (2017). An improved hybrid technique for energy and delay routing in mobile ad-hoc networks. International Journal of Applied Engineering Research, 12(1), 134-139.
  2. Gao, H., Zhang, K., Yang, J., Wu, F., & Liu, H. (2018). Applying improved particle swarm optimization for dynamic service composition focusing on quality of service evaluations under hybrid networks. International Journal of Distributed Sensor Networks, 14(2), 1550147718761583.
  3. Hassan, M. H., Mostafa, S. A., Budiyono, A., Mustapha, A., & Gunasekaran, S. S. (2018). A hybrid algorithm for improving the quality of service in MANET. International Journal on Advanced Science, Engineering and Information Technology, 8(4), 1218-1225.
  4. Gheisari, M., Alzubi, J., Zhang, X., Kose, U., & Saucedo, J. A. M. (2020). A new algorithm for optimization of quality of service in peer to peer wireless mesh networks. Wireless Networks, 26(7), 4965-4973.
  5. Hussein, S. A., & Dahnil, D. P. (2017). A New Hybrid Technique to Improve the Path Selection in Reducing Energy Consumption in Mobile AD-HOC Networks. International Journal of Applied Engineering Research, 12(3), 277-282.
  6. Maddikunta, P. K. R., Gadekallu, T. R., Kaluri, R., Srivastava, G., Parizi, R. M., & Khan, M. S. (2020). Green communication in IoT networks using a hybrid optimization algorithm. Computer Communications, 159, 97-107.
  7. Mostafa, S. A., Tang, A. Y., Hassan, M. H., Jubair, M. A., & Khaleefah, S. H. (2018, August). A multi-agent ad hoc on-demand distance vector for improving the quality of service in MANETs. In 2018 International Symposium on Agent, Multi-Agent Systems and Robotics (ISAMSR) (pp. 1-7). IEEE.
  8. Mehta, R. (2021). Hybrid Fuzzy-Genetic Model for Fitness-Based Performance Optimization in Wireless Networks. International Journal of Computational Intelligence and Applications, 2150008.
  9. Rajguru, A. A., & Apte, S. S. (2018). QoS enhanced distributed load balancing and task scheduling framework for wireless networks using hybrid optimisation algorithm. International Journal of Communication Networks and Distributed Systems, 21(2), 241-265.
  10. Bhalaji, N. (2019). QOS AND DEFENSE ENHANCEMENT USING BLOCK CHAIN FOR FLY WIRELESS NETWORKS. Journal of trends in Computer Science and Smart technology (TCSST), 1(01), 1-13.
  11. Sakya, S. (2020). Design of Hybrid Energy Management System for Wireless Sensor Networks in Remote Areas. Journal of Electrical Engineering and Automation (EEA), 2(01), 13-24.
  12. Bindhu, V. QOS ANALYSIS OF WIRELESS NETWORKS BASED ON LOW MOBILITY PROTOCOL.
  13. Natarajan, M. K. ANALYSIS OF ROUTING PROTOCOLS IN FLYING WIRELESS NETWORKS.
  14. Bhalaji, N. (2020). A Novel Hybrid Routing Algorithm with Two Fish Approach in Wireless Sensor Networks. Journal of trends in Computer Science and Smart technology (TCSST), 2(03), 134-140.
  15. Sathesh, A. (2019). Optimized multi-objective routing for wireless communication with load balancing. Journal of trends in Computer Science and Smart technology (TCSST), 1(02), 106-120.