Padma priya S.

Work place: PSNA College of Engineering and Technology, Department of computer science and business systems, Dindigul, 624622,Tamilnadu, India.

E-mail: priyaveeracs@psnacet.edu.in

Website: https://orcid.org/0000-0003-0840-642X

Research Interests:

Biography

Padma Priya. S received her Master of Engineering (M.E.) degree in Computer Science and Engineering from Regional Centre of Anna University , Madurai. She is currently serving as an Assistant Professor in the Department of Computer Science and Business Systems in PSNA College of Engineering and Technology, Dindigul, India. She had 8 years of teaching experience in Computer science and Engineering. Her research interests primarily focus on Wireless Sensor Networks, with emphasis on energy-efficient communication protocols, topology control, coverage optimization, and reliable data transmission in resource-constrained environments. She has published research articles in reputed international conferences and proceedings organized by IEEE, Springer, and Taylor & Francis, reflecting her active contribution to the research community. she has contributed book chapters to edited volumes published by leading academic publishers, reflecting her sustained engagement in scholarly research. She is committed to advancing innovative research in sensor-based systems and emerging communication technologies.

Author Articles
An Adaptive Multi-objective approach for energy-aware routing in WSNs using Deep Q Learning and Coral Reef Optimization

By Padma priya S. Pavalarajan S.

DOI: https://doi.org/10.5815/ijwmt.2026.03.22, Pub. Date: 8 Jun. 2026

Wireless Sensor Networks play a vital role in the Internet of Things, smart cities, and industrial automation, yet there are open ended challenges in terms of efficient energy management and reliable data transmission. This paper presents a novel, two-phase routing framework comprising Dynamic Channel Selection and Energy-Efficient Routing Optimization to address these issues. In the first phase, Deep Q-Learning is utilized to identify stable communication channels, thereby enabling congestion-free data transfer across the network. The second phase implements Coral Reef Optimization to derive energy-efficient routing paths, significantly minimizing power consumption. Additionally, Adaptive Modulation and coding dynamically adjusts transmission parameters in real time to improve data throughput and reduce network delays. Existing solutions have been limited by network instability, poor scalability, and inefficient spectrum usage; In contrast, the integrated approach leverages Deep Q-Learning for intelligent channel allocation and Coral Reef Optimization for optimized route selection, while Adaptive Modulation and Coding fine-tunes the communication process to achieve optimal performance. Compared to existing models which shows high packet drop ratio and scalability constraints, our model achieves a 68% reduction in energy consumption, increases network lifetime by 82%, lowers error rate by 77%, enhances routing stability by 85%, and boosts overall throughput by 79%. These results highlight the proposed model’s potential as a highly adaptive, low-latency, and scalable solution for next-generation wireless sensor network applications.

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