Abstract
In many sectors like healthcare, military, automotive sector, and
manufacturing, the wireless sensor networks (WSN) have been widely
used. Regardless of its widespread applications, WSN also have some
limitations. Those limitations include processing power, storage
capacity and energy supply (ES). Here, the ES is one of the major
challenges in WSN. To address this issue, the WSN aims to enhance
the energy efficiency (EE). Then, the data aggregation (DA)-based
clustering technique is suggested for resolving those challenges, as it
balances energy consumption (EC) across sensor nodes (SN). This will
facilitate the suggested method in improving EE. For the purpose of
selecting cluster heads (CH) effectively, a robust search algorithm and
faster convergence are crucial. An adaptive metaheuristic (MH)
algorithm (AMHA) based on Tunicate Swarm Optimisation
Algorithm (TSOA) is suggested, and it may support in optimizing deep
foundation design and global optimization. In every iteration, 2 crucial
phases are included in the suggested Adaptive TSOA (ATSOA). Those
steps include a local refinement based on the top-performing tunicate
(TC) and a global search (GS) directed by randomly chosen TC. Thus,
premature convergence is prevented by these changes, and it also
supports in enhancing the exploration capabilities of the model. To
enhance the convergence speed and optimise search accuracy (ACC),
a new hybrid method (CSBHC) was suggested. The Cuckoo Search
(CS) and (BHC) ß-Hill Climbing are integrated in this CSBHC method.
The benefits of the CS algorithm (CSA) with the BHC method are
integrated in the CSBHC method, as similar to probability mechanism
in (SA) Simulated Annealing. On the basis of an exponentially
decreasing probability, it becomes active at every repetition. The search
efficiency is greatly enhanced by the suggested method, and it was
demonstrated by the comparative tests with different node density (ND).
Thus, the routing performance and effective CH selection (CHS) are
improved by the suggested method.
Authors
N.S. Kavitha1, R. Rathiya2, M. Sakthivel3
Dr. N.G.P. Institute of Technology, India1,2, Erode Sengunthar Engineering College, India3
Keywords
Wireless Sensor Networks (WSNs), Tunicate Swarm Optimization (TSA), Adaptive Tunicate Swarm Optimization (ATSA), Cuckoo Search with ß-Hill Climbing (CSBHC)