Sonia Singh and Neha Gupta
Adv. Artif. Intell. Mach. Learn., 4 (2):2338-2357
Sonia Singh : Manav Rachna International Institute of Research and Studies
Neha Gupta : Manav Rachna International Institute of Research and Studies
DOI: https://dx.doi.org/10.54364/AAIML.2024.42135
Article History: Received on: 27-Mar-24, Accepted on: 22-Jun-24, Published on: 29-Jun-24
Corresponding Author: Sonia Singh
Email: 14sonia.singh@gmail.com
Citation: Sonia Singh and Neha Gupta. (2024). Enhancing Quality of Service in Wireless Sensor Networks Through a Routing Algorithm Based on Self-Organizing Maps. Adv. Artif. Intell. Mach. Learn., 4 (2 ):2338-2357
Many
scholars have focused their attention on wireless sensor networks (WSN) within
the last ten years. QoS control, Energy intake, MAC protocols, routing
protocols, statistics aggregation, self-organizing net algorithms, Internet of
Things, and so forth are among the research topics that have been thoroughly
studied recently. Historically, the potential of artificial intelligence (AI)
has not been fully realized due to constraints in data processing capabilities
and energy efficiency. Nonetheless, the unique characteristics of neural
networks can be harnessed for complex tasks, such as the role of travel
advisors. This research aims to combine Internet of Things (IoT) and Wireless
Sensor Networks (WSN) technologies to enhance Quality of Service (QoS)
parameters including reliability, energy, conservation, system scalability and response
time. It provides an overview of the key components and techniques utilized in
WSNs to achieve QoS. The objective of the proposed article is to compare the
performance of two widely used route paradigms, Energy-Aware Routing and
Directed Diffusion, with the proposed routing technique called Sensor
Intelligence Routing (SIR). The foundation of Sensor Intelligence Routing (SIR)
is the incorporation of neural networks into discrete sensor networks. Wireless
sensor network simulation (OLIMPO) has been used in multiple simulations to
examine how well neural networks perform within the system. The results
obtained from every routing method have been compared and analyzed. The
paper also aims at fostering the use of IoT-based synthetic intelligence
techniques.