Review on Fuzzy-ACO Hybrid Routing Framework for Resilient AODV in IoT-Enabled WSN with Link Interference

Main Article Content

Anusai Mathur, Professor Amit Thakur

Abstract

 Researchers and industry professionals are highly interested in Wireless Sensor Networks (WSNs) due to their importance in utilizing low-cost, low-power microelements, such as radios, computers, and sensors, which are often integrated onto a single chip. Recently, the integration of the Internet of Things (IoT) with WSNs has been extensively explored. Effective routing techniques are crucial for optimizing power usage, ensuring Quality of Service (QoS), and maintaining network reliability in IoT-enabled WSNs. This work presents an enhanced energy-aware navigation system that employs the Quantum Firefly Optimization (QFO) method and Neuro-Fuzzy Clustering for IoT-enabled WSNs. The Neuro-Fuzzy Clustering method extends the system's lifetime by automatically grouping sensor nodes into energy-efficient clusters. The QFO method is used to determine the optimal routing paths by considering factors such as energy consumption, QoS, and trust metrics. By incorporating these advanced methodologies, the proposed solution outperforms existing approaches in terms of energy efficiency, routing accuracy, and overall network stability. Simulation results demonstrate that this novel approach has the potential to significantly improve current routing protocols and expand the capabilities of IoT-enabled WSNs. Additionally, to enhance efficiency in mobile computing environments, the security of the intrusion detection system was strengthened through the use of deep learning techniques.

Article Details

How to Cite
Anusai Mathur, Professor Amit Thakur. (2026). Review on Fuzzy-ACO Hybrid Routing Framework for Resilient AODV in IoT-Enabled WSN with Link Interference. International Journal of Advanced Research and Multidisciplinary Trends (IJARMT), 3(1), 1308–1315. Retrieved from https://ijarmt.com/index.php/j/article/view/938
Section
Articles

References

Rahmani, A. M., Haider, A., Ali, S., Mohammadi, M., Mehranzadeh, A., Khoshvaght, P., & Hosseinzadeh, M. (2025). A routing approach based on combination of gray wolf clustering and fuzzy clustering and using multi-criteria decision making approaches for WSN-IoT. Computers and Electrical Engineering, 122, 109946.

Khedr, A. M., Alfawaz, O., PV, P. R., & Osamy, W. (2025). Advancing IoT-driven WSNs with context-aware routing: A comprehensive review. Computer Science Review, 58, 100803.

Sefati, S. S., Maiduc, S. O., Arasteh, B., Larkotey, W. O., Bouyer, A., & Khan, W. U. (2025). Optimizing energy-efficient routing in Mobile internet of things (MIoT) networks using Grey wolf optimization and recurrent neural networks. Ad Hoc Networks, 104047.

Karuppiah, A. B., Nanjappan, V., RajaRaja, R., & Priyan, S. V. (2025). Neuro inspired deep learning based secure and energy efficient routing with autonomous intrusion prevention in wireless sensor networks. Engineering Applications of Artificial Intelligence, 162, 112783.

Nivedita, V., Shieh, C. S., & Horng, M. F. (2025). An integrated trust-based secure routing with intrusion detection for mobile Ad Hoc network using adaptive snow geese optimization algorithm. Ain Shams Engineering Journal, 16(7), 103385.

Chandra, A., & Chakravarthy, A. S. N. (2025). EAURP: An Energy-Efficient and Trust-Aware Unobservable Routing Protocol for Secure Mobile Ad Hoc Networks. Sustainable Computing: Informatics and Systems, 101285.

Poornima, M. R., Vimala, H. S., & Shreyas, J. (2023). Holistic survey on energy aware routing techniques for IoT applications. Journal of Network and Computer Applications, 213, 103584.

Jain, J. K., & Chauhan, D. (2025). Optimized secure and energy-efficient approach for IoT-enabled wireless sensor networks. Pervasive and Mobile Computing, 110, 102049.

Khan, T., Singh, K., Hasan, M. H., Ahmad, K., Reddy, G. T., Mohan, S., & Ahmadian, A. (2021). ETERS: A comprehensive energy aware trust-based efficient routing scheme for adversarial WSNs. Future Generation Computer Systems, 125, 921-943.

Anugraha, M., Ebenezer, S. S., & Maheswari, S. (2025). Hybrid Elk Herd Green Anaconda-Based Multipath Routing and Deep Learning-Based Intrusion Detection In MANET. Pervasive and Mobile Computing, 102079.

Mishra, R. (2024). Raspberry Pi Performance analysis across its Operating System in LED Control Operation. International Journal of Advanced Research and Multidisciplinary Trends (IJARMT), 1(2), 01-11.

Mishra, R. (2025). IOT and DSP (combination of hardcore Virtex-5 FPGA and soft core DSP processor) OFDM System PAPR Reduction Using Artificial Intelligence Algorithm. International Journal of Advanced Research and Multidisciplinary Trends (IJARMT), 2(1), 135-149.

Mishra, R., & Sharma, A. (2026). Enhanced Trajectory Tracking of a 6-DOF Robotic Manipulator Using GA–PID and ANN–PID Controllers. International Journal of Research & Technology, 14(2), 53-70.

Similar Articles

<< < 19 20 21 22 23 24 25 > >> 

You may also start an advanced similarity search for this article.