Enhanced Route Discovery Mechanism Using Improved CH Selection Using Q-Learning to Minimize Delay

Author:

Kaur Navpreet1ORCID,Aulakh Inderdeep Kaur1ORCID,Tharewal Sumegh2ORCID,Keshta Ismail3ORCID,Rahmani Abdul Wahab4ORCID,Ta Tri Duc5ORCID

Affiliation:

1. IT Department, UIET, Chandigarh, Punjab, India

2. School of Computer Science, Dr. Vishwanath Karad MIT World Peace University, S. No. 124, Paud Road, Kothrud, Pune 411038, Maharashtra, India

3. Computer Science and Information Systems Department, College of Applied Sciences, AlMaarefa University, Riyadh, Saudi Arabia

4. Isteqlal Institute of Higher Education, Kabul, Afghanistan

5. Faculty of Electronics and Telecommunications, University of Science (HCMUS), Vietnam National University, Ho Chi Minh City 700000, Vietnam

Abstract

With the technological advancements, practical challenges of establishing long-distance communication should be addressed using hop-oriented routing networks. However, long-distance data transmissions usually deteriorate the quality of service (QoS) especially in terms of considerable communication delay. Therefore, in the presented work, a reward-based routing mechanism is proposed that aims at minimizing the overall delay which is evaluated under various scenarios. The routing process involved a refined CH selection mechanism based on a mathematical model until a threshold simulation is not attained. The illustrations for the coverage calculations of CH in the route discovery are also provided for possible routes between the source and the destination to deliver quality service. Based on this information, the data gathered from the past simulations is passed to the learning mechanism using the Q-learning model. The work is evaluated in terms of throughput, PDR, and first dead node in order to achieve minimal transmission delay. Furthermore, area variation is also involved to investigate the effect of an increase in the deployment area and number of nodes on a Q-learning-based mechanism aimed to minimize the delay. The comparative analysis against four existing studies justifies the success of the proposed mechanism in terms of throughput, first dead node, and delay analysis.

Publisher

Hindawi Limited

Subject

Computer Science Applications,Software

Reference34 articles.

1. A performance overview of contemporary hierarchical clustering algorithms in wireless sensor networks

2. Accurate delay analysis in prioritised wireless sensor networks for generalized packet arrival;M. Drieberg;IEEE Wireless Communications Letters,2014

3. Taxonomy of adaptive neuro-fuzzy inference system in modern engineering sciences;S. Chopra,2021

4. Towards understanding cooperative multi-agent q-learning with value factorization;J. Wang;Advances in Neural Information Processing Systems,2021

5. Machine learning across the WSN layers;A. Förster;Emerging Communications for Wireless Sensor Networks,2010

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