Performance Improvement of AODV in Wireless Networks using Reinforcement Learning Algorithms

Main Article Content

Seema Rani
Saurabh Charaya

Abstract

This paper investigates the application of reinforcement learning (RL) techniques to enhance the performance of the Ad hoc On-Demand Distance Vector (AODV) routing protocol in mobile ad hoc networks (MANETs). MANETs are self-configuring networks consisting of mobile nodes that communicate without the need for a centralized infrastructure. AODV is a widely used routing protocol in MANETs due to its reactive nature, which reduces overhead and conserves energy. This research explores three popular Reinforcement Learning algorithms: SARSA, Q-Learning and Deep Q-Network (DQN) to optimize the AODV protocol's routing decisions. The RL agents are trained to learn the optimal routing paths by interacting with the network environment, considering factors such as link quality, node mobility, and traffic load. The experiments are conducted using network simulators to evaluate the performance improvements achieved by the proposed RL-based enhancements. The results demonstrate significant enhancements in various performance metrics, including reduced end-to-end delay, increased packet delivery ratio, and improved throughput. Furthermore, the RL-based approaches exhibit adaptability to dynamic network conditions, ensuring efficient routing even in highly mobile and unpredictable MANET scenarios. This study offers valuable insights into harnessing RL techniques for improving the efficiency and reliability of routing protocols in mobile ad hoc networks.

Article Details

How to Cite
Rani, S. ., & Charaya, S. . (2023). Performance Improvement of AODV in Wireless Networks using Reinforcement Learning Algorithms. International Journal on Recent and Innovation Trends in Computing and Communication, 11(9s), 734–741. https://doi.org/10.17762/ijritcc.v11i9s.7746
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Articles

References

Li, W., & Zhang, M., “QoS-aware reinforcement learning for MANET routing”, International Journal of Communication Systems, 30(1), e3040, 2017.

Zhang, S., & Guo, S., “Q-learning-based AODV routing algorithm for MANETs”, Journal of Computational Science, 41, 101120, 2020.

Gadde, S. ., & Chakravarthy, A. S. N. . (2023). Novel and Heuristic MolDoc Scoring Procedure for Identification of Staphylococcus Aureus. International Journal of Intelligent Systems and Applications in Engineering, 11(2s), 125 –. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/2516

Li, Z., & Zhao, D., “A novel QoS routing algorithm in MANETs using Q-learning” Journal of Ambient Intelligence and Humanized Computing, 11(5), 2179-2189, 2020.

Meng, L., & Jiang, H, “A SARSA-based routing strategy for MANETs with node mobility” Mobile Networks and Applications, 25(6), 2253-2263, 2020.

Soni, J., & Sharma, D, “A comparative analysis of Q-learning and SARSA for routing optimization in MANETs” International Journal of Computer Applications, 178(19), 22-26, 2020.

Chen, L., & Wang, M, “A DQN-based adaptive routing protocol for MANETs” Journal of Wireless Communications and Mobile Computing, 1-13, 2020.

Aisha Ahmed, Machine Learning in Agriculture: Crop Yield Prediction and Disease Detection , Machine Learning Applications Conference Proceedings, Vol 2 2022.

Zia, M. A., & Butt, A. A, “Reinforcement learning-based AODV for efficient data transmission in MANETs”. International Journal of Communication Systems, 34(3), e4986, 2021.

Lei, H., & Ma, M, “An intelligent routing protocol based on DQN for MANETs” Journal of Supercomputing, 78(1), 1131-1149, 2022.

Diksha Siddhamshittiwar. (2017). An Efficient Power Optimized 32 bit BCD Adder Using Multi-Channel Technique. International Journal of New Practices in Management and Engineering, 6(02), 07 - 12. https://doi.org/10.17762/ijnpme.v6i02.57

Huang, H., & Li, H, “QoS-aware routing in MANETs using DQN-based RL” IEEE Access, 10, 38326-38336, 2022.

Wang, L., & Hu, L, “Q-learning-based AODV routing protocol for MANETs under congestion scenarios” Wireless Communications and Mobile Computing, 1-13, 2022.

Smit, S., Popova, E., Mili?, M., Costa, A., & Martínez, L. Machine Learning-based Predictive Maintenance for Industrial Systems. Kuwait Journal of Machine Learning, 1(3). Retrieved from http://kuwaitjournals.com/index.php/kjml/article/view/139

Yao, W., & Cheng, B, “An adaptive reinforcement learning-based routing algorithm for MANETs with energy constraints” Journal of Parallel and Distributed Computing, 164, 200-210, 2022.

Chaudhary, D. S. ., & Sivakumar, D. S. A. . (2022). Detection Of Postpartum Hemorrhaged Using Fuzzy Deep Learning Architecture . Research Journal of Computer Systems and Engineering, 3(1), 29–34. Retrieved from https://technicaljournals.org/RJCSE/index.php/journal/article/view/38

Yuan, S., & Lu, J, “Cooperative Q-learning for MANET routing” International Journal of Communication Systems, 35(3), e5411, 2022.