Energy Enhancement in Wireless Sensor Network Using Teaching Learning based Optimization Algorithm

Authors

  • Shital Yadavrao Gaikwad Research Scholar, Dept. of Computer Science and Engineering, Shri Guru Govind Singhji Institute of Engineering & Technology, Nanded, Maharashtra
  • B. R. Bombade Research Supervisor, Dept. of Computer Science and Engineering, Shri Guru Govind Singhji Institute of Engineering & Technology, Nanded, Maharashtra

Keywords:

TLBO, wireless network, pass time, regression, accuracy, speed, IM-AODV network

Abstract

Wireless sensor network requires self-organized and self-managed network such as movable network or temporary network. In this study, network protocol is designed using speed and pass time and developed improved AODV network (IM-AODV network) in Ns-2. wireless sensor network-based energy enhancement using Teaching Learning based optimization algorithm (TLBO) along with Cygwin perform for reduce delay, load and increased energy level of packet delivery fraction. The present study focuses on the energy enhancement of routing network of Pdf, NRL, and Delay.TLBO is an algorithm to adapt the best effort routing in IP networks. Which explores the mechanisms behind the behavior of students, using the shortest way to define a meta-heuristic inspired by teacher for combinatorial optimization. It has been successfully applied to a variety of combinatorial problems. This algorithm was suggested improved AODV (IM-AODV) network is the enhanced the energy network accuracy of 98% of Pdf, normalized load 60.39 %, and 80.12 % of average delay with the optimal parameters of 30 m/s speed and 3s pass time.

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IM-ADOV schematic representation

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Published

27.01.2023

How to Cite

Gaikwad, S. Y. ., & Bombade, B. R. . (2023). Energy Enhancement in Wireless Sensor Network Using Teaching Learning based Optimization Algorithm. International Journal of Intelligent Systems and Applications in Engineering, 11(2s), 52–60. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/2507

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Section

Research Article